Esempio n. 1
0
def get_vibe_results(pred_cam, pred_verts, pred_pose, pred_betas,
                     pred_joints3d, joints2d_lis, bbox_lis, frame_lis,
                     orig_dim, person_id):
    pred_cam = torch.cat(pred_cam, dim=0).cpu().numpy()
    pred_verts = torch.cat(pred_verts, dim=0).cpu().numpy()
    pred_pose = torch.cat(pred_pose, dim=0).cpu().numpy()
    pred_betas = torch.cat(pred_betas, dim=0).cpu().numpy()
    pred_joints3d = torch.cat(pred_joints3d, dim=0).cpu().numpy()

    orig_height, orig_width = orig_dim

    orig_cam = convert_crop_cam_to_orig_img(cam=pred_cam,
                                            bbox=bbox_lis,
                                            img_width=orig_width,
                                            img_height=orig_height)

    output_dict = {
        'pred_cam': pred_cam,
        'orig_cam': orig_cam,
        'verts': pred_verts,
        'pose': pred_pose,
        'betas': pred_betas,
        'joints3d': pred_joints3d,
        'joints2d': joints2d_lis,
        'bboxes': bbox_lis,
        'frame_ids': frame_lis,
    }

    vibe_results = {}
    vibe_results[person_id] = output_dict
    return vibe_results
Esempio n. 2
0
def main(args):
    device = torch.device(
        'cuda') if torch.cuda.is_available() else torch.device('cpu')

    video_file = args.vid_file

    # ========= [Optional] download the youtube video ========= #
    if video_file.startswith('https://www.youtube.com'):
        print(f'Donwloading YouTube video \"{video_file}\"')
        video_file = download_youtube_clip(video_file, '/tmp')

        if video_file is None:
            exit('Youtube url is not valid!')

        print(f'YouTube Video has been downloaded to {video_file}...')

    if not os.path.isfile(video_file):
        exit(f'Input video \"{video_file}\" does not exist!')

    output_path = os.path.join(
        args.output_folder,
        os.path.basename(video_file).replace('.mp4', ''))
    os.makedirs(output_path, exist_ok=True)

    image_folder, num_frames, img_shape = video_to_images(video_file,
                                                          return_info=True)

    print(f'Input video number of frames {num_frames}')
    orig_height, orig_width = img_shape[:2]

    total_time = time.time()

    # ========= Run tracking ========= #
    bbox_scale = 1.1
    if args.tracking_method == 'pose':
        if not os.path.isabs(video_file):
            video_file = os.path.join(os.getcwd(), video_file)
        tracking_results = run_posetracker(video_file,
                                           staf_folder=args.staf_dir,
                                           display=args.display)
    else:
        # run multi object tracker
        mot = MPT(
            device=device,
            batch_size=args.tracker_batch_size,
            display=args.display,
            detector_type=args.detector,
            output_format='dict',
            yolo_img_size=args.yolo_img_size,
        )
        tracking_results = mot(image_folder)

    # remove tracklets if num_frames is less than MIN_NUM_FRAMES
    for person_id in list(tracking_results.keys()):
        if tracking_results[person_id]['frames'].shape[0] < MIN_NUM_FRAMES:
            del tracking_results[person_id]

    # ========= Define VIBE model ========= #
    model = VIBE_Demo(
        seqlen=16,
        n_layers=2,
        hidden_size=1024,
        add_linear=True,
        use_residual=True,
    ).to(device)

    # ========= Load pretrained weights ========= #
    pretrained_file = download_ckpt(use_3dpw=False)
    ckpt = torch.load(pretrained_file)
    print(f'Performance of pretrained model on 3DPW: {ckpt["performance"]}')
    ckpt = ckpt['gen_state_dict']
    model.load_state_dict(ckpt, strict=False)
    model.eval()
    print(f'Loaded pretrained weights from \"{pretrained_file}\"')

    # ========= Run VIBE on each person ========= #
    print(f'Running VIBE on each tracklet...')
    vibe_time = time.time()
    vibe_results = {}
    for person_id in tqdm(list(tracking_results.keys())):
        bboxes = joints2d = None

        if args.tracking_method == 'bbox':
            bboxes = tracking_results[person_id]['bbox']
        elif args.tracking_method == 'pose':
            joints2d = tracking_results[person_id]['joints2d']

        frames = tracking_results[person_id]['frames']

        dataset = Inference(
            image_folder=image_folder,
            frames=frames,
            bboxes=bboxes,
            joints2d=joints2d,
            scale=bbox_scale,
        )

        bboxes = dataset.bboxes
        frames = dataset.frames
        has_keypoints = True if joints2d is not None else False

        dataloader = DataLoader(dataset,
                                batch_size=args.vibe_batch_size,
                                num_workers=16)

        with torch.no_grad():

            pred_cam, pred_verts, pred_pose, pred_betas, pred_joints3d, norm_joints2d = [], [], [], [], [], []

            for batch in dataloader:
                if has_keypoints:
                    batch, nj2d = batch
                    norm_joints2d.append(nj2d.numpy().reshape(-1, 21, 3))

                batch = batch.unsqueeze(0)
                batch = batch.to(device)

                batch_size, seqlen = batch.shape[:2]
                output = model(batch)[-1]

                pred_cam.append(output['theta'][:, :, :3].reshape(
                    batch_size * seqlen, -1))
                pred_verts.append(output['verts'].reshape(
                    batch_size * seqlen, -1, 3))
                pred_pose.append(output['theta'][:, :, 3:75].reshape(
                    batch_size * seqlen, -1))
                pred_betas.append(output['theta'][:, :, 75:].reshape(
                    batch_size * seqlen, -1))
                pred_joints3d.append(output['kp_3d'].reshape(
                    batch_size * seqlen, -1, 3))

            pred_cam = torch.cat(pred_cam, dim=0)
            pred_verts = torch.cat(pred_verts, dim=0)
            pred_pose = torch.cat(pred_pose, dim=0)
            pred_betas = torch.cat(pred_betas, dim=0)
            pred_joints3d = torch.cat(pred_joints3d, dim=0)

            del batch

        # ========= [Optional] run Temporal SMPLify to refine the results ========= #
        if args.run_smplify and args.tracking_method == 'pose':
            norm_joints2d = np.concatenate(norm_joints2d, axis=0)
            norm_joints2d = convert_kps(norm_joints2d, src='staf', dst='spin')
            norm_joints2d = torch.from_numpy(norm_joints2d).float().to(device)

            # Run Temporal SMPLify
            update, new_opt_vertices, new_opt_cam, new_opt_pose, new_opt_betas, \
            new_opt_joints3d, new_opt_joint_loss, opt_joint_loss = smplify_runner(
                pred_rotmat=pred_pose,
                pred_betas=pred_betas,
                pred_cam=pred_cam,
                j2d=norm_joints2d,
                device=device,
                batch_size=norm_joints2d.shape[0],
                pose2aa=False,
            )

            # update the parameters after refinement
            print(
                f'Update ratio after Temporal SMPLify: {update.sum()} / {norm_joints2d.shape[0]}'
            )
            pred_verts = pred_verts.cpu()
            pred_cam = pred_cam.cpu()
            pred_pose = pred_pose.cpu()
            pred_betas = pred_betas.cpu()
            pred_joints3d = pred_joints3d.cpu()
            pred_verts[update] = new_opt_vertices[update]
            pred_cam[update] = new_opt_cam[update]
            pred_pose[update] = new_opt_pose[update]
            pred_betas[update] = new_opt_betas[update]
            pred_joints3d[update] = new_opt_joints3d[update]

        elif args.run_smplify and args.tracking_method == 'bbox':
            print(
                '[WARNING] You need to enable pose tracking to run Temporal SMPLify algorithm!'
            )
            print('[WARNING] Continuing without running Temporal SMPLify!..')

        # ========= Save results to a pickle file ========= #
        pred_cam = pred_cam.cpu().numpy()
        pred_verts = pred_verts.cpu().numpy()
        pred_pose = pred_pose.cpu().numpy()
        pred_betas = pred_betas.cpu().numpy()
        pred_joints3d = pred_joints3d.cpu().numpy()

        # Runs 1 Euro Filter to smooth out the results
        if args.smooth:
            min_cutoff = args.smooth_min_cutoff  # 0.004
            beta = args.smooth_beta  # 1.5
            print(
                f'Running smoothing on person {person_id}, min_cutoff: {min_cutoff}, beta: {beta}'
            )
            pred_verts, pred_pose, pred_joints3d = smooth_pose(
                pred_pose, pred_betas, min_cutoff=min_cutoff, beta=beta)

        orig_cam = convert_crop_cam_to_orig_img(cam=pred_cam,
                                                bbox=bboxes,
                                                img_width=orig_width,
                                                img_height=orig_height)

        output_dict = {
            'pred_cam': pred_cam,
            'orig_cam': orig_cam,
            'verts': pred_verts,
            'pose': pred_pose,
            'betas': pred_betas,
            'joints3d': pred_joints3d,
            'joints2d': joints2d,
            'bboxes': bboxes,
            'frame_ids': frames,
        }

        vibe_results[person_id] = output_dict

    del model

    end = time.time()
    fps = num_frames / (end - vibe_time)

    print(f'VIBE FPS: {fps:.2f}')
    total_time = time.time() - total_time
    print(
        f'Total time spent: {total_time:.2f} seconds (including model loading time).'
    )
    print(
        f'Total FPS (including model loading time): {num_frames / total_time:.2f}.'
    )

    print(
        f'Saving output results to \"{os.path.join(output_path, "vibe_output.pkl")}\".'
    )

    joblib.dump(vibe_results, os.path.join(output_path, "vibe_output.pkl"))

    if not args.no_render:
        # ========= Render results as a single video ========= #
        renderer = Renderer(resolution=(orig_width, orig_height),
                            orig_img=True,
                            wireframe=args.wireframe)

        output_img_folder = f'{image_folder}_output'
        os.makedirs(output_img_folder, exist_ok=True)

        if args.joints3dview:
            output_img_raw_folder = f'{image_folder}_raw_output'
            os.makedirs(output_img_raw_folder, exist_ok=True)

            output_img_joints3d_folder = f'{image_folder}_joints3d_output'
            os.makedirs(output_img_joints3d_folder, exist_ok=True)

            output_img_mesh_folder = f'{image_folder}_mesh_output'
            os.makedirs(output_img_mesh_folder, exist_ok=True)

            output_img_meshside_folder = f'{image_folder}_meshside_output'
            os.makedirs(output_img_meshside_folder, exist_ok=True)

            output_img_all_folder = f'{image_folder}_all_output'
            os.makedirs(output_img_all_folder, exist_ok=True)

        print(f'Rendering output video, writing frames to {output_img_folder}')

        # prepare results for rendering
        frame_results = prepare_rendering_results(vibe_results, num_frames)
        mesh_color = {
            k: colorsys.hsv_to_rgb(np.random.rand(), 0.5, 1.0)
            for k in vibe_results.keys()
        }

        image_file_names = sorted([
            os.path.join(image_folder, x) for x in os.listdir(image_folder)
            if x.endswith('.png') or x.endswith('.jpg')
        ])

        length_image_files = len(image_file_names)
        #length_image_files = 100
        for frame_idx in tqdm(range(length_image_files)):
            img_fname = image_file_names[frame_idx]
            img = cv2.imread(img_fname)

            if args.sideview:
                side_img = np.zeros_like(img)

            if args.joints3dview:
                img_raw = img.copy()
                img_joints3d = np.zeros_like(img)
                joints3d_list = []

            for person_id, person_data in frame_results[frame_idx].items():
                frame_verts = person_data['verts']
                frame_cam = person_data['cam']
                joints3d = person_data['joints3d']
                #print('frame_verts.shape = {}\nframe_cam.shape ={}\njoints3d.shape = {}'.format(
                #   frame_verts.shape, frame_cam.shape, joints3d.shape))
                mc = mesh_color[person_id]

                if args.joints3dview:
                    joints3d_list.append(joints3d)
                #    img_joints3d = render_joints3d(joints3d, img_raw.shape)

                mesh_filename = None

                if args.save_obj:
                    mesh_folder = os.path.join(output_path, 'meshes',
                                               f'{person_id:04d}')
                    os.makedirs(mesh_folder, exist_ok=True)
                    mesh_filename = os.path.join(mesh_folder,
                                                 f'{frame_idx:06d}.obj')

                img = renderer.render(
                    img,
                    frame_verts,
                    cam=frame_cam,
                    color=mc,
                    mesh_filename=mesh_filename,
                )

                if args.sideview:
                    side_img = renderer.render(
                        side_img,
                        frame_verts,
                        cam=frame_cam,
                        color=mc,
                        angle=270,
                        axis=[0, 1, 0],
                    )

            if args.sideview:
                img_mesh = img.copy()
                img = np.concatenate([img, side_img], axis=1)

            cv2.imwrite(
                os.path.join(output_img_folder, f'{frame_idx:06d}.png'), img)

            if args.joints3dview:
                #img_joints3d = np.zeros_like(img_raw)
                if len(joints3d_list) == 0:
                    img_joints3d = np.zeros_like(img_raw)
                else:
                    joints3d = np.concatenate(joints3d_list)
                    img_joints3d = render_joints3d(joints3d, img_raw.shape)

            if args.joints3dview:
                img_up = np.concatenate([img_raw, img_joints3d], axis=1)
                img_down = np.concatenate([img_mesh, side_img], axis=1)
                img_all = np.concatenate([img_up, img_down], axis=0)

                cv2.imwrite(
                    os.path.join(output_img_raw_folder,
                                 f'{frame_idx:06d}.png'), img_raw)
                cv2.imwrite(
                    os.path.join(output_img_joints3d_folder,
                                 f'{frame_idx:06d}.png'), img_joints3d)
                cv2.imwrite(
                    os.path.join(output_img_mesh_folder,
                                 f'{frame_idx:06d}.png'), img_mesh)
                cv2.imwrite(
                    os.path.join(output_img_meshside_folder,
                                 f'{frame_idx:06d}.png'), side_img)
                cv2.imwrite(
                    os.path.join(output_img_all_folder,
                                 f'{frame_idx:06d}.png'), img_all)

            if args.display:
                cv2.imshow('Video', img)
                if cv2.waitKey(1) & 0xFF == ord('q'):
                    break

        if args.display:
            cv2.destroyAllWindows()

        # ========= Save rendered video ========= #
        vid_name = os.path.basename(video_file)
        save_name = f'{vid_name.replace(".mp4", "")}_vibe_result.mp4'
        save_name = os.path.join(output_path, save_name)
        print(f'Saving result video to {save_name}')
        images_to_video(img_folder=output_img_folder,
                        output_vid_file=save_name)
        shutil.rmtree(output_img_folder)

        if args.joints3dview:
            '''
            save_name_raw = f'{vid_name.replace(".mp4", "")}_raw.mp4'
            save_name_raw = os.path.join(output_path, save_name_raw)
            images_to_video(img_folder=output_img_raw_folder, output_vid_file=save_name_raw)
            shutil.rmtree(output_img_raw_folder)

            save_name_joints3d = f'{vid_name.replace(".mp4", "")}_joints3d.mp4'
            save_name_joints3d = os.path.join(output_path, save_name_joints3d)
            images_to_video(img_folder=output_img_joints3d_folder, output_vid_file=save_name_joints3d)
            shutil.rmtree(output_img_joints3d_folder)

            save_name_mesh = f'{vid_name.replace(".mp4", "")}_mesh.mp4'
            save_name_mesh = os.path.join(output_path, save_name_mesh)
            images_to_video(img_folder=output_img_mesh_folder, output_vid_file=save_name_mesh)
            shutil.rmtree(output_img_mesh_folder)

            save_name_meshside = f'{vid_name.replace(".mp4", "")}_meshside.mp4'
            save_name_meshside = os.path.join(output_path, save_name_meshside)
            images_to_video(img_folder=output_img_meshside_folder, output_vid_file=save_name_meshside)
            shutil.rmtree(output_img_meshside_folder)
            '''
            save_name_all = f'{vid_name.replace(".mp4", "")}_all.mp4'
            save_name_all = os.path.join(output_path, save_name_all)
            images_to_video(img_folder=output_img_all_folder,
                            output_vid_file=save_name_all)
            shutil.rmtree(output_img_all_folder)

    shutil.rmtree(image_folder)
    print('================= END =================')
Esempio n. 3
0
def run_vibe(video_file, args):
    device = torch.device(
        'cuda') if torch.cuda.is_available() else torch.device('cpu')

