Пример #1
0
def main(**args):
    data_folder = args.get('recording_dir')
    recording_name = osp.basename(args.get('recording_dir'))
    scene_name = recording_name.split("_")[0]
    base_dir = os.path.abspath(
        osp.join(args.get('recording_dir'), os.pardir, os.pardir))
    keyp_dir = osp.join(base_dir, 'keypoints')
    keyp_folder = osp.join(keyp_dir, recording_name)
    cam2world_dir = osp.join(base_dir, 'cam2world')
    scene_dir = osp.join(base_dir, 'scenes')
    calib_dir = osp.join(base_dir, 'calibration')
    sdf_dir = osp.join(base_dir, 'sdf')
    body_segments_dir = osp.join(base_dir, 'body_segments')

    output_folder = args.get('output_folder')
    output_folder = osp.expandvars(output_folder)
    output_folder = osp.join(output_folder, recording_name)
    if not osp.exists(output_folder):
        os.makedirs(output_folder)

    # Store the arguments for the current experiment
    conf_fn = osp.join(output_folder, 'conf.yaml')
    with open(conf_fn, 'w') as conf_file:
        yaml.dump(args, conf_file)
    #remove 'output_folder' from args list
    args.pop('output_folder')

    result_folder = args.pop('result_folder', 'results')
    result_folder = osp.join(output_folder, result_folder)
    if not osp.exists(result_folder):
        os.makedirs(result_folder)

    mesh_folder = args.pop('mesh_folder', 'meshes')
    mesh_folder = osp.join(output_folder, mesh_folder)
    if not osp.exists(mesh_folder):
        os.makedirs(mesh_folder)

    out_img_folder = osp.join(output_folder, 'images')
    if not osp.exists(out_img_folder):
        os.makedirs(out_img_folder)

    body_scene_rendering_dir = os.path.join(output_folder, 'renderings')
    if not osp.exists(body_scene_rendering_dir):
        os.mkdir(body_scene_rendering_dir)

    float_dtype = args['float_dtype']
    if float_dtype == 'float64':
        dtype = torch.float64
    elif float_dtype == 'float32':
        dtype = torch.float64
    else:
        print('Unknown float type {}, exiting!'.format(float_dtype))
        sys.exit(-1)

    use_cuda = args.get('use_cuda', True)
    if use_cuda and not torch.cuda.is_available():
        print('CUDA is not available, exiting!')
        sys.exit(-1)

    img_folder = args.pop('img_folder', 'Color')
    dataset_obj = create_dataset(img_folder=img_folder,
                                 data_folder=data_folder,
                                 keyp_folder=keyp_folder,
                                 calib_dir=calib_dir,
                                 **args)

    start = time.time()

    input_gender = args.pop('gender', 'neutral')
    gender_lbl_type = args.pop('gender_lbl_type', 'none')
    max_persons = args.pop('max_persons', -1)

    float_dtype = args.get('float_dtype', 'float32')
    if float_dtype == 'float64':
        dtype = torch.float64
    elif float_dtype == 'float32':
        dtype = torch.float32
    else:
        raise ValueError('Unknown float type {}, exiting!'.format(float_dtype))

    joint_mapper = JointMapper(dataset_obj.get_model2data())

    model_params = dict(model_path=args.get('model_folder'),
                        joint_mapper=joint_mapper,
                        create_global_orient=True,
                        create_body_pose=not args.get('use_vposer'),
                        create_betas=True,
                        create_left_hand_pose=True,
                        create_right_hand_pose=True,
                        create_expression=True,
                        create_jaw_pose=True,
                        create_leye_pose=True,
                        create_reye_pose=True,
                        create_transl=True,
                        dtype=dtype,
                        **args)

    male_model = smplx.create(gender='male', **model_params)
    # SMPL-H has no gender-neutral model
    if args.get('model_type') != 'smplh':
        neutral_model = smplx.create(gender='neutral', **model_params)
    female_model = smplx.create(gender='female', **model_params)

    # Create the camera object
    camera_center = None \
        if args.get('camera_center_x') is None or args.get('camera_center_y') is None \
        else torch.tensor([args.get('camera_center_x'), args.get('camera_center_y')], dtype=dtype).view(-1, 2)
    camera = create_camera(focal_length_x=args.get('focal_length_x'),
                           focal_length_y=args.get('focal_length_y'),
                           center=camera_center,
                           batch_size=args.get('batch_size'),
                           dtype=dtype)

    if hasattr(camera, 'rotation'):
        camera.rotation.requires_grad = False

    use_hands = args.get('use_hands', True)
    use_face = args.get('use_face', True)

    body_pose_prior = create_prior(prior_type=args.get('body_prior_type'),
                                   dtype=dtype,
                                   **args)

    jaw_prior, expr_prior = None, None
    if use_face:
        jaw_prior = create_prior(prior_type=args.get('jaw_prior_type'),
                                 dtype=dtype,
                                 **args)
        expr_prior = create_prior(prior_type=args.get('expr_prior_type', 'l2'),
                                  dtype=dtype,
                                  **args)

    left_hand_prior, right_hand_prior = None, None
    if use_hands:
        lhand_args = args.copy()
        lhand_args['num_gaussians'] = args.get('num_pca_comps')
        left_hand_prior = create_prior(
            prior_type=args.get('left_hand_prior_type'),
            dtype=dtype,
            use_left_hand=True,
            **lhand_args)

        rhand_args = args.copy()
        rhand_args['num_gaussians'] = args.get('num_pca_comps')
        right_hand_