    # Make output dirs
    output_path = os.path.join(
        args.output_folder, os.path.basename(video_file).replace('.mp4', ''))
    os.makedirs(output_path, exist_ok=True)

    # Convert video to images
    image_folder, num_frames, img_shape = video_to_images(
        video_file, return_info=True)

    print(f'Input video number of frames {num_frames}')
    orig_height, orig_width = img_shape[:2]

    total_time = time.time()

    # ========= Run tracking ========= #
    if not os.path.isabs(video_file):
        video_file = os.path.join(os.getcwd(), video_file)

    tracking_results = run_posetracker(
        video_file, staf_folder=args.staf_dir, display=args.display, smoothen=args.smoothen, smoothen_method=args.smoothen_method)

    # remove tracklets if num_frames is less than MIN_NUM_FRAMES
    for person_id in list(tracking_results.keys()):
        if tracking_results[person_id]['frames'].shape[0] < MIN_NUM_FRAMES:
            del tracking_results[person_id]

    # ========= Define VIBE model ========= #
    model = VIBE_Demo(
        seqlen=16,
        n_layers=2,
        hidden_size=1024,
        add_linear=True,
        use_residual=True,
    ).to(device)

    # ========= Load pretrained weights ========= #
    pretrained_file = download_ckpt(use_3dpw=False)
    ckpt = torch.load(pretrained_file)
    print(f'Performance of pretrained model on 3DPW: {ckpt["performance"]}')
    ckpt = ckpt['gen_state_dict']
    model.load_state_dict(ckpt, strict=False)
    model.eval()
    print(f'Loaded pretrained weights from \"{pretrained_file}\"')

    # ========= Run VIBE on each person ========= #
    print(f'Running VIBE on each tracklet...')
    vibe_time = time.time()
    vibe_results = {}
    for person_id in tqdm(list(tracking_results.keys())):

        joints2d = tracking_results[person_id]['joints2d']
        frames = tracking_results[person_id]['frames']

        dataset = Inference(
            image_folder=image_folder,
            frames=frames,
            bboxes=None,
            joints2d=joints2d
        )

        bboxes = dataset.bboxes
        frames = dataset.frames
        has_keypoints = True if joints2d is not None else False

        dataloader = DataLoader(
            dataset, batch_size=args.vibe_batch_size, num_workers=16)

        with torch.no_grad():

            pred_cam, pred_verts, pred_pose, pred_betas, pred_joints3d, norm_joints2d = [
            ], [], [], [], [], []

            for batch in dataloader:
                if has_keypoints:
                    batch, nj2d = batch
                    norm_joints2d.append(nj2d.numpy().reshape(-1, 21, 3))

                batch = batch.unsqueeze(0)
                batch = batch.to(device)

                batch_size, seqlen = batch.shape[:2]
                output = model(batch)[-1]

                pred_cam.append(output['theta'][:, :, :3].reshape(
                    batch_size * seqlen, -1))
                pred_verts.append(output['verts'].reshape(
                    batch_size * seqlen, -1, 3))
                pred_pose.append(output['theta'][:, :, 3:75].reshape(
                    batch_size * seqlen, -1))
                pred_betas.append(output['theta'][:, :, 75:].reshape(
                    batch_size * seqlen, -1))
                pred_joints3d.append(output['kp_3d'].reshape(
                    batch_size * seqlen, -1, 3))

            pred_cam = torch.cat(pred_cam, dim=0)
            pred_verts = torch.cat(pred_verts, dim=0)
            pred_pose = torch.cat(pred_pose, dim=0)
            pred_betas = torch.cat(pred_betas, dim=0)
            pred_joints3d = torch.cat(pred_joints3d, dim=0)

            del batch

        # ========= [Optional] run Temporal SMPLify to refine the results ========= #
        norm_joints2d = np.concatenate(norm_joints2d, axis=0)
        norm_joints2d = convert_kps(norm_joints2d, src='staf', dst='spin')
        norm_joints2d = torch.from_numpy(norm_joints2d).float().to(device)

        # Run Temporal SMPLify
        update, new_opt_vertices, new_opt_cam, new_opt_pose, new_opt_betas, \
            new_opt_joints3d, new_opt_joint_loss, opt_joint_loss = smplify_runner(
                pred_rotmat=pred_pose,
                pred_betas=pred_betas,
                pred_cam=pred_cam,
                j2d=norm_joints2d,
                device=device,
                batch_size=norm_joints2d.shape[0],
                pose2aa=False,
            )

        # update the parameters after refinement
        print(
            f'Update ratio after Temporal SMPLify: {update.sum()} / {norm_joints2d.shape[0]}')
        pred_verts = pred_verts.cpu()
        pred_cam = pred_cam.cpu()
        pred_pose = pred_pose.cpu()
        pred_betas = pred_betas.cpu()
        pred_joints3d = pred_joints3d.cpu()
        pred_verts[update] = new_opt_vertices[update]
        pred_cam[update] = new_opt_cam[update]
        pred_pose[update] = new_opt_pose[update]
        pred_betas[update] = new_opt_betas[update]
        pred_joints3d[update] = new_opt_joints3d[update]


        # ========= Save results to a pickle file ========= #
        pred_cam = pred_cam.cpu().numpy()
        pred_verts = pred_verts.cpu().numpy()
        pred_pose = pred_pose.cpu().numpy()
        pred_betas = pred_betas.cpu().numpy()
        pred_joints3d = pred_joints3d.cpu().numpy()

        orig_cam = convert_crop_cam_to_orig_img(
            cam=pred_cam,
            bbox=bboxes,
            img_width=orig_width,
            img_height=orig_height
        )

        output_dict = {
            'pred_cam': pred_cam,
            'orig_cam': orig_cam,
            'verts': pred_verts,
            'pose': pred_pose,
            'betas': pred_betas,
            'joints3d': pred_joints3d,
            'joints2d': joints2d,
            'bboxes': bboxes,
            'frame_ids': frames,
        }

        vibe_results[person_id] = output_dict

    del model

    end = time.time()
    fps = num_frames / (end - vibe_time)

    print(f'VIBE FPS: {fps:.2f}')
    total_time = time.time() - total_time
    print(
        f'Total time spent: {total_time:.2f} seconds (including model loading time).')
    print(
        f'Total FPS (including model loading time): {num_frames / total_time:.2f}.')

    print(
        f'Saving output results to \"{os.path.join(output_path, "vibe_output.pkl")}\".')

    # joblib.dump(vibe_results, os.path.join(output_path, "vibe_output.pkl"))
    for person in vibe_results.keys():
        dump_path = os.path.join(output_path, "vibe_output_%s.pkl" % person)
        os.makedirs(os.path.dirname(dump_path), exist_ok=True)
        pickle.dump(vibe_results[person], open(dump_path, 'wb'))

    # if not args.no_render:
    #     # ========= Render results as a single video ========= #
    #     renderer = Renderer(resolution=(orig_width, orig_height),
    #                         orig_img=True, wireframe=args.wireframe)

    #     output_img_folder = f'{image_folder}_output'
    #     os.makedirs(output_img_folder, exist_ok=True)

    #     print(f'Rendering output video, writing frames to {output_img_folder}')

    #     # prepare results for rendering
    #     frame_results = prepare_rendering_results(vibe_results, num_frames)
    #     mesh_color = {k: colorsys.hsv_to_rgb(
    #         np.random.rand(), 0.5, 1.0) for k in vibe_results.keys()}

    #     image_file_names = sorted([
    #         os.path.join(image_folder, x)
    #         for x in os.listdir(image_folder)
    #         if x.endswith('.png') or x.endswith('.jpg')
    #     ])

    #     for frame_idx in tqdm(range(len(image_file_names))):
    #         img_fname = image_file_names[frame_idx]
    #         img = cv2.imread(img_fname)

    #         for person_id, person_data in frame_results[frame_idx].items():
    #             frame_verts = person_data['verts']
    #             frame_cam = person_data['cam']

    #             mc = mesh_color[person_id]

    #             mesh_filename = None

    #             img = renderer.render(
    #                 img,
    #                 frame_verts,
    #                 cam=frame_cam,
    #                 color=mc,
    #                 mesh_filename=mesh_filename,
    #             )

    #         cv2.imwrite(os.path.join(output_img_folder,
    #                                  f'{frame_idx:06d}.png'), img)

    #         if args.display:
    #             cv2.imshow('Video', img)
    #             if cv2.waitKey(1) & 0xFF == ord('q'):
    #                 break

    #     if args.display:
    #         cv2.destroyAllWindows()

    #     # ========= Save rendered video ========= #
    #     vid_name = os.path.basename(video_file)
    #     save_name = f'{vid_name.replace(".mp4", "")}_vibe_result.mp4'
    #     save_name = os.path.join(output_path, save_name)
    #     print(f'Saving result video to {save_name}')
    #     images_to_video(img_folder=output_img_folder,
    #                     output_vid_file=save_name)
    #     shutil.rmtree(output_img_folder)

    shutil.rmtree(image_folder)
    print('================= END =================')
Esempio n. 4
0
def main(args):
    torch.cuda.set_device(args.gpu_id)
    device = torch.device('cuda') if torch.cuda.is_available() else torch.device('cpu')

    print(f'Loading video list {args.video_list}')
    video_list = [l.strip() for l in open(args.video_list, 'r').readlines()]
    if len(video_list) < 1:
        print('No files were found in video list')
        return

    print('Loading VIBE model')
    # ========= Define VIBE model ========= #
    model = VIBE_Demo(
        seqlen=16,
        n_layers=2,
        hidden_size=1024,
        add_linear=True,
        use_residual=True,
    ).to(device)

    # ========= Load VIBE pretrained weights ========= #
    pretrained_file = download_ckpt(use_3dpw=False)
    ckpt = torch.load(pretrained_file)
    print(f'Performance of pretrained model on 3DPW: {ckpt["performance"]}')
    ckpt = ckpt['gen_state_dict']
    model.load_state_dict(ckpt, strict=False)
    model.eval()
    print(f'Loaded pretrained weights from \"{pretrained_file}\"')

    num_videos = len(video_list)
    print(f'Processing {num_videos} videos.')
    for video_idx, video_file in enumerate(video_list, start=1):
        if not osp.isfile(video_file):
            print(f'Input video \"{video_file}\" does not exist! Moving on to next file.')
            continue

        filename = osp.splitext(osp.basename(video_file))[0]
        output_path = osp.join(args.output_folder, filename)
        os.makedirs(output_path, exist_ok=True)

        image_folder, num_frames, img_shape = video_to_images(video_file, return_info=True)

        print(f'[{video_idx}/{num_videos}] Processing {num_frames} frames')
        orig_height, orig_width = img_shape[:2]

        # ========= Run tracking ========= #
        bbox_scale = 1.1
        if args.tracking_method == 'pose':
            if not osp.isabs(video_file):
                video_file = osp.join(os.getcwd(), video_file)
            tracking_results = run_posetracker(video_file, staf_folder=args.staf_dir, display=args.display)
        else:
            # run multi object tracker
            mot = MPT(
                device=device,
                batch_size=args.tracker_batch_size,
                display=args.display,
                detector_type=args.detector,
                output_format='dict',
                yolo_img_size=args.yolo_img_size,
            )
            tracking_results = mot(image_folder)

        # remove tracklets if num_frames is less than MIN_NUM_FRAMES
        for person_id in list(tracking_results.keys()):
            if tracking_results[person_id]['frames'].shape[0] < MIN_NUM_FRAMES:
                del tracking_results[person_id]

        # ========= Run VIBE on each person ========= #
        print(f'Running VIBE on each tracklet...')
        vibe_results = {}
        for person_id in tqdm(list(tracking_results.keys())):
            bboxes = joints2d = None

            if args.tracking_method == 'bbox':
                bboxes = tracking_results[person_id]['bbox']
            elif args.tracking_method == 'pose':
                joints2d = tracking_results[person_id]['joints2d']

            frames = tracking_results[person_id]['frames']

            dataset = Inference(
                image_folder=image_folder,
                frames=frames,
                bboxes=bboxes,
                joints2d=joints2d,
                scale=bbox_scale,
            )

            bboxes = dataset.bboxes
            frames = dataset.frames
            has_keypoints = True if joints2d is not None else False

            dataloader = DataLoader(dataset, batch_size=args.vibe_batch_size, num_workers=16)

            with torch.no_grad():

                pred_cam, pred_verts, pred_pose, pred_betas, pred_joints3d, norm_joints2d = [], [], [], [], [], []

                for batch in dataloader:
                    if has_keypoints:
                        batch, nj2d = batch
                        norm_joints2d.append(nj2d.numpy().reshape(-1, 21, 3))

                    batch = batch.unsqueeze(0)
                    batch = batch.to(device)

                    batch_size, seqlen = batch.shape[:2]
                    output = model(batch)[-1]

                    pred_cam.append(output['theta'][:, :, :3].reshape(batch_size * seqlen, -1))
                    pred_verts.append(output['verts'].reshape(batch_size * seqlen, -1, 3))
                    pred_pose.append(output['theta'][:,:,3:75].reshape(batch_size * seqlen, -1))
                    pred_betas.append(output['theta'][:, :,75:].reshape(batch_size * seqlen, -1))
                    pred_joints3d.append(output['kp_3d'].reshape(batch_size * seqlen, -1, 3))


                pred_cam = torch.cat(pred_cam, dim=0)
                pred_verts = torch.cat(pred_verts, dim=0)
                pred_pose = torch.cat(pred_pose, dim=0)
                pred_betas = torch.cat(pred_betas, dim=0)
                pred_joints3d = torch.cat(pred_joints3d, dim=0)

                del batch

            # ========= [Optional] run Temporal SMPLify to refine the results ========= #
            if args.run_smplify and args.tracking_method == 'pose':
                norm_joints2d = np.concatenate(norm_joints2d, axis=0)
                norm_joints2d = convert_kps(norm_joints2d, src='staf', dst='spin')
                norm_joints2d = torch.from_numpy(norm_joints2d).float().to(device)

                # Run Temporal SMPLify
                update, new_opt_vertices, new_opt_cam, new_opt_pose, new_opt_betas, \
                new_opt_joints3d, new_opt_joint_loss, opt_joint_loss = smplify_runner(
                    pred_rotmat=pred_pose,
                    pred_betas=pred_betas,
                    pred_cam=pred_cam,
                    j2d=norm_joints2d,
                    device=device,
                    batch_size=norm_joints2d.shape[0],
                    pose2aa=False,
                )

                # update the parameters after refinement
                print(f'Update ratio after Temporal SMPLify: {update.sum()} / {norm_joints2d.shape[0]}')
                pred_verts = pred_verts.cpu()
                pred_cam = pred_cam.cpu()
                pred_pose = pred_pose.cpu()
                pred_betas = pred_betas.cpu()
                pred_joints3d = pred_joints3d.cpu()
                pred_verts[update] = new_opt_vertices[update]
                pred_cam[update] = new_opt_cam[update]
                pred_pose[update] = new_opt_pose[update]
                pred_betas[update] = new_opt_betas[update]
                pred_joints3d[update] = new_opt_joints3d[update]

            elif args.run_smplify and args.tracking_method == 'bbox':
                print('[WARNING] You need to enable pose tracking to run Temporal SMPLify algorithm!')
                print('[WARNING] Continuing without running Temporal SMPLify!..')

            # ========= Save results to a pickle file ========= #
            pred_cam = pred_cam.cpu().numpy()
            pred_verts = pred_verts.cpu().numpy()
            pred_pose = pred_pose.cpu().numpy()
            pred_betas = pred_betas.cpu().numpy()
            pred_joints3d = pred_joints3d.cpu().numpy()

            orig_cam = convert_crop_cam_to_orig_img(
                cam=pred_cam,
                bbox=bboxes,
                img_width=orig_width,
                img_height=orig_height
            )

            output_dict = {
                'pred_cam': pred_cam,
                'orig_cam': orig_cam,
                'verts': pred_verts,
                'pose': pred_pose,
                'betas': pred_betas,
                'joints3d': pred_joints3d,
                'joints2d': joints2d,
                'bboxes': bboxes,
                'frame_ids': frames,
            }

            vibe_results[person_id] = output_dict

        # Clean-up the temporal folder

        # Save the outputs to joblib pkl file. File is loaded through joblib.load(pkl_path)
        output_pkl_path = osp.join(args.output_folder, f'{filename}.pkl')
        print(f'Saving output results to \"{output_pkl_path}\".')
        joblib.dump(vibe_results, output_pkl_path)
        if not args.no_render:
            # ========= Render results as a single video ========= #
            renderer = Renderer(resolution=(orig_width, orig_height), orig_img=True, wireframe=args.wireframe)

            output_img_folder = f'{image_folder}_output'
            os.makedirs(output_img_folder, exist_ok=True)

            print(f'Rendering output video, writing frames to {output_img_folder}')

            # prepare results for rendering
            frame_results = prepare_rendering_results(vibe_results, num_frames)
            mesh_color = {k: colorsys.hsv_to_rgb(np.random.rand(), 0.5, 1.0) for k in vibe_results.keys()}

            image_file_names = sorted([
                os.path.join(image_folder, x)
                for x in os.listdir(image_folder)
                if x.endswith('.png') or x.endswith('.jpg')
            ])

            for frame_idx in tqdm(range(len(image_file_names))):
                img_fname = image_file_names[frame_idx]
                img = cv2.imread(img_fname)

                if args.sideview:
                    side_img = np.zeros_like(img)

                for person_id, person_data in frame_results[frame_idx].items():
                    frame_verts = person_data['verts']
                    frame_cam = person_data['cam']

                    mc = mesh_color[person_id]

                    mesh_filename = None

                    if args.save_obj:
                        mesh_folder = os.path.join(output_path, 'meshes', f'{person_id:04d}')
                        os.makedirs(mesh_folder, exist_ok=True)
                        mesh_filename = os.path.join(mesh_folder, f'{frame_idx:06d}.obj')

                    img = renderer.render(
                        img,
                        frame_verts,
                        cam=frame_cam,
                        color=mc,
                        mesh_filename=mesh_filename,
                    )

                    if args.sideview:
                        side_img = renderer.render(
                            side_img,
                            frame_verts,
                            cam=frame_cam,
                            color=mc,
                            angle=270,
                            axis=[0,1,0],
                        )

                if args.sideview:
                    img = np.concatenate([img, side_img], axis=1)

                cv2.imwrite(os.path.join(output_img_folder, f'{frame_idx:06d}.png'), img)

                if args.display:
                    cv2.imshow('Video', img)
                    if cv2.waitKey(1) & 0xFF == ord('q'):
                        break

            if args.display:
                cv2.destroyAllWindows()

            # ========= Save rendered video ========= #
            vid_name = os.path.basename(video_file)
            save_name = f'{vid_name.replace(".mp4", "")}_vibe_result.mp4'
            save_name = os.path.join(output_path, save_name)
            print(f'Saving result video to {save_name}')
            images_to_video(img_folder=output_img_folder, output_vid_file=save_name)
            
            shutil.rmtree(output_img_folder)

    # Clean-up after processing
    del model
    
    
    shutil.rmtree(image_folder)

    print('================= END =================')
Esempio n. 5
0
def main(args):
    device = torch.device(
        'cuda') if torch.cuda.is_available() else torch.device('cpu')
    video_file = 'test.mp4'
    output_folder = 'output/'
    output_path = os.path.join(
        output_folder,
        os.path.basename(video_file).replace('.mp4', ''))
    os.makedirs(output_path, exist_ok=True)
    print(f'the output path is:{output_path}')

    image_folder, num_frames, img_shape = generative()

    print(
        f'image_folder is:{image_folder},num_frames is:{num_frames},imshape is:{img_shape}'
    )

    orig_height, orig_width = img_shape[:2]
    total_time = time.time()
    # ========= Run tracking ========= #
    #  tracking_method = bbox
    bbox_scale = 1.1
    # run multi object tracker
    mot = MPT(
        device=device,
        batch_size=12,  # 12
        display=False,  # true
        detector_type='yolo',  # yolo
        output_format='dict',
        yolo_img_size=416,  #416 * 416
    )
    tracking_results = mot(image_folder)
    print(f'output the result of tracking->{tracking_results}')
    for person_id in list(tracking_results.keys()):
        if tracking_results[person_id]['frames'].shape[0] < MIN_NUM_FRAMES:
            del tracking_results[person_id]
    # ========= Define VIBE model ========= #
    model = VIBE_Demo(
        seqlen=16,
        n_layers=2,
        hidden_size=1024,
        add_linear=True,
        use_residual=True,
    ).to(device)
    # ========= Load pretrained weights ========= #
    # 加载预训练模型
    pretrained_file = download_ckpt(use_3dpw=False)
    ckpt = torch.load(pretrained_file)

    print(f'Performance of pretrained model on 3DPW: {ckpt["performance"]}')
    ckpt = ckpt['gen_state_dict']
    model.load_state_dict(ckpt, strict=False)
    model.eval()
    print(f'Loaded pretrained weights from \"{pretrained_file}\"')

    # ========= Run VIBE on each person ========= #
    print(f'Running VIBE on each tracklet...')
    vibe_time = time.time()
    vibe_results = {}
    for person_id in tqdm(list(tracking_results.keys())):
        bboxes = joints2d = None
        # bboxes = n X 4
        bboxes = tracking_results[person_id]['bbox']
        ## frames n X 1
        frames = tracking_results[person_id]['frames']
        # 一个已经标准化了的图像 dataset  其总体大小为 T X 224 X 224 X 3
        dataset = Inference(
            image_folder=image_folder,
            frames=frames,
            bboxes=bboxes,
            joints2d=joints2d,  # none
            scale=bbox_scale,
        )
        bboxes = dataset.bboxes
        frames = dataset.frames
        has_keypoints = True if joints2d is not None else False
        dataloader = DataLoader(dataset, batch_size=64, num_workers=16)

        with torch.no_grad():
            pred_cam, pred_verts, pred_pose, pred_betas, pred_joints3d, norm_joints2d = [], [], [], [], [], []
            for batch in dataloader:
                if has_keypoints:
                    batch, nj2d = batch
                    norm_joints2d.append(nj2d.numpy().reshape(-1, 21, 3))

                batch = batch.unsqueeze(
                    0)  #在dim = 0 增加一维张量  变为: 1 X T x 244 x 244 x 3
                batch = batch.to(device)
                batch_size, seqlen = batch.shape[:2]  # 得到 seqlen是一段时间序列图像

                output = model(batch)[-1]
                pred_cam.append(output['theta'][:, :, :3].reshape(
                    batch_size * seqlen, -1))  # 1*T X 3
                pred_verts.append(output['verts'].reshape(
                    batch_size * seqlen, -1, 3))
                pred_pose.append(output['theta'][:, :, 3:75].reshape(
                    batch_size * seqlen, -1))  # 1*T X 72
                pred_betas.append(output['theta'][:, :, 75:].reshape(
                    batch_size * seqlen, -1))  # 1*T X 10
                pred_joints3d.append(output['kp_3d'].reshape(
                    batch_size * seqlen, -1, 3))  #

            pred_cam = torch.cat(pred_cam, dim=0)  #(T, 3)
            pred_verts = torch.cat(pred_verts, dim=0)  #(T, ,3)
            pred_pose = torch.cat(pred_pose, dim=0)  #(T, 72)
            pred_betas = torch.cat(pred_betas, dim=0)  #(T, 10)
            pred_joints3d = torch.cat(pred_joints3d, dim=0)  #(T, ,3)
            del batch
        # ========= Save results to a pickle file ========= #
        # 由tensor 转换成 numpy
        pred_cam = pred_cam.cpu().numpy()  #(T, 3)
        pred_verts = pred_verts.cpu().numpy()  #(T, ,3)
        pred_pose = pred_pose.cpu().numpy()  #(T, 72)
        pred_betas = pred_betas.cpu().numpy()  #(T, 10)
        pred_joints3d = pred_joints3d.cpu().numpy()  #(T, ,3)
        # 结果为: T X 4
        orig_cam = convert_crop_cam_to_orig_img(
            cam=pred_cam,  # 预测的 cam   T X 3
            bbox=bboxes,  # 目标检测的结果 T X 4
            img_width=orig_width,  # 最初图像的宽
            img_height=orig_height  # 最初图像的高
        )

        output_dict = {
            'pred_cam': pred_cam,
            'orig_cam': orig_cam,
            'verts': pred_verts,
            'pose': pred_pose,
            'betas': pred_betas,
            'joints3d': pred_joints3d,
            'joints2d': joints2d,
            'bboxes': bboxes,
            'frame_ids': frames,
        }
        vibe_results[person_id] = output_dict
    del model

    end = time.time()
    fps = num_frames / (end - vibe_time)
    print(f'VIBE FPS: {fps:.2f}')
    total_time = time.time() - total_time
    print(
        f'Total time spent: {total_time:.2f} seconds (including model loading time).'
    )
    print(
        f'Total FPS (including model loading time): {num_frames / total_time:.2f}.'
    )
    print(
        f'Saving output results to \"{os.path.join(output_path, "vibe_output.pkl")}\".'
    )

    joblib.dump(vibe_results, os.path.join(output_path, "vibe_output.pkl"))

    if not args.no_render:
        # ========= Render results as a single video ========= #
        # 图像高和宽 resolution
        ## 一个 工具 真确传参数即可使用
        renderer = Renderer(resolution=(orig_width, orig_height),
                            orig_img=True,
                            wireframe=args.wireframe)

        output_img_folder = f'{image_folder}_output'
        os.makedirs(output_img_folder, exist_ok=True)

        print(f'Rendering output video, writing frames to {output_img_folder}')

        frame_results = prepare_rendering_results(vibe_results, num_frames)
        mesh_color = {
            k: colorsys.hsv_to_rgb(np.random.rand(), 0.5, 1.0)
            for k in vibe_results.keys()
        }

        image_file_names = sorted([
            os.path.join(image_folder, x) for x in os.listdir(image_folder)
            if x.endswith('.png') or x.endswith('.jpg')
        ])

        for frame_idx in tqdm(range(len(image_file_names))):
            img_fname = image_file_names[frame_idx]
            # 读取图片
            img = cv2.imread(img_fname)

            # true
            if args.sideview:
                side_img = np.zeros_like(img)
            #
            for person_id, person_data in frame_results[frame_idx].items():
                frame_verts = person_data['verts']
                frame_cam = person_data['cam']
                mc = mesh_color[person_id]

                # 3D模型
                mesh_folder = os.path.join(output_path, 'meshes',
                                           f'{person_id:04d}')
                os.makedirs(mesh_folder, exist_ok=True)
                mesh_filename = os.path.join(mesh_folder,
                                             f'{frame_idx:06d}.obj')

                # 输出是一张图片
                img = renderer.render(
                    img,
                    frame_verts,
                    cam=frame_cam,
                    color=mc,
                    mesh_filename=mesh_filename,
                )

                side_img = renderer.render(
                    side_img,
                    frame_verts,
                    cam=frame_cam,
                    color=mc,
                    angle=270,
                    axis=[0, 1, 0],
                )
            img = np.concatenate([img, side_img], axis=1)

            cv2.imwrite(
                os.path.join(output_img_folder, f'{frame_idx:06d}.png'), img)

            if args.display:
                cv2.imshow('Video', img)
                if cv2.waitKey(1) & 0xFF == ord('q'):
                    break

        if args.display:
            cv2.destroyAllWindows()

    print('================= END =================')
Esempio n. 6
0
def main(args):
    if args.device == 'cpu':
        device = torch.device('cpu')
        print('Running on CPU')
    else:
        device = torch.device('cuda')
        print('Running on GPU')

    if args.vid_file:
        video_file = args.vid_file
        if not os.path.isfile(video_file):
            exit(f'Input video \"{video_file}\" does not exist!')
    else:
        image_file = args.img_file
        if not os.path.isfile(image_file):
            exit(f'Input video \"{image_file}\" does not exist!')

    output_path = os.path.join(
        args.output_folder,
        os.path.basename(video_file).replace('.mp4', ''))
    # output_path = os.path.join(args.output_folder, os.path.basename(video_file).split('.')[0])
    os.makedirs(output_path, exist_ok=True)

    image_folder, num_frames, img_shape = video_to_images(video_file,
                                                          return_info=True)

    print(f'Input video number of frames {num_frames}')
    orig_height, orig_width = img_shape[:2]

    total_time = time.time()

    # resize video if too big
    # ffmpeg -i input.avi -filter:v scale=720:-1 -c:a copy output.mkv

    # ========= Run tracking ========= #
    bbox_scale = 1.1
    if args.tracking_method == 'pose':
        if not os.path.isabs(video_file):
            video_file = os.path.join(os.getcwd(), video_file)
        tracking_results = run_posetracker(video_file,
                                           staf_folder=args.staf_dir,
                                           display=args.display)
    else:
        # run multi object tracker
        mot = MPT(
            device=device,
            batch_size=args.tracker_batch_size,
            display=args.display,
            detector_type=args.detector,
            output_format='dict',
            yolo_img_size=args.yolo_img_size,
        )
        tracking_results = mot(image_folder)

    import pdb
    pdb.set_trace

    # remove tracklets if num_frames is less than MIN_NUM_FRAMES
    for person_id in list(tracking_results.keys()):
        if tracking_results[person_id]['frames'].shape[0] < MIN_NUM_FRAMES:
            del tracking_results[person_id]

    # ========= Define VIBE model ========= #
    model = VIBE_Demo(
        seqlen=16,
        n_layers=2,
        hidden_size=1024,
        add_linear=True,
        use_residual=True,
    ).to(device)

    # ========= Load pretrained weights ========= #
    pretrained_file = download_ckpt(use_3dpw=True)
    ckpt = torch.load(pretrained_file)
    print(f'Performance of pretrained model on 3DPW: {ckpt["performance"]}')
    ckpt = ckpt['gen_state_dict']
    model.load_state_dict(ckpt, strict=False)
    model.eval()
    print(f'Loaded pretrained weights from \"{pretrained_file}\"')

    # ========= Run VIBE on each person ========= #
    print(f'Running VIBE on each tracklet...')
    vibe_time = time.time()
    vibe_results = {}
    for person_id in tqdm(list(tracking_results.keys())):
        bboxes = joints2d = None

        if args.tracking_method == 'bbox':
            bboxes = tracking_results[person_id]['bbox']
        elif args.tracking_method == 'pose':
            joints2d = tracking_results[person_id]['joints2d']

        frames = tracking_results[person_id]['frames']

        dataset = Inference(
            image_folder=image_folder,
            frames=frames,
            bboxes=bboxes,
            joints2d=joints2d,
            scale=bbox_scale,
        )

        bboxes = dataset.bboxes
        frames = dataset.frames
        has_keypoints = True if joints2d is not None else False

        dataloader = DataLoader(dataset,
                                batch_size=args.vibe_batch_size,
                                num_workers=16)

        with torch.no_grad():
            pred_cam, pred_verts, pred_pose, pred_betas, pred_joints3d, norm_joints2d = [], [], [], [], [], []

            for batch in dataloader:
                if has_keypoints:
                    batch, nj2d = batch
                    norm_joints2d.append(nj2d.numpy().reshape(-1, 21, 3))

                batch = batch.unsqueeze(0)
                batch = batch.to(device)

                batch_size, seqlen = batch.shape[:2]
                output = model(batch)[-1]

                pred_cam.append(output['theta'][:, :, :3].reshape(
                    batch_size * seqlen, -1))
                pred_verts.append(output['verts'].reshape(
                    batch_size * seqlen, -1, 3))
                pred_pose.append(output['theta'][:, :, 3:75].reshape(
                    batch_size * seqlen, -1))
                pred_betas.append(output['theta'][:, :, 75:].reshape(
                    batch_size * seqlen, -1))
                pred_joints3d.append(output['kp_3d'].reshape(
                    batch_size * seqlen, -1, 3))

            pred_cam = torch.cat(pred_cam, dim=0)
            pred_verts = torch.cat(pred_verts, dim=0)
            pred_pose = torch.cat(pred_pose, dim=0)
            pred_betas = torch.cat(pred_betas, dim=0)
            pred_joints3d = torch.cat(pred_joints3d, dim=0)

            del batch

        # ========= [Optional] run Temporal SMPLify to refine the results ========= #
        if args.run_smplify and args.tracking_method == 'pose':
            norm_joints2d = np.concatenate(norm_joints2d, axis=0)
            norm_joints2d = convert_kps(norm_joints2d, src='staf', dst='spin')
            norm_joints2d = torch.from_numpy(norm_joints2d).float().to(device)

            # Run Temporal SMPLify
            update, new_opt_vertices, new_opt_cam, new_opt_pose, new_opt_betas, \
            new_opt_joints3d, new_opt_joint_loss, opt_joint_loss = smplify_runner(
                pred_rotmat=pred_pose,
                pred_betas=pred_betas,
                pred_cam=pred_cam,
                j2d=norm_joints2d,
                device=device,
                batch_size=norm_joints2d.shape[0],
                pose2aa=False,
            )

            # update the parameters after refinement
            print(
                f'Update ratio after Temporal SMPLify: {update.sum()} / {norm_joints2d.shape[0]}'
            )
            pred_verts = pred_verts.cpu()
            pred_cam = pred_cam.cpu()
            pred_pose = pred_pose.cpu()
            pred_betas = pred_betas.cpu()
            pred_joints3d = pred_joints3d.cpu()
            pred_verts[update] = new_opt_vertices[update]
            pred_cam[update] = new_opt_cam[update]
            pred_pose[update] = new_opt_pose[update]
            pred_betas[update] = new_opt_betas[update]
            pred_joints3d[update] = new_opt_joints3d[update]

        elif args.run_smplify and args.tracking_method == 'bbox':
            print(
                '[WARNING] You need to enable pose tracking to run Temporal SMPLify algorithm!'
            )
            print('[WARNING] Continuing without running Temporal SMPLify!..')

        # ========= Save results to a pickle file ========= #
        pred_cam = pred_cam.cpu().numpy()
        pred_verts = pred_verts.cpu().numpy()
        pred_pose = pred_pose.cpu().numpy()
        pred_betas = pred_betas.cpu().numpy()
        pred_joints3d = pred_joints3d.cpu().numpy()

        orig_cam = convert_crop_cam_to_orig_img(cam=pred_cam,
                                                bbox=bboxes,
                                                img_width=orig_width,
                                                img_height=orig_height)

        output_dict = {
            'pred_cam': pred_cam,
            'orig_cam': orig_cam,
            'verts': pred_verts,
            'pose': pred_pose,
            'betas': pred_betas,
            'joints3d': pred_joints3d,
            'joints2d': joints2d,
            'bboxes': bboxes,
            'frame_ids': frames,
        }

        vibe_results[person_id] = output_dict

    del model

    end = time.time()
    fps = num_frames / (end - vibe_time)

    print(f'VIBE FPS: {fps:.2f}')
    total_time = time.time() - total_time
    print(
        f'Total time spent: {total_time:.2f} seconds (including model loading time).'
    )
    print(
        f'Total FPS (including model loading time): {num_frames / total_time:.2f}.'
    )

    print(
        f'Saving output results to \"{os.path.join(output_path, "vibe_output.pkl")}\".'
    )

    joblib.dump(vibe_results, os.path.join(output_path, "vibe_output.pkl"))

    if not args.no_render:
        # ========= Render results as a single video ========= #
        renderer = Renderer(resolution=(orig_width, orig_height),
                            orig_img=True,
                            wireframe=args.wireframe)

        output_img_folder = f'{image_folder}_images'
        os.makedirs(output_img_folder, exist_ok=True)

        print(f'Rendering output video, writing frames to {output_img_folder}')

        output_pose_folder = f'{image_folder}_poses'
        os.makedirs(output_pose_folder, exist_ok=True)

        print(f'Saving poses to {output_pose_folder}')

        # prepare results for rendering

        from numpy import save
        save(f'{os.path.basename(video_file)}_poses.npy',
             vibe_results[1]['joints3d'][:, :25, :])
        print('Saving numpy poses file to' + f'{video_file}_poses.npy')

        frame_results = prepare_rendering_results(
            vibe_results,
            num_frames)  # returns a list of dicts (one dict for each person)
        mesh_color = {
            k: colorsys.hsv_to_rgb(np.random.rand(), 0.5, 1.0)
            for k in vibe_results.keys()
        }

        image_file_names = sorted([
            os.path.join(image_folder, x) for x in os.listdir(image_folder)
            if x.endswith('.png') or x.endswith('.jpg')
        ])

        for frame_idx in tqdm(range(len(image_file_names))):
            img_fname = image_file_names[frame_idx]
            img = cv2.imread(img_fname)

            if args.sideview:
                side_img = np.zeros_like(img)

            for person_id, person_data in frame_results[frame_idx].items():
                frame_verts = person_data['verts']
                frame_cam = person_data['cam']
                frame_pose = person_data['joints3d'][:25]

                mc = mesh_color[person_id]

                mesh_filename = None

                if args.save_obj:
                    mesh_folder = os.path.join(output_path, 'meshes',
                                               f'{person_id:04d}')
                    os.makedirs(mesh_folder, exist_ok=True)
                    mesh_filename = os.path.join(mesh_folder,
                                                 f'{frame_idx:06d}.obj')

                # bgr image (opencv format)
                img = renderer.render(
                    img,
                    frame_verts,
                    cam=frame_cam,
                    color=mc,
                    mesh_filename=mesh_filename,
                )

                # import pdb; pdb.set_trace()
                # Create a 3D projection and save as img
                # pose is mirrored
                # plot_skeleton(output_pose_folder, frame_idx, frame_pose)

                if args.sideview:
                    side_img = renderer.render(
                        side_img,
                        frame_verts,
                        cam=frame_cam,
                        color=mc,
                        angle=270,
                        axis=[0, 1, 0],
                    )

            if args.sideview:
                img = np.concatenate([img, side_img], axis=1)

            # concatenate pose img with this image before writing
            cv2.imwrite(
                os.path.join(output_img_folder, f'{frame_idx:06d}.png'), img)

            if args.display:
                cv2.imshow('Video', img)
                if cv2.waitKey(1) & 0xFF == ord('q'):
                    break

        if args.display:
            cv2.destroyAllWindows()

        # ========= Save rendered video ========= #
        vid_name = os.path.basename(video_file)
        save_name = f'{vid_name.replace(".mp4", "")}_vibe_result.mp4'
        save_name = os.path.join(output_path, save_name)
        print(f'Saving result video to {save_name}')
        images_to_video(img_folder=output_img_folder,
                        output_vid_file=save_name)
        # shutil.rmtree(output_img_folder)

    shutil.rmtree(image_folder)
    print('================= END =================')
Esempio n. 7
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    def inferData(self, image_path, output_path, pretrained):

        img0 = cv2.imread(osp.join(image_path, os.listdir(image_path)[0]))
        num_frames = len(os.listdir(image_path))
        img_height, img_width = img0.shape[0:2]
        tracking_start_time = time.time()
        tracking_results = self.Tracker(image_path)
        tracking_end_time = time.time()

        print(
            f'Tracking fps: {(num_frames)/(tracking_end_time - tracking_start_time): .2f}'
        )

        for person_id in list(tracking_results.keys()):
            if tracking_results[person_id]['frames'].shape[0] < 25:
                del tracking_results[person_id]
        ckpt = torch.load(pretrained)
        ckpt = ckpt['gen_state_dict']
        self.generator.load_state_dict(ckpt, strict=False)
        self.generator.eval()

        vibe_results = {}
        vibeFPS = 0
        for person_id in tqdm(list(tracking_results.keys())):
            person_start_time = time.time()
            joints2d = None
            bboxes = tracking_results[person_id]['bbox']
            frames = tracking_results[person_id]['frames']
            dataset = Inference(
                image_folder=image_path,
                frames=frames,
                bboxes=bboxes,
                joints2d=joints2d,
                scale=1.0,
            )
            bboxes = dataset.bboxes
            frames = dataset.frames
            dataloader = DataLoader(dataset, batch_size=12, num_workers=16)
            with torch.no_grad():
                pred_cam, pred_verts, pred_pose, pred_betas, pred_joints3d, norm_joints2d = [], [], [], [], [], []
                for batch in dataloader:
                    batch = batch.unsqueeze(0)
                    batch = batch.cuda()
                    batch_size, seqlen = batch.shape[:2]
                    # output = model(batch)[-1]
                    output = self.generator(batch)[-1]
                    pred_cam.append(output['theta'][:, :, :3].reshape(
                        batch_size * seqlen, -1))
                    pred_verts.append(output['verts'].reshape(
                        batch_size * seqlen, -1, 3))
                    pred_pose.append(output['theta'][:, :, 3:75].reshape(
                        batch_size * seqlen, -1))
                    pred_betas.append(output['theta'][:, :, 75:].reshape(
                        batch_size * seqlen, -1))
                    pred_joints3d.append(output['kp_3d'].reshape(
                        batch_size * seqlen, -1, 3))
                pred_cam = torch.cat(pred_cam, dim=0)
                pred_verts = torch.cat(pred_verts, dim=0)
                pred_pose = torch.cat(pred_pose, dim=0)
                pred_betas = torch.cat(pred_betas, dim=0)
                pred_joints3d = torch.cat(pred_joints3d, dim=0)

                del batch
            person_end_time = time.time()
            person_time = person_end_time - person_start_time
            person_frame = len(frames)
            vibeFPS += person_frame / person_time

            pred_cam = pred_cam.cpu().numpy()
            pred_verts = pred_verts.cpu().numpy()
            pred_pose = pred_pose.cpu().numpy()
            pred_betas = pred_betas.cpu().numpy()
            pred_joints3d = pred_joints3d.cpu().numpy()
            orig_cam = convert_crop_cam_to_orig_img(cam=pred_cam,
                                                    bbox=bboxes,
                                                    img_width=img_width,
                                                    img_height=img_height)
            output_dict = {
                'pred_cam': pred_cam,
                'orig_cam': orig_cam,
                'verts': pred_verts,
                'pose': pred_pose,
                'betas': pred_betas,
                'joints3d': pred_joints3d,
                'joints2d': joints2d,
                'bboxes': bboxes,
                'frame_ids': frames,
            }

            vibe_results[person_id] = output_dict
        joblib.dump(vibe_results, os.path.join(output_path, "vibe_output.pkl"))
        print(f'Mean target fps: {vibeFPS/len(list(tracking_results.keys()))}')

        return vibe_results
Esempio n. 8
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def main(args):

    # check GPU availability
    device = torch.device(
        'cuda') if torch.cuda.is_available() else torch.device('cpu')

    # get input video
    video_file = args.input_video

    # save hand info
    save_hand_csv = args.save_hand_csv

    # ========= [Optional] download the youtube video ========= #
    if video_file.startswith('https://www.youtube.com'):
        print(f'Donwloading YouTube video \"{video_file}\"')
        video_file = download_youtube_clip(video_file, '/tmp')
        if video_file is None:
            exit('Youtube url is not valid!')
        print(f'YouTube Video has been downloaded to {video_file}...')

    # check video existence
    if not os.path.isfile(video_file):
        exit(f'Input video \"{video_file}\" does not exist!')

    # set output flles
    output_path = args.output_folder
    image_folder, num_frames, img_shape = video_to_images(video_file, \
                    "/tmp/" + output_path.split("/")[-1], return_info=True)
    print(f'Input video number of frames {num_frames}')
    orig_height, orig_width = img_shape[:2]

    # get the frame rate (frames per second) of the input video
    video = cv2.VideoCapture(video_file)
    fps = video.get(cv2.CAP_PROP_FPS)

    # ========= Run tracking ========= #
    bbox_scale = 1.1

    # run multi object tracker
    mot = MPT(
        device=device,
        batch_size=args.tracker_batch_size,
        detector_type=args.detector,
        output_format='dict',
        yolo_img_size=args.yolo_img_size,
    )
    tracking_results = mot(image_folder)

    # only focus on the frame with the first person
    largest_num_frames = 0
    largest_person = None
    for person_id in list(tracking_results.keys()):
        num_frames = tracking_results[person_id]['frames'].shape[0]
        if num_frames <= largest_num_frames:
            del tracking_results[person_id]
        else:
            largest_num_frames = tracking_results[person_id]['frames'].shape[0]
            if largest_person != None:
                del tracking_results[largest_person]
            largest_person = person_id

    # ========= Define VIBE model ========= #
    model = VIBE_Demo(
        seqlen=16,
        n_layers=2,
        hidden_size=1024,
        add_linear=True,
        use_residual=True,
    ).to(device)

    # ========= Load pretrained weights ========= #
    pretrained_file = download_ckpt(use_3dpw=False)
    ckpt = torch.load(pretrained_file)
    print(f'Performance of pretrained model on 3DPW: {ckpt["performance"]}')
    ckpt = ckpt['gen_state_dict']
    model.load_state_dict(ckpt, strict=False)
    model.eval()
    print(f'Loaded pretrained weights from \"{pretrained_file}\"')

    # ========= Run VIBE on each person ========= #
    print(f'Running VIBE on each tracklet...')
    vibe_results = {}

    for person_id in tqdm(list(tracking_results.keys())):
        bboxes = tracking_results[person_id]['bbox']
        frames = tracking_results[person_id]['frames']
        np.save(output_path + "/frames", frames)

        # inference data of each person
        dataset = Inference(
            image_folder=image_folder,
            frames=frames,
            bboxes=bboxes,
            scale=bbox_scale,
        )
        bboxes = dataset.bboxes
        frames = dataset.frames

        # load data
        dataloader = DataLoader(dataset,
                                batch_size=args.vibe_batch_size,
                                num_workers=16)

        # extract data
        with torch.no_grad():
            pred_cam, pred_verts, pred_pose = [], [], []
            for batch in dataloader:
                batch = batch.unsqueeze(0)
                batch = batch.to(device)
                batch_size, seqlen = batch.shape[:2]
                output = model(batch)[-1]
                pred_cam.append(output['theta'][:, :, :3].reshape(
                    batch_size * seqlen, -1))
                pred_verts.append(output['verts'].reshape(
                    batch_size * seqlen, -1, 3))
                pred_pose.append(output['theta'][:, :, 3:75].reshape(
                    batch_size * seqlen, -1))
            pred_cam = torch.cat(pred_cam, dim=0)
            pred_verts = torch.cat(pred_verts, dim=0)
            pred_pose = torch.cat(pred_pose, dim=0)
            del batch

        # ========= Save results to a pickle file ========= #
        pred_cam = pred_cam.cpu().numpy()
        pred_verts = pred_verts.cpu().numpy()
        pred_pose = pred_pose.cpu().numpy()

        # get camera pose
        orig_cam = convert_crop_cam_to_orig_img(cam=pred_cam,
                                                bbox=bboxes,
                                                img_width=orig_width,
                                                img_height=orig_height)

        # get result information
        output_dict = {
            'pred_cam': pred_cam,
            'orig_cam': orig_cam,
            'verts': pred_verts,
            'pose': pred_pose,
            'bboxes': bboxes,
            'frame_ids': frames,
        }
        np.savetxt(output_path + "/pred_cam.csv", pred_cam, delimiter=",")
        np.savetxt(output_path + "/orig_cam.csv", orig_cam, delimiter=",")
        vibe_results[person_id] = output_dict
    del model

    frame_results = prepare_rendering_results(vibe_results, len(frames))
    np.save(output_path + "/frame_results", frame_results)
    np.save(output_path + "/image_folder", image_folder)
    np.save(output_path + "/orig_width", orig_width)
    np.save(output_path + "/orig_height", orig_height)
Esempio n. 9
0
def runDemo(image_folder, output_folder, pretrained, tracker_batch_size=12, vibe_batch_size=450, wireframe=False):
    device = torch.device('cuda') if torch.cuda.is_available() else torch.device('cpu')
    output_path = os.path.join(output_folder, os.path.basename(image_folder).replace('.mp4', ''))
    os.makedirs(output_path, exist_ok=True)
    num_frames, img_shape  = img_folder_Info(image_folder)
    print(f'Input video number of frames {num_frames}')
    orig_height, orig_width = img_shape[:2]
    total_time = time.time()
    # ========= Run tracking ========= #
    bbox_scale = 1.0
    # run multi object tracker
    mot = MPT(
        device=device,
        batch_size=tracker_batch_size,
        display=False,
        detector_type='yolo',
        output_format='dict',
        yolo_img_size=416,
    )
    tracking_results = mot(image_folder)

    # remove tracklets if num_frames is less than MIN_NUM_FRAMES
    for person_id in list(tracking_results.keys()):
        if tracking_results[person_id]['frames'].shape[0] < MIN_NUM_FRAMES:
            del tracking_results[person_id]

    # ========= Define VIBE model ========= #
    model = e2e_VIBE(
        seqlen=16,
        n_layers=2,
        hidden_size=1024,
        add_linear=True,
        use_residual=True,
    ).to(device)

    # ========= Load pretrained weights ========= #
    pretrained_file = pretrained
    ckpt = torch.load(pretrained_file)
    ckpt = ckpt['gen_state_dict']
    model.load_state_dict(ckpt, strict=False)
    model.eval()
    print(f'Loaded pretrained weights from \"{pretrained_file}\"')

    # ========= Run VIBE on each person ========= #
    print(f'Running VIBE on each tracklet...')
    vibe_time = time.time()
    vibe_results = {}
    time_results = {}
    for person_id in tqdm(list(tracking_results.keys())):
        person_start_time = time.time()
        joints2d = None
        bboxes = tracking_results[person_id]['bbox']
        frames = tracking_results[person_id]['frames']
        dataset = Inference(
            image_folder=image_folder,
            frames=frames,
            bboxes=bboxes,
            joints2d=joints2d,
            scale=bbox_scale,
        )
        bboxes = dataset.bboxes
        frames = dataset.frames
        dataloader = DataLoader(dataset, batch_size=vibe_batch_size, num_workers=16)
        with torch.no_grad():
            pred_cam, pred_verts, pred_pose, pred_betas, pred_joints3d, norm_joints2d = [], [], [], [], [], []
            for batch in dataloader:
                batch = batch.unsqueeze(0)
                batch = batch.to(device)
                batch_size, seqlen = batch.shape[:2]
                output = model(batch)[-1]
                # output = model(batch, J_regressor=J_regressor)[-1]
                pred_cam.append(output['theta'][:, :, :3].reshape(batch_size * seqlen, -1))
                pred_verts.append(output['verts'].reshape(batch_size * seqlen, -1, 3))
                pred_pose.append(output['theta'][:,:,3:75].reshape(batch_size * seqlen, -1))
                pred_betas.append(output['theta'][:, :,75:].reshape(batch_size * seqlen, -1))
                pred_joints3d.append(output['kp_3d'].reshape(batch_size * seqlen, -1, 3))
            pred_cam = torch.cat(pred_cam, dim=0)
            pred_verts = torch.cat(pred_verts, dim=0)
            pred_pose = torch.cat(pred_pose, dim=0)
            pred_betas = torch.cat(pred_betas, dim=0)
            pred_joints3d = torch.cat(pred_joints3d, dim=0)

            del batch

        person_end_time = time.time()

        person_time = person_end_time - person_start_time
        person_frame = len(frames)
        print(f'Person Time: {person_time:.2f}, Person FPS:{person_frame/person_time: .2f} ')



        # ========= Save results to a pickle file ========= #
        pred_cam = pred_cam.cpu().numpy()
        pred_verts = pred_verts.cpu().numpy()
        pred_pose = pred_pose.cpu().numpy()
        pred_betas = pred_betas.cpu().numpy()
        pred_joints3d = pred_joints3d.cpu().numpy()

        orig_cam = convert_crop_cam_to_orig_img(
            cam=pred_cam,
            bbox=bboxes,
            img_width=orig_width,
            img_height=orig_height
        )

        output_dict = {
            'pred_cam': pred_cam,
            'orig_cam': orig_cam,
            'verts': pred_verts,
            'pose': pred_pose,
            'betas': pred_betas,
            'joints3d': pred_joints3d,
            'joints2d': joints2d,
            'bboxes': bboxes,
            'frame_ids': frames,
        }

        vibe_results[person_id] = output_dict

    del model

    end = time.time()
    fps = num_frames / (end - vibe_time)

    print(f'VIBE FPS: {fps:.2f}')
    total_time = time.time() - total_time
    print(f'Total time spent: {total_time:.2f} seconds (including model loading time).')
    print(f'Total FPS (including model loading time): {num_frames / total_time:.2f}.')

    print(f'Saving output results to \"{os.path.join(output_path, "vibe_output.pkl")}\".')

    joblib.dump(vibe_results, os.path.join(output_folder, "vibe_output.pkl"))

    # ========= Render results as a single video ========= #
    renderer = Renderer(resolution=(orig_width, orig_height), orig_img=True, wireframe=wireframe)

    output_img_folder = f'{image_folder}_output'
    os.makedirs(output_img_folder, exist_ok=True)

    print(f'Rendering output video, writing frames to {output_img_folder}')

    # prepare results for rendering
    frame_results = prepare_rendering_results(vibe_results, num_frames)
    mesh_color = {k: colorsys.hsv_to_rgb(np.random.rand(), 0.5, 1.0) for k in vibe_results.keys()}

    image_file_names = sorted([
        os.path.join(image_folder, x)
        for x in os.listdir(image_folder)
        if x.endswith('.png') or x.endswith('.jpg')
    ])

    for frame_idx in tqdm(range(len(image_file_names))):
        img_fname = image_file_names[frame_idx]
        img = cv2.imread(img_fname)
        for person_id, person_data in frame_results[frame_idx].items():
            frame_verts = person_data['verts']
            frame_cam = person_data['cam']

            mc = mesh_color[person_id]

            mesh_filename = None
            img = renderer.render(
                img,
                frame_verts,
                cam=frame_cam,
                color=mc,
                mesh_filename=mesh_filename,
            )
        cv2.imwrite(os.path.join(output_img_folder, f'{frame_idx:06d}.png'), img)

    # ========= Save rendered video ========= #
    vid_name = os.path.basename(image_folder)
    save_name = 'vibe_result.mp4'
    save_name = os.path.join(output_folder, save_name)
    print(f'Saving result video to {save_name}')
    images_to_video(img_folder=output_img_folder, output_vid_file=save_name)
    shutil.rmtree(output_img_folder)

    print('================= END =================')
Esempio n. 10
0
def detect_track_vibe(frame_orig, model_dettr, model_vibe, device):
    orig_height, orig_width = frame_orig.shape[:2]
    frame = cv2.cvtColor(frame_orig, cv2.COLOR_BGR2RGB)
    frame = frame / 255.
    frame = frame.transpose((2, 0, 1))
    frame = torch.from_numpy(frame)
    frame = frame.unsqueeze(0)
    tracking_results = model_dettr(frame)
    # print('1111111111111tracking result',tracking_results)

    # print(f'Running VIBE on each tracklet...')
    vibe_time = time.time()
    vibe_results = {}
    for person_id in list(tracking_results.keys()):
        bboxes = joints2d = None

        bboxes = tracking_results[person_id]['bbox']  # shape(1,4)
        # print('bboxes:  ',bboxes) #相同

        frames = tracking_results[person_id]['frames']
        # print('22222222',bboxes)
        bbox_scale = 1.1
        dataset = Inference(frame=frame_orig, bboxes=bboxes, scale=bbox_scale)

        with torch.no_grad():
            pred_cam, pred_verts, pred_pose, pred_betas, pred_joints3d, norm_joints2d = [], [], [], [], [], []

            batch = dataset
            batch = batch.unsqueeze(0).unsqueeze(0)
            batch = batch.to(device)
            # print(batch.shape)
            batch_size, seqlen = batch.shape[:2]
            output = model_vibe(batch)[-1]

            pred_cam.append(output['theta'][:, :, :3].reshape(
                batch_size * seqlen, -1))
            pred_verts.append(output['verts'].reshape(batch_size * seqlen, -1,
                                                      3))
            pred_pose.append(output['theta'][:, :, 3:75].reshape(
                batch_size * seqlen, -1))
            pred_betas.append(output['theta'][:, :, 75:].reshape(
                batch_size * seqlen, -1))
            pred_joints3d.append(output['kp_3d'].reshape(
                batch_size * seqlen, -1, 3))

            pred_cam = torch.cat(pred_cam, dim=0)
            pred_verts = torch.cat(pred_verts, dim=0)
            pred_pose = torch.cat(pred_pose, dim=0)
            pred_betas = torch.cat(pred_betas, dim=0)
            pred_joints3d = torch.cat(pred_joints3d, dim=0)

            del batch

        pred_cam = pred_cam.cpu().numpy()
        # print('pred_cam:  ',pred_cam)  #不同
        pred_verts = pred_verts.cpu().numpy()
        pred_pose = pred_pose.cpu().numpy()
        pred_betas = pred_betas.cpu().numpy()
        pred_joints3d = pred_joints3d.cpu().numpy()
        # print('3333333333',pred_cam)
        orig_cam = convert_crop_cam_to_orig_img(cam=pred_cam,
                                                bbox=bboxes,
                                                img_width=orig_width,
                                                img_height=orig_height)
        # print('orig_cam',orig_cam.shape)
        output_dict = {
            'pred_cam': pred_cam,
            'orig_cam': orig_cam,
            'verts': pred_verts,
            'pose': pred_pose,
            'betas': pred_betas,
            'joints3d': pred_joints3d,
            'joints2d': joints2d,
            'bboxes': bboxes,
            'frame_ids': frames,
        }
        vibe_results[person_id] = output_dict
    # print('vibe_results orig_cam:  ',vibe_results[1]['orig_cam'])
    # print('vibe_results pose:  ', vibe_results[1]['pose'])
    end = time.time()
    fps = 1 / (end - vibe_time)
    print(f'VIBE FPS: {fps:.2f}')
    return vibe_results
Esempio n. 11
0
def main(args):
    device = torch.device("cuda" if torch.cuda.is_available() else "cpu")

    # Configure depth and color streams
    pipeline = rs.pipeline()
    config = rs.config()
    config.enable_stream(rs.stream.depth, 640, 480, rs.format.z16, 30)
    config.enable_stream(rs.stream.color, 640, 480, rs.format.bgr8, 30)

    # Start streaming
    pipeline.start(config)
    # ========= Run tracking ========= #
    bbox_scale = 1.1
    # run multi object tracker
    mot = MPT(
        device=device,
        batch_size=args.tracker_batch_size,
        display=args.display,
        detector_type=args.detector,
        output_format='dict',
        yolo_img_size=args.yolo_img_size,
    )
    # ========= Define VIBE model ========= #

    model = VIBE_Demo(
        seqlen=16,
        n_layers=2,
        hidden_size=1024,
        add_linear=True,
        use_residual=True,
    ).to(device)

    # ========= Load pretrained weights ========= #
    pretrained_file = download_ckpt(use_3dpw=False)
    ckpt = torch.load(pretrained_file)
    print(f'Performance of pretrained model on 3DPW: {ckpt["performance"]}')
    ckpt = ckpt['gen_state_dict']
    model.load_state_dict(ckpt, strict=False)
    model.eval()
    print(f'Loaded pretrained weights from \"{pretrained_file}\"')

    # ========= main loop ======================= #
    fourcc = cv2.VideoWriter_fourcc(*'XVID')
    #cap = cv2.VideoCapture('test.avi')
    #out = cv2.VideoWriter('output/test_5people.avi', fourcc, 30.0, (640, 360), True)
    #cap = cv2.VideoCapture('sample_video.mp4')
    out = cv2.VideoWriter('output/test_realsense_2.avi', fourcc, 10.0,
                          (640, 480), True)

    # load renderer
    renderer = Renderer(resolution=(640, 480),
                        orig_img=True,
                        wireframe=args.wireframe)

    i = 0
    time_acc = 0.0
    while (True):
        # Capture frame-by-frame
        total_time = time.time()
        frames = pipeline.wait_for_frames()
        frame_orig = frames.get_color_frame()

        # Convert images to numpy arrays
        frame_orig = np.asanyarray(frame_orig.get_data())

        #ret, frame_orig = cap.read()
        if frame_orig is None:
            break
    #for i in range(1,300):
    #    total_time = time.time()
    #    path = os.path.join('tmp/sample_video/',f'{i:06d}.png')
    #    frame_orig = cv2.imread(path)
        orig_height, orig_width = frame_orig.shape[:2]
        frame = cv2.cvtColor(frame_orig, cv2.COLOR_BGR2RGB)
        frame = frame / 255.
        frame = frame.transpose((2, 0, 1))
        frame = torch.from_numpy(frame)
        frame = frame.unsqueeze(0)
        tracking_results = mot(frame)
        #print('1111111111111tracking result',tracking_results)

        #print(f'Running VIBE on each tracklet...')
        vibe_time = time.time()
        vibe_results = {}
        for person_id in list(tracking_results.keys()):
            bboxes = joints2d = None

            bboxes = tracking_results[person_id]['bbox']  # shape(1,4)
            #print('bboxes:  ',bboxes) #相同

            frames = tracking_results[person_id]['frames']
            #print('22222222',bboxes)
            dataset = Inference(frame=frame_orig,
                                bboxes=bboxes,
                                scale=bbox_scale)

            with torch.no_grad():

                pred_cam, pred_verts, pred_pose, pred_betas, pred_joints3d, norm_joints2d = [], [], [], [], [], []

                batch = dataset
                batch = batch.unsqueeze(0).unsqueeze(0)
                batch = batch.to(device)
                #print(batch.shape)
                batch_size, seqlen = batch.shape[:2]
                output = model(batch)[-1]

                pred_cam.append(output['theta'][:, :, :3].reshape(
                    batch_size * seqlen, -1))
                pred_verts.append(output['verts'].reshape(
                    batch_size * seqlen, -1, 3))
                pred_pose.append(output['theta'][:, :, 3:75].reshape(
                    batch_size * seqlen, -1))
                pred_betas.append(output['theta'][:, :, 75:].reshape(
                    batch_size * seqlen, -1))
                pred_joints3d.append(output['kp_3d'].reshape(
                    batch_size * seqlen, -1, 3))

                pred_cam = torch.cat(pred_cam, dim=0)
                pred_verts = torch.cat(pred_verts, dim=0)
                pred_pose = torch.cat(pred_pose, dim=0)
                pred_betas = torch.cat(pred_betas, dim=0)
                pred_joints3d = torch.cat(pred_joints3d, dim=0)

                del batch

            pred_cam = pred_cam.cpu().numpy()
            #print('pred_cam:  ',pred_cam)  #不同
            pred_verts = pred_verts.cpu().numpy()
            pred_pose = pred_pose.cpu().numpy()
            pred_betas = pred_betas.cpu().numpy()
            pred_joints3d = pred_joints3d.cpu().numpy()
            #print('3333333333',pred_cam)
            orig_cam = convert_crop_cam_to_orig_img(cam=pred_cam,
                                                    bbox=bboxes,
                                                    img_width=orig_width,
                                                    img_height=orig_height)
            #print('orig_cam',orig_cam.shape)
            output_dict = {
                'pred_cam': pred_cam,
                'orig_cam': orig_cam,
                'verts': pred_verts,
                'pose': pred_pose,
                'betas': pred_betas,
                'joints3d': pred_joints3d,
                'joints2d': joints2d,
                'bboxes': bboxes,
                'frame_ids': frames,
            }

            vibe_results[person_id] = output_dict

        #print('vibe_results orig_cam:  ',vibe_results[1]['orig_cam'])
        #print('vibe_results pose:  ', vibe_results[1]['pose'])
        end = time.time()
        fps = 1 / (end - vibe_time)

        print(f'VIBE FPS: {fps:.2f}')

        if not args.no_render:
            render_time = time.time()
            # load renderer
            #renderer = Renderer(resolution=(orig_width, orig_height), orig_img=True, wireframe=args.wireframe)
            # prepare results for rendering
            num_frames = 1
            #print('vibe_results1111: ',vibe_results)
            #vibe_results[1]['orig_cam'] = vibe_results[1]['orig_cam'][np.newaxis,:]
            #print('orig_cam:   ',vibe_results[1]['orig_cam'].shape)
            frame_results = prepare_rendering_results(vibe_results, num_frames)
            #print('frame_results',frame_results)
            img = frame_orig
            mesh_color = {
                k: colorsys.hsv_to_rgb(np.random.rand(), 0.5, 1.0)
                for k in vibe_results.keys()
            }

            #img = frame

            if args.sideview:
                side_img = np.zeros_like(img)

            for person_id, person_data in frame_results[0].items():
                frame_verts = person_data['verts']
                frame_cam = person_data['cam']
                #print('4444444444frame_cam',frame_cam)
                mc = mesh_color[person_id]

                mesh_filename = None

                img = renderer.render(
                    img,
                    frame_verts,
                    cam=frame_cam,
                    color=mc,
                    mesh_filename=mesh_filename,
                )

            fps = 1 / (time.time() - render_time)
            print(f'RENDER FPS: {fps:.2f}')

            #img = img.numpy()
            out.write(img)

            if args.display:
                cv2.imshow('Video', img)
                if cv2.waitKey(1) & 0xFF == ord('q'):
                    break

        if args.display:
            cv2.destroyAllWindows()

        total_time = time.time() - total_time
        i += 1
        time_acc += total_time
        print(
            'num of frame: ', i,
            f'  Total time spent: {total_time:.2f} seconds (detect+track+vibe+render).'
        )
        print(f'FPS : { 1 / total_time:.2f}.')
    print('Total average FPS: ', i / time_acc)
    # ========= Save rendered video ========= #
    print('================= END =================')
Esempio n. 12
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def main(args):
    device = torch.device(
        'cuda') if torch.cuda.is_available() else torch.device('cpu')
    dict = {
        'bridge': 1,
        'childs': 2,
        'downwarddog': 3,
        'mountain': 4,
        'plank': 5,
        'seatedforwardbend': 6,
        'tree': 7,
        'trianglepose': 8,
        'warrior1': 9,
        'warrior2': 10
    }
    dir_path = '/home/ubuntu/PoseEstimation/VIBE/InputData/input_test_set/'
    output_folder = '/home/ubuntu/PoseEstimation/VIBE/OutputData/test_set/'

    joints3D_csv = open('output_joints3d_dog.csv', 'a')
    pose_csv = open('output_pose.csv_dog', 'a')

    # ========= Define VIBE model ========= #
    model = VIBE_Demo(
        seqlen=16,
        n_layers=2,
        hidden_size=1024,
        add_linear=True,
        use_residual=True,
    ).to(device)

    # ========= Load pretrained weights ========= #
    pretrained_file = download_ckpt(use_3dpw=False)
    ckpt = torch.load(pretrained_file)
    print(f'Performance of pretrained model on 3DPW: {ckpt["performance"]}')
    ckpt = ckpt['gen_state_dict']
    model.load_state_dict(ckpt, strict=False)
    model.eval()
    print(f'Loaded pretrained weights from \"{pretrained_file}\"')

    video_file = '/home/ubuntu/PoseEstimation/VIBE/DogVideo.mp4'
    video_label = dict['bridge']
    if not os.path.isfile(video_file):
        exit(f'Input video \"{video_file}\" does not exist!')

    image_folder, num_frames, img_shape = video_to_images(video_file,
                                                          return_info=True)

    print(f'Input video number of frames {num_frames}')
    orig_height, orig_width = img_shape[:2]

    total_time = time.time()

    # ========= Run tracking ========= #
    bbox_scale = 1.1
    if args.tracking_method == 'pose':
        if not os.path.isabs(video_file):
            video_file = os.path.join(os.getcwd(), video_file)
        tracking_results = run_posetracker(video_file,
                                           staf_folder=args.staf_dir,
                                           display=args.display)
    else:
        # run multi object tracker
        mot = MPT(
            device=device,
            batch_size=args.tracker_batch_size,
            display=args.display,
            detector_type=args.detector,
            output_format='dict',
            yolo_img_size=args.yolo_img_size,
        )
        tracking_results = mot(image_folder)

    # remove tracklets if num_frames is less than MIN_NUM_FRAMES
    for person_id in list(tracking_results.keys()):
        if tracking_results[person_id]['frames'].shape[0] < MIN_NUM_FRAMES:
            del tracking_results[person_id]

    # ========= Run VIBE on each person ========= #
    print(f'Running VIBE on each tracklet...')
    vibe_time = time.time()
    vibe_results = {}
    for person_id in tqdm(list(tracking_results.keys())):
        bboxes = joints2d = None

        if args.tracking_method == 'bbox':
            bboxes = tracking_results[person_id]['bbox']
        elif args.tracking_method == 'pose':
            joints2d = tracking_results[person_id]['joints2d']

        frames = tracking_results[person_id]['frames']

        dataset = Inference(
            image_folder=image_folder,
            frames=frames,
            bboxes=bboxes,
            joints2d=joints2d,
            scale=bbox_scale,
        )

        bboxes = dataset.bboxes
        frames = dataset.frames
        has_keypoints = True if joints2d is not None else False

        dataloader = DataLoader(dataset,
                                batch_size=args.vibe_batch_size,
                                num_workers=16)

        with torch.no_grad():

            pred_cam, pred_verts, pred_pose, pred_betas, pred_joints3d, norm_joints2d = [], [], [], [], [], []

            for batch in dataloader:
                if has_keypoints:
                    batch, nj2d = batch
                    norm_joints2d.append(nj2d.numpy().reshape(-1, 21, 3))

                batch = batch.unsqueeze(0)
                batch = batch.to(device)

                batch_size, seqlen = batch.shape[:2]
                output = model(batch)[-1]

                pred_cam.append(output['theta'][:, :, :3].reshape(
                    batch_size * seqlen, -1))
                pred_verts.append(output['verts'].reshape(
                    batch_size * seqlen, -1, 3))
                pred_pose.append(output['theta'][:, :, 3:75].reshape(
                    batch_size * seqlen, -1))
                pred_betas.append(output['theta'][:, :, 75:].reshape(
                    batch_size * seqlen, -1))
                pred_joints3d.append(output['kp_3d'].reshape(
                    batch_size * seqlen, -1, 3))

            pred_cam = torch.cat(pred_cam, dim=0)
            pred_verts = torch.cat(pred_verts, dim=0)
            pred_pose = torch.cat(pred_pose, dim=0)
            pred_betas = torch.cat(pred_betas, dim=0)
            pred_joints3d = torch.cat(pred_joints3d, dim=0)

            del batch

        # ========= [Optional] run Temporal SMPLify to refine the results ========= #
        if args.run_smplify and args.tracking_method == 'pose':
            norm_joints2d = np.concatenate(norm_joints2d, axis=0)
            norm_joints2d = convert_kps(norm_joints2d, src='staf', dst='spin')
            norm_joints2d = torch.from_numpy(norm_joints2d).float().to(device)

            # Run Temporal SMPLify
            update, new_opt_vertices, new_opt_cam, new_opt_pose, new_opt_betas, \
            new_opt_joints3d, new_opt_joint_loss, opt_joint_loss = smplify_runner(
                pred_rotmat=pred_pose,
                pred_betas=pred_betas,
                pred_cam=pred_cam,
                j2d=norm_joints2d,
                device=device,
                batch_size=norm_joints2d.shape[0],
                pose2aa=False,
            )

            # update the parameters after refinement
            print(
                f'Update ratio after Temporal SMPLify: {update.sum()} / {norm_joints2d.shape[0]}'
            )
            pred_verts = pred_verts.cpu()
            pred_cam = pred_cam.cpu()
            pred_pose = pred_pose.cpu()
            pred_betas = pred_betas.cpu()
            pred_joints3d = pred_joints3d.cpu()
            pred_verts[update] = new_opt_vertices[update]
            pred_cam[update] = new_opt_cam[update]
            pred_pose[update] = new_opt_pose[update]
            pred_betas[update] = new_opt_betas[update]
            pred_joints3d[update] = new_opt_joints3d[update]

        elif args.run_smplify and args.tracking_method == 'bbox':
            print(
                '[WARNING] You need to enable pose tracking to run Temporal SMPLify algorithm!'
            )
            print('[WARNING] Continuing without running Temporal SMPLify!..')

        # ========= Save results to a pickle file ========= #
        pred_cam = pred_cam.cpu().numpy()
        pred_verts = pred_verts.cpu().numpy()
        pred_pose = pred_pose.cpu().numpy()
        pred_betas = pred_betas.cpu().numpy()
        pred_joints3d = pred_joints3d.cpu().numpy()

        # Runs 1 Euro Filter to smooth out the results
        if args.smooth:
            min_cutoff = args.smooth_min_cutoff  # 0.004
            beta = args.smooth_beta  # 1.5
            print(
                f'Running smoothing on person {person_id}, min_cutoff: {min_cutoff}, beta: {beta}'
            )
            pred_verts, pred_pose, pred_joints3d = smooth_pose(
                pred_pose, pred_betas, min_cutoff=min_cutoff, beta=beta)

        orig_cam = convert_crop_cam_to_orig_img(cam=pred_cam,
                                                bbox=bboxes,
                                                img_width=orig_width,
                                                img_height=orig_height)

        output_dict = {
            'pred_cam': pred_cam,
            'orig_cam': orig_cam,
            'verts': pred_verts,
            'pose': pred_pose,
            'betas': pred_betas,
            'joints3d': pred_joints3d,
            'joints2d': joints2d,
            'bboxes': bboxes,
            'frame_ids': frames,
        }

        for i in range(len(output_dict['joints3d'])):
            if (i % 5 == 0):
                flat_arr = output_dict['joints3d'][i].flatten()
                len_N = len(flat_arr)
                np.savetxt(joints3D_csv, [np.append(flat_arr, [video_label])],
                           delimiter=',',
                           fmt=' '.join(['%f'] * len_N + ['%i']))

        for i in range(len(output_dict['pose'])):
            if (i % 5 == 0):
                pose_arr = output_dict['pose'][i].flatten()
                len_M = len(pose_arr)
                np.savetxt(pose_csv, [np.append(pose_arr, [video_label])],
                           delimiter=',',
                           fmt=' '.join(['%f'] * len_M + ['%i']))

    end = time.time()
    fps = num_frames / (end - vibe_time)

    print(f'VIBE FPS: {fps:.2f}')
    total_time = time.time() - total_time
    print(
        f'Total time spent: {total_time:.2f} seconds (including model loading time).'
    )
    print(
        f'Total FPS (including model loading time): {num_frames / total_time:.2f}.'
    )
Esempio n. 13
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def main(args):
    device = torch.device(
        'cuda') if torch.cuda.is_available() else torch.device('cpu')
    """ Prepare input video (images) """
    video_file = args.vid_file
    if video_file.startswith('https://www.youtube.com'):
        print(f"Donwloading YouTube video \'{video_file}\'")
        video_file = download_youtube_clip(video_file, '/tmp')
        if video_file is None:
            exit('Youtube url is not valid!')
        print(f"YouTube Video has been downloaded to {video_file}...")

    if not os.path.isfile(video_file):
        exit(f"Input video \'{video_file}\' does not exist!")

    output_path = osp.join('./output/demo_output',
                           os.path.basename(video_file).replace('.mp4', ''))
    Path(output_path).mkdir(parents=True, exist_ok=True)
    image_folder, num_frames, img_shape = video_to_images(video_file,
                                                          return_info=True)

    print(f"Input video number of frames {num_frames}\n")
    orig_height, orig_width = img_shape[:2]
    """ Run tracking """
    total_time = time.time()
    bbox_scale = 1.2
    # run multi object tracker
    mot = MPT(
        device=device,
        batch_size=args.tracker_batch_size,
        display=args.display,
        detector_type=args.detector,
        output_format='dict',
        yolo_img_size=args.yolo_img_size,
    )
    tracking_results = mot(image_folder)

    # remove tracklets if num_frames is less than MIN_NUM_FRAMES
    for person_id in list(tracking_results.keys()):
        if tracking_results[person_id]['frames'].shape[0] < MIN_NUM_FRAMES:
            del tracking_results[person_id]
    """ Get TCMR model """
    seq_len = 16
    model = TCMR(seqlen=seq_len, n_layers=2, hidden_size=1024).to(device)

    # Load pretrained weights
    pretrained_file = args.model
    ckpt = torch.load(pretrained_file)
    print(f"Load pretrained weights from \'{pretrained_file}\'")
    ckpt = ckpt['gen_state_dict']
    model.load_state_dict(ckpt, strict=False)

    # Change mesh gender
    gender = args.gender  # 'neutral', 'male', 'female'
    model.regressor.smpl = SMPL(SMPL_MODEL_DIR,
                                batch_size=64,
                                create_transl=False,
                                gender=gender).cuda()

    model.eval()

    # Get feature_extractor
    from lib.models.spin import hmr
    hmr = hmr().to(device)
    checkpoint = torch.load(
        osp.join(BASE_DATA_DIR, 'spin_model_checkpoint.pth.tar'))
    hmr.load_state_dict(checkpoint['model'], strict=False)
    hmr.eval()
    """ Run TCMR on each person """
    print("\nRunning TCMR on each person tracklet...")
    tcmr_time = time.time()
    tcmr_results = {}
    for person_id in tqdm(list(tracking_results.keys())):
        bboxes = joints2d = None
        bboxes = tracking_results[person_id]['bbox']
        frames = tracking_results[person_id]['frames']

        # Prepare static image features
        dataset = CropDataset(
            image_folder=image_folder,
            frames=frames,
            bboxes=bboxes,
            joints2d=joints2d,
            scale=bbox_scale,
        )

        bboxes = dataset.bboxes
        frames = dataset.frames
        has_keypoints = True if joints2d is not None else False

        crop_dataloader = DataLoader(dataset, batch_size=256, num_workers=16)

        with torch.no_grad():
            feature_list = []
            for i, batch in enumerate(crop_dataloader):
                if has_keypoints:
                    batch, nj2d = batch
                    norm_joints2d.append(nj2d.numpy().reshape(-1, 21, 3))

                batch = batch.to(device)
                feature = hmr.feature_extractor(batch.reshape(-1, 3, 224, 224))
                feature_list.append(feature.cpu())

            del batch

            feature_list = torch.cat(feature_list, dim=0)

        # Encode temporal features and estimate 3D human mesh
        dataset = FeatureDataset(
            image_folder=image_folder,
            frames=frames,
            seq_len=seq_len,
        )
        dataset.feature_list = feature_list

        dataloader = DataLoader(dataset, batch_size=64, num_workers=32)
        with torch.no_grad():
            pred_cam, pred_verts, pred_pose, pred_betas, pred_joints3d, norm_joints2d = [], [], [], [], [], []

            for i, batch in enumerate(dataloader):
                if has_keypoints:
                    batch, nj2d = batch
                    norm_joints2d.append(nj2d.numpy().reshape(-1, 21, 3))

                batch = batch.to(device)
                output = model(batch)[0][-1]

                pred_cam.append(output['theta'][:, :3])
                pred_verts.append(output['verts'])
                pred_pose.append(output['theta'][:, 3:75])
                pred_betas.append(output['theta'][:, 75:])
                pred_joints3d.append(output['kp_3d'])

            pred_cam = torch.cat(pred_cam, dim=0)
            pred_verts = torch.cat(pred_verts, dim=0)
            pred_pose = torch.cat(pred_pose, dim=0)
            pred_betas = torch.cat(pred_betas, dim=0)
            pred_joints3d = torch.cat(pred_joints3d, dim=0)

            del batch

        # ========= Save results to a pickle file ========= #
        pred_cam = pred_cam.cpu().numpy()
        pred_verts = pred_verts.cpu().numpy()
        pred_pose = pred_pose.cpu().numpy()
        pred_betas = pred_betas.cpu().numpy()
        pred_joints3d = pred_joints3d.cpu().numpy()

        bboxes[:, 2:] = bboxes[:, 2:] * 1.2
        if args.render_plain:
            pred_cam[:, 0], pred_cam[:, 1:] = 1, 0  # np.array([[1, 0, 0]])
        orig_cam = convert_crop_cam_to_orig_img(cam=pred_cam,
                                                bbox=bboxes,
                                                img_width=orig_width,
                                                img_height=orig_height)

        output_dict = {
            'pred_cam': pred_cam,
            'orig_cam': orig_cam,
            'verts': pred_verts,
            'pose': pred_pose,
            'betas': pred_betas,
            'joints3d': pred_joints3d,
            'joints2d': joints2d,
            'bboxes': bboxes,
            'frame_ids': frames,
        }

        tcmr_results[person_id] = output_dict

    del model

    end = time.time()
    fps = num_frames / (end - tcmr_time)
    print(f'TCMR FPS: {fps:.2f}')
    total_time = time.time() - total_time
    print(
        f'Total time spent: {total_time:.2f} seconds (including model loading time).'
    )
    print(
        f'Total FPS (including model loading time): {num_frames / total_time:.2f}.'
    )

    if args.save_pkl:
        print(
            f"Saving output results to \'{os.path.join(output_path, 'tcmr_output.pkl')}\'."
        )
        joblib.dump(tcmr_results, os.path.join(output_path, "tcmr_output.pkl"))
    """ Render results as a single video """
    renderer = Renderer(resolution=(orig_width, orig_height),
                        orig_img=True,
                        wireframe=args.wireframe)

    output_img_folder = f'{image_folder}_output'
    input_img_folder = f'{image_folder}_input'
    os.makedirs(output_img_folder, exist_ok=True)
    os.makedirs(input_img_folder, exist_ok=True)

    print(f"\nRendering output video, writing frames to {output_img_folder}")
    # prepare results for rendering
    frame_results = prepare_rendering_results(tcmr_results, num_frames)
    mesh_color = {
        k: colorsys.hsv_to_rgb(np.random.rand(), 0.5, 1.0)
        for k in tcmr_results.keys()
    }

    image_file_names = sorted([
        os.path.join(image_folder, x) for x in os.listdir(image_folder)
        if x.endswith('.png') or x.endswith('.jpg')
    ])

    for frame_idx in tqdm(range(len(image_file_names))):
        img_fname = image_file_names[frame_idx]
        img = cv2.imread(img_fname)
        input_img = img.copy()
        if args.render_plain:
            img[:] = 0

        if args.sideview:
            side_img = np.zeros_like(img)

        for person_id, person_data in frame_results[frame_idx].items():
            frame_verts = person_data['verts']
            frame_cam = person_data['cam']

            mesh_filename = None
            if args.save_obj:
                mesh_folder = os.path.join(output_path, 'meshes',
                                           f'{person_id:04d}')
                Path(mesh_folder).mkdir(parents=True, exist_ok=True)
                mesh_filename = os.path.join(mesh_folder,
                                             f'{frame_idx:06d}.obj')

            mc = mesh_color[person_id]

            img = renderer.render(
                img,
                frame_verts,
                cam=frame_cam,
                color=mc,
                mesh_filename=mesh_filename,
            )
            if args.sideview:
                side_img = renderer.render(
                    side_img,
                    frame_verts,
                    cam=frame_cam,
                    color=mc,
                    angle=270,
                    axis=[0, 1, 0],
                )

        if args.sideview:
            img = np.concatenate([img, side_img], axis=1)

        # save output frames
        cv2.imwrite(os.path.join(output_img_folder, f'{frame_idx:06d}.jpg'),
                    img)
        cv2.imwrite(os.path.join(input_img_folder, f'{frame_idx:06d}.jpg'),
                    input_img)

        if args.display:
            cv2.imshow('Video', img)
            if cv2.waitKey(1) & 0xFF == ord('q'):
                break

    if args.display:
        cv2.destroyAllWindows()
    """ Save rendered video """
    vid_name = os.path.basename(video_file)
    save_name = f'tcmr_{vid_name.replace(".mp4", "")}_output.mp4'
    save_path = os.path.join(output_path, save_name)

    images_to_video(img_folder=output_img_folder, output_vid_file=save_path)
    images_to_video(img_folder=input_img_folder,
                    output_vid_file=os.path.join(output_path, vid_name))
    print(f"Saving result video to {os.path.abspath(save_path)}")
    shutil.rmtree(output_img_folder)
    shutil.rmtree(input_img_folder)
    shutil.rmtree(image_folder)
Esempio n. 14
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def main(args):
    device = torch.device('cuda') if torch.cuda.is_available() else torch.device('cpu')

    video_file = args.vid_file

    # ========= [Optional] download the youtube video ========= #
    if video_file.startswith('https://www.youtube.com'):
        print(f'Donwloading YouTube video \"{video_file}\"')
        video_file = download_youtube_clip(video_file, '/tmp')

        if video_file is None:
            exit('Youtube url is not valid!')

        print(f'YouTube Video has been downloaded to {video_file}...')

    if not os.path.isfile(video_file):
        exit(f'Input video \"{video_file}\" does not exist!')

    output_path = os.path.join(args.output_folder, os.path.basename(video_file).replace('.mp4', ''))
    os.makedirs(output_path, exist_ok=True)

    image_folder, num_frames, img_shape = video_to_images(video_file, return_info=True)

    print(f'Input video number of frames {num_frames}')
    orig_height, orig_width = img_shape[:2]

    total_time = time.time()

    # ========= Run tracking ========= #
    bbox_scale = 1.1
    if args.tracking_method == 'pose':
        if not os.path.isabs(video_file):
            video_file = os.path.join(os.getcwd(), video_file)
        tracking_results = run_posetracker(video_file, staf_folder=args.staf_dir, display=args.display)
    else:
        # run multi object tracker
        mot = MPT(
            device=device,
            batch_size=args.tracker_batch_size,
            display=args.display,
            detector_type=args.detector,
            output_format='dict',
            yolo_img_size=args.yolo_img_size,
        )
        tracking_results = mot(image_folder)

    # remove tracklets if num_frames is less than MIN_NUM_FRAMES
    for person_id in list(tracking_results.keys()):
        if tracking_results[person_id]['frames'].shape[0] < MIN_NUM_FRAMES:
            del tracking_results[person_id]

    # ========= Define VIBE model ========= #
    model = VIBE_Demo(
        seqlen=16,
        n_layers=2,
        hidden_size=1024,
        add_linear=True,
        use_residual=True,
    ).to(device)

    # ========= Load pretrained weights ========= #
    pretrained_file = download_ckpt(use_3dpw=False)
    ckpt = torch.load(pretrained_file)
    print(f'Performance of pretrained model on 3DPW: {ckpt["performance"]}')
    ckpt = ckpt['gen_state_dict']
    model.load_state_dict(ckpt, strict=False)
    model.eval()
    print(f'Loaded pretrained weights from \"{pretrained_file}\"')

    # ========= Run VIBE on each person ========= #
    print(f'Running VIBE on each tracklet...')
    vibe_time = time.time()
    vibe_results = {}
    for person_id in tqdm(list(tracking_results.keys())):
        bboxes = joints2d = None     

        if args.tracking_method == 'bbox':
            bboxes = tracking_results[person_id]['bbox']
        elif args.tracking_method == 'pose':
            joints2d = tracking_results[person_id]['joints2d']

        frames = tracking_results[person_id]['frames']

        dataset = Inference(
            image_folder=image_folder,
            frames=frames,
            bboxes=bboxes,
            joints2d=joints2d,
            scale=bbox_scale,
        )

        bboxes = dataset.bboxes
        frames = dataset.frames
        has_keypoints = True if joints2d is not None else False

        # reduce the num of worker if you encountered the error:  DLL load failed: The paging file is too small for this operation to complete
        dataloader = DataLoader(dataset, batch_size=args.vibe_batch_size, num_workers=8)

        with torch.no_grad():

            pred_cam, pred_verts, pred_pose, pred_betas, pred_joints3d, norm_joints2d = [], [], [], [], [], []

            for batch in dataloader:
                if has_keypoints:
                    batch, nj2d = batch
                    norm_joints2d.append(nj2d.numpy().reshape(-1, 21, 3))

                batch = batch.unsqueeze(0)
                batch = batch.to(device)

                batch_size, seqlen = batch.shape[:2]
                output = model(batch)[-1]

                pred_cam.append(output['theta'][:, :, :3].reshape(batch_size * seqlen, -1))
                pred_verts.append(output['verts'].reshape(batch_size * seqlen, -1, 3))
                pred_pose.append(output['theta'][:,:,3:75].reshape(batch_size * seqlen, -1))
                pred_betas.append(output['theta'][:, :,75:].reshape(batch_size * seqlen, -1))
                pred_joints3d.append(output['kp_3d'].reshape(batch_size * seqlen, -1, 3))


            pred_cam = torch.cat(pred_cam, dim=0)
            pred_verts = torch.cat(pred_verts, dim=0)
            pred_pose = torch.cat(pred_pose, dim=0)
            pred_betas = torch.cat(pred_betas, dim=0)
            pred_joints3d = torch.cat(pred_joints3d, dim=0)

            del batch

        # ========= [Optional] run Temporal SMPLify to refine the results ========= #
        if args.run_smplify and args.tracking_method == 'pose':
            norm_joints2d = np.concatenate(norm_joints2d, axis=0)
            norm_joints2d = convert_kps(norm_joints2d, src='staf', dst='spin')
            norm_joints2d = torch.from_numpy(norm_joints2d).float().to(device)

            # Run Temporal SMPLify
            update, new_opt_vertices, new_opt_cam, new_opt_pose, new_opt_betas, \
            new_opt_joints3d, new_opt_joint_loss, opt_joint_loss = smplify_runner(
                pred_rotmat=pred_pose,
                pred_betas=pred_betas,
                pred_cam=pred_cam,
                j2d=norm_joints2d,
                device=device,
                batch_size=norm_joints2d.shape[0],
                pose2aa=False,
            )

            # update the parameters after refinement
            print(f'Update ratio after Temporal SMPLify: {update.sum()} / {norm_joints2d.shape[0]}')
            pred_verts = pred_verts.cpu()
            pred_cam = pred_cam.cpu()
            pred_pose = pred_pose.cpu()
            pred_betas = pred_betas.cpu()
            pred_joints3d = pred_joints3d.cpu()
            pred_verts[update] = new_opt_vertices[update]
            pred_cam[update] = new_opt_cam[update]
            pred_pose[update] = new_opt_pose[update]
            pred_betas[update] = new_opt_betas[update]
            pred_joints3d[update] = new_opt_joints3d[update]

        elif args.run_smplify and args.tracking_method == 'bbox':
            print('[WARNING] You need to enable pose tracking to run Temporal SMPLify algorithm!')
            print('[WARNING] Continuing without running Temporal SMPLify!..')

        # ========= Save results to a pickle file ========= #
        pred_cam = pred_cam.cpu().numpy()
        pred_verts = pred_verts.cpu().numpy()
        pred_pose = pred_pose.cpu().numpy()
        pred_betas = pred_betas.cpu().numpy()
        pred_joints3d = pred_joints3d.cpu().numpy()

        orig_cam = convert_crop_cam_to_orig_img(
            cam=pred_cam,
            bbox=bboxes,
            img_width=orig_width,
            img_height=orig_height
        )

        output_dict = {
            'pred_cam': pred_cam,
            'orig_cam': orig_cam,
            'verts': pred_verts,
            'pose': pred_pose,
            'betas': pred_betas,
            'joints3d': pred_joints3d,
            'joints2d': joints2d,
            'bboxes': bboxes,
            'frame_ids': frames,
        }

        vibe_results[person_id] = output_dict

    del model

    end = time.time()
    fps = num_frames / (end - vibe_time)

    print(f'VIBE FPS: {fps:.2f}')
    total_time = time.time() - total_time
    print(f'Total time spent: {total_time:.2f} seconds (including model loading time).')
    print(f'Total FPS (including model loading time): {num_frames / total_time:.2f}.')

    print(f'Saving output results to \"{os.path.join(output_path, "vibe_output.pkl")}\".')

    joblib.dump(vibe_results, os.path.join(output_path, "vibe_output.pkl"))

    if not args.no_render:
        # ========= Render results as a single video ========= #
        renderer = Renderer(resolution=(orig_width, orig_height), orig_img=True, wireframe=args.wireframe)

        output_img_folder = f'{image_folder}_output'
        os.makedirs(output_img_folder, exist_ok=True)

        print(f'Rendering output video, writing frames to {output_img_folder}')

        # prepare results for rendering
        frame_results = prepare_rendering_results(vibe_results, num_frames)
        mesh_color = {k: colorsys.hsv_to_rgb(np.random.rand(), 0.5, 1.0) for k in vibe_results.keys()}

        image_file_names = sorted([
            os.path.join(image_folder, x)
            for x in os.listdir(image_folder)
            if x.endswith('.png') or x.endswith('.jpg')
        ])

        for frame_idx in tqdm(range(len(image_file_names))):
            img_fname = image_file_names[frame_idx]
            img = cv2.imread(img_fname)

            if args.sideview:
                side_img = np.zeros_like(img)

            for person_id, person_data in frame_results[frame_idx].items():
                frame_verts = person_data['verts']
                frame_cam = person_data['cam']

                mc = mesh_color[person_id]

                mesh_filename = None

                if args.save_obj:
                    mesh_folder = os.path.join(output_path, 'meshes', f'{person_id:04d}')
                    os.makedirs(mesh_folder, exist_ok=True)
                    mesh_filename = os.path.join(mesh_folder, f'{frame_idx:06d}.obj')

                img = renderer.render(
                    img,
                    frame_verts,
                    cam=frame_cam,
                    color=mc,
                    mesh_filename=mesh_filename,
                )

                if args.sideview:
                    side_img = renderer.render(
                        side_img,
                        frame_verts,
                        cam=frame_cam,
                        color=mc,
                        angle=270,
                        axis=[0,1,0],
                    )

            if args.sideview:
                img = np.concatenate([img, side_img], axis=1)

            font = cv2.FONT_HERSHEY_SIMPLEX
            x = 10 #position of text
            y = 20 #position of text
            cv2.putText(img, str(frame_idx), (x,y), font ,0.55,(0,255,0),1)
            cv2.imwrite(os.path.join(output_img_folder, f'{frame_idx:06d}.png'), img)

            if args.display:
                cv2.imshow('Video', img)
                if cv2.waitKey(1) & 0xFF == ord('q'):
                    break

        if args.display:
            cv2.destroyAllWindows()

        # ========= Save rendered video ========= #
        vid_name = os.path.basename(video_file)
        save_name = f'{vid_name.replace(".mp4", "")}_vibe_result.mp4'
        save_name = os.path.join(output_path, save_name)
        print(f'Saving result video to {save_name}')
        images_to_video(img_folder=output_img_folder, output_vid_file=save_name)
        shutil.rmtree(output_img_folder)

    shutil.rmtree(image_folder)

    # generate and save the joints csv file for animating avatars later
    output = joblib.load(os.path.join(output_path, "vibe_output.pkl"))
    for i in output.keys():
        print('Track ids:', i , end='\n\n')

    num_ppl = len(output.keys())

    print('VIBE output file content:', end='\n\n')

    vid_name = os.path.basename(video_file)
    vibe_result_folder = output_path
    # output the pose result as csv
    # format: v_personId_numFrames
    pose_filename_list = []

    for i in output.keys():
      pose_filename = vibe_result_folder + "/" + vid_name + "_"+ str(i) + "_" +  str(output[i]['pose'].shape[0]) + ".csv"
      pose_filename_list.append(pose_filename)
      field_names = []
      for idx in range(73): # 72 -> 73 (+ frame_id at 0)
        field_names.append(str(idx))
        
      with open(pose_filename, 'w', newline='') as file:
        writer = csv.writer(file)
        writer.writerow(field_names)
        for frame_id in range(len(output[i]['pose'])):
          output_data = [output[i]['frame_ids'][frame_id]]
          output_data.extend(output[i]['pose'][frame_id])
          #print(output_data)
          writer.writerow(output_data) 


    print('================= END =================')
def main(args):
    device = torch.device(
        'cuda') if torch.cuda.is_available() else torch.device('cpu')

    tf.compat.v1.logging.set_verbosity(tf.compat.v1.logging.ERROR)

    map_vals = {
        'bridge': 1,
        'childs': 2,
        'downwarddog': 3,
        'mountain': 4,
        'plank': 5,
        'seatedforwardbend': 6,
        'tree': 7,
        'trianglepose': 8,
        'warrior1': 9,
        'warrior2': 10
    }

    inverse_map = {
        1: 'bridge',
        2: 'childs',
        3: 'downwarddog',
        4: 'mountain',
        5: 'plank',
        6: 'seatedforwardbend',
        7: 'tree',
        8: 'trianglepose',
        9: 'warrior1',
        10: 'warrior2'
    }

    video_file = args.vid_file
    # ========= [Optional] download the youtube video ========= #
    if video_file.startswith('https://www.youtube.com'):
        print(f'Donwloading YouTube video \"{video_file}\"')
        video_file = download_youtube_clip(video_file, '/tmp')

        if video_file is None:
            exit('Youtube url is not valid!')

        print(f'YouTube Video has been downloaded to {video_file}...')

    if not os.path.isfile(video_file):
        exit(f'Input video \"{video_file}\" does not exist!')

    dir_path = '/home/ubuntu/PoseEstimation/VIBE/InputData/input_test_set/'
    output_folder = '/home/ubuntu/PoseEstimation/VIBE/OutputData/'

    # ========= Define VIBE model ========= #
    model = VIBE_Demo(
        seqlen=16,
        n_layers=2,
        hidden_size=1024,
        add_linear=True,
        use_residual=True,
    ).to(device)

    # ========= Load Classification Model ========= #
    classification_model = pickle.load(
        open('view_classification_model.pkl', 'rb'))

    # ========= Load pretrained weights ========= #
    pretrained_file = download_ckpt(use_3dpw=False)
    ckpt = torch.load(pretrained_file)
    #print(f'Performance of pretrained model on 3DPW: {ckpt["performance"]}')
    ckpt = ckpt['gen_state_dict']
    model.load_state_dict(ckpt, strict=False)
    model.eval()
    #print(f'Loaded pretrained weights from \"{pretrained_file}\"')

    image_folder, num_frames, img_shape = video_to_images(video_file,
                                                          return_info=True)

    print(f'Input video number of frames {num_frames}')
    orig_height, orig_width = img_shape[:2]

    total_time = time.time()

    # ========= Run tracking ========= #
    bbox_scale = 1.1
    if args.tracking_method == 'pose':
        if not os.path.isabs(video_file):
            video_file = os.path.join(os.getcwd(), video_file)
        tracking_results = run_posetracker(video_file,
                                           staf_folder=args.staf_dir,
                                           display=args.display)
    else:
        # run multi object tracker
        mot = MPT(
            device=device,
            batch_size=args.tracker_batch_size,
            display=args.display,
            detector_type=args.detector,
            output_format='dict',
            yolo_img_size=args.yolo_img_size,
        )
        tracking_results = mot(image_folder)

    # remove tracklets if num_frames is less than MIN_NUM_FRAMES
    for person_id in list(tracking_results.keys()):
        if tracking_results[person_id]['frames'].shape[0] < MIN_NUM_FRAMES:
            del tracking_results[person_id]

    # ========= Run VIBE on each person ========= #
    #print(f'Running VIBE on each tracklet...')
    vibe_time = time.time()
    vibe_results = {}
    for person_id in list(tracking_results.keys()):
        bboxes = joints2d = None

        if args.tracking_method == 'bbox':
            bboxes = tracking_results[person_id]['bbox']
        elif args.tracking_method == 'pose':
            joints2d = tracking_results[person_id]['joints2d']

        frames = tracking_results[person_id]['frames']

        dataset = Inference(
            image_folder=image_folder,
            frames=frames,
            bboxes=bboxes,
            joints2d=joints2d,
            scale=bbox_scale,
        )

        bboxes = dataset.bboxes
        frames = dataset.frames
        has_keypoints = True if joints2d is not None else False

        dataloader = DataLoader(dataset,
                                batch_size=args.vibe_batch_size,
                                num_workers=16)

        with torch.no_grad():

            pred_cam, pred_verts, pred_pose, pred_betas, pred_joints3d, norm_joints2d = [], [], [], [], [], []

            for batch in dataloader:
                if has_keypoints:
                    batch, nj2d = batch
                    norm_joints2d.append(nj2d.numpy().reshape(-1, 21, 3))

                batch = batch.unsqueeze(0)
                batch = batch.to(device)

                batch_size, seqlen = batch.shape[:2]
                output = model(batch)[-1]

                pred_cam.append(output['theta'][:, :, :3].reshape(
                    batch_size * seqlen, -1))
                pred_verts.append(output['verts'].reshape(
                    batch_size * seqlen, -1, 3))
                pred_pose.append(output['theta'][:, :, 3:75].reshape(
                    batch_size * seqlen, -1))
                pred_betas.append(output['theta'][:, :, 75:].reshape(
                    batch_size * seqlen, -1))
                pred_joints3d.append(output['kp_3d'].reshape(
                    batch_size * seqlen, -1, 3))

            pred_cam = torch.cat(pred_cam, dim=0)
            pred_verts = torch.cat(pred_verts, dim=0)
            pred_pose = torch.cat(pred_pose, dim=0)
            pred_betas = torch.cat(pred_betas, dim=0)
            pred_joints3d = torch.cat(pred_joints3d, dim=0)

            del batch

        # ========= [Optional] run Temporal SMPLify to refine the results ========= #
        if args.run_smplify and args.tracking_method == 'pose':
            norm_joints2d = np.concatenate(norm_joints2d, axis=0)
            norm_joints2d = convert_kps(norm_joints2d, src='staf', dst='spin')
            norm_joints2d = torch.from_numpy(norm_joints2d).float().to(device)

            # Run Temporal SMPLify
            update, new_opt_vertices, new_opt_cam, new_opt_pose, new_opt_betas, \
            new_opt_joints3d, new_opt_joint_loss, opt_joint_loss = smplify_runner(
                pred_rotmat=pred_pose,
                pred_betas=pred_betas,
                pred_cam=pred_cam,
                j2d=norm_joints2d,
                device=device,
                batch_size=norm_joints2d.shape[0],
                pose2aa=False,
            )

            # update the parameters after refinement
            print(
                f'Update ratio after Temporal SMPLify: {update.sum()} / {norm_joints2d.shape[0]}'
            )
            pred_verts = pred_verts.cpu()
            pred_cam = pred_cam.cpu()
            pred_pose = pred_pose.cpu()
            pred_betas = pred_betas.cpu()
            pred_joints3d = pred_joints3d.cpu()
            pred_verts[update] = new_opt_vertices[update]
            pred_cam[update] = new_opt_cam[update]
            pred_pose[update] = new_opt_pose[update]
            pred_betas[update] = new_opt_betas[update]
            pred_joints3d[update] = new_opt_joints3d[update]

        elif args.run_smplify and args.tracking_method == 'bbox':
            print(
                '[WARNING] You need to enable pose tracking to run Temporal SMPLify algorithm!'
            )
            print('[WARNING] Continuing without running Temporal SMPLify!..')

        # ========= Save results to a pickle file ========= #
        pred_cam = pred_cam.cpu().numpy()
        pred_verts = pred_verts.cpu().numpy()
        pred_pose = pred_pose.cpu().numpy()
        pred_betas = pred_betas.cpu().numpy()
        pred_joints3d = pred_joints3d.cpu().numpy()

        # Runs 1 Euro Filter to smooth out the results
        if args.smooth:
            min_cutoff = args.smooth_min_cutoff  # 0.004
            beta = args.smooth_beta  # 1.5
            print(
                f'Running smoothing on person {person_id}, min_cutoff: {min_cutoff}, beta: {beta}'
            )
            pred_verts, pred_pose, pred_joints3d = smooth_pose(
                pred_pose, pred_betas, min_cutoff=min_cutoff, beta=beta)

        orig_cam = convert_crop_cam_to_orig_img(cam=pred_cam,
                                                bbox=bboxes,
                                                img_width=orig_width,
                                                img_height=orig_height)

        output_dict = {
            'pred_cam': pred_cam,
            'orig_cam': orig_cam,
            'verts': pred_verts,
            'pose': pred_pose,
            'betas': pred_betas,
            'joints3d': pred_joints3d,
            'joints2d': joints2d,
            'bboxes': bboxes,
            'frame_ids': frames,
        }
        # ========= Extract 3D joint feature for each frame ========= #
        list_val = []
        for i in range(len(output_dict['joints3d'])):
            list_val.append(output_dict['joints3d'][i].flatten().reshape(
                1, -1))

        input_df = pd.DataFrame(np.concatenate(list_val))
        input_df = input_df.round(2)
        predicted_classes = classification_model.predict_classes(input_df)
        output_df = pd.DataFrame(predicted_classes)
        # ========= Printing all possible poses detected for the video ========= #
        total_frames = len(output_df)
        print(
            '\nPrinting probabilities for yoga poses predicted in different frames.'
        )
        for i, v in output_df.value_counts().items():
            val = round((v / total_frames) * 100, 2)
            print('Probability of the yoga pose being ' +
                  inverse_map[i[0]].capitalize() + " is: " + str(val))
        print('\nThe yoga pose in the given video is: ' +
              inverse_map[output_df[0].value_counts().idxmax()].capitalize())
Esempio n. 16
0
def main(args):
    torch.cuda.set_device(args.gpu_id)
    device = torch.device(
        'cuda') if torch.cuda.is_available() else torch.device('cpu')

    print(f'Loading video list {args.video_list}')
    video_list = [l.strip() for l in open(args.video_list, 'r').readlines()]
    if len(video_list) < 1:
        print('No files were found in video list')
        return

    print('Loading VIBE model')
    # ========= Define VIBE model ========= #
    model = VIBE_Demo(
        seqlen=16,
        n_layers=2,
        hidden_size=1024,
        add_linear=True,
        use_residual=True,
    ).to(device)

    # ========= Load VIBE pretrained weights ========= #
    pretrained_file = download_ckpt(use_3dpw=False)
    ckpt = torch.load(pretrained_file)
    print(f'Performance of pretrained model on 3DPW: {ckpt["performance"]}')
    ckpt = ckpt['gen_state_dict']
    model.load_state_dict(ckpt, strict=False)
    model.eval()
    print(f'Loaded pretrained weights from \"{pretrained_file}\"')

    num_videos = len(video_list)
    print(f'Processing {num_videos} videos.')
    for video_idx, video_file in enumerate(video_list, start=1):
        if not osp.isfile(video_file):
            print(
                f'Input video \"{video_file}\" does not exist! Moving on to next file.'
            )
            continue

        filename = osp.splitext(osp.basename(video_file))[0]
        output_path = osp.join(args.output_folder, filename)
        os.makedirs(output_path, exist_ok=True)

        image_folder, num_frames, img_shape = video_to_images(video_file,
                                                              return_info=True)

        print(f'[{video_idx}/{num_videos}] Processing {num_frames} frames')
        orig_height, orig_width = img_shape[:2]

        # ========= Run tracking ========= #
        bbox_scale = 1.1
        if args.tracking_method == 'pose':
            if not osp.isabs(video_file):
                video_file = osp.join(os.getcwd(), video_file)
            tracking_results = run_posetracker(video_file,
                                               staf_folder=args.staf_dir,
                                               display=args.display)
        else:
            # run multi object tracker
            mot = MPT(
                device=device,
                batch_size=args.tracker_batch_size,
                display=args.display,
                detector_type=args.detector,
                output_format='dict',
                yolo_img_size=args.yolo_img_size,
            )
            tracking_results = mot(image_folder)

        # remove tracklets if num_frames is less than MIN_NUM_FRAMES
        for person_id in list(tracking_results.keys()):
            if tracking_results[person_id]['frames'].shape[0] < MIN_NUM_FRAMES:
                del tracking_results[person_id]

        # ========= Run VIBE on each person ========= #
        print(f'Running VIBE on each tracklet...')
        vibe_results = {}
        for person_id in tqdm(list(tracking_results.keys())):
            bboxes = joints2d = None

            if args.tracking_method == 'bbox':
                bboxes = tracking_results[person_id]['bbox']
            elif args.tracking_method == 'pose':
                joints2d = tracking_results[person_id]['joints2d']

            frames = tracking_results[person_id]['frames']

            dataset = Inference(
                image_folder=image_folder,
                frames=frames,
                bboxes=bboxes,
                joints2d=joints2d,
                scale=bbox_scale,
            )

            bboxes = dataset.bboxes
            frames = dataset.frames
            has_keypoints = True if joints2d is not None else False

            dataloader = DataLoader(dataset,
                                    batch_size=args.vibe_batch_size,
                                    num_workers=16)

            with torch.no_grad():

                pred_cam, pred_verts, pred_pose, pred_betas, pred_joints3d, norm_joints2d = [], [], [], [], [], []

                for batch in dataloader:
                    if has_keypoints:
                        batch, nj2d = batch
                        norm_joints2d.append(nj2d.numpy().reshape(-1, 21, 3))

                    batch = batch.unsqueeze(0)
                    batch = batch.to(device)

                    batch_size, seqlen = batch.shape[:2]
                    output = model(batch)[-1]

                    pred_cam.append(output['theta'][:, :, :3].reshape(
                        batch_size * seqlen, -1))
                    pred_verts.append(output['verts'].reshape(
                        batch_size * seqlen, -1, 3))
                    pred_pose.append(output['theta'][:, :, 3:75].reshape(
                        batch_size * seqlen, -1))
                    pred_betas.append(output['theta'][:, :, 75:].reshape(
                        batch_size * seqlen, -1))
                    pred_joints3d.append(output['kp_3d'].reshape(
                        batch_size * seqlen, -1, 3))

                pred_cam = torch.cat(pred_cam, dim=0)
                pred_verts = torch.cat(pred_verts, dim=0)
                pred_pose = torch.cat(pred_pose, dim=0)
                pred_betas = torch.cat(pred_betas, dim=0)
                pred_joints3d = torch.cat(pred_joints3d, dim=0)

                del batch

            # ========= [Optional] run Temporal SMPLify to refine the results ========= #
            if args.run_smplify and args.tracking_method == 'pose':
                norm_joints2d = np.concatenate(norm_joints2d, axis=0)
                norm_joints2d = convert_kps(norm_joints2d,
                                            src='staf',
                                            dst='spin')
                norm_joints2d = torch.from_numpy(norm_joints2d).float().to(
                    device)

                # Run Temporal SMPLify
                update, new_opt_vertices, new_opt_cam, new_opt_pose, new_opt_betas, \
                new_opt_joints3d, new_opt_joint_loss, opt_joint_loss = smplify_runner(
                    pred_rotmat=pred_pose,
                    pred_betas=pred_betas,
                    pred_cam=pred_cam,
                    j2d=norm_joints2d,
                    device=device,
                    batch_size=norm_joints2d.shape[0],
                    pose2aa=False,
                )

                # update the parameters after refinement
                print(
                    f'Update ratio after Temporal SMPLify: {update.sum()} / {norm_joints2d.shape[0]}'
                )
                pred_verts = pred_verts.cpu()
                pred_cam = pred_cam.cpu()
                pred_pose = pred_pose.cpu()
                pred_betas = pred_betas.cpu()
                pred_joints3d = pred_joints3d.cpu()
                pred_verts[update] = new_opt_vertices[update]
                pred_cam[update] = new_opt_cam[update]
                pred_pose[update] = new_opt_pose[update]
                pred_betas[update] = new_opt_betas[update]
                pred_joints3d[update] = new_opt_joints3d[update]

            elif args.run_smplify and args.tracking_method == 'bbox':
                print(
                    '[WARNING] You need to enable pose tracking to run Temporal SMPLify algorithm!'
                )
                print(
                    '[WARNING] Continuing without running Temporal SMPLify!..')

            # ========= Save results to a pickle file ========= #
            pred_cam = pred_cam.cpu().numpy()
            pred_verts = pred_verts.cpu().numpy()
            pred_pose = pred_pose.cpu().numpy()
            pred_betas = pred_betas.cpu().numpy()
            pred_joints3d = pred_joints3d.cpu().numpy()

            orig_cam = convert_crop_cam_to_orig_img(cam=pred_cam,
                                                    bbox=bboxes,
                                                    img_width=orig_width,
                                                    img_height=orig_height)

            output_dict = {
                'pred_cam': pred_cam,
                'orig_cam': orig_cam,
                'verts': pred_verts,
                'pose': pred_pose,
                'betas': pred_betas,
                'joints3d': pred_joints3d,
                'joints2d': joints2d,
                'bboxes': bboxes,
                'frame_ids': frames,
            }

            vibe_results[person_id] = output_dict

        # Clean-up the temporal folder
        shutil.rmtree(image_folder)

        # Save the outputs to joblib pkl file. File is loaded through joblib.load(pkl_path)
        output_pkl_path = osp.join(args.output_folder, f'{filename}.pkl')
        print(f'Saving output results to \"{output_pkl_path}\".')
        joblib.dump(vibe_results, output_pkl_path)

    # Clean-up after processing
    del model

    print('================= END =================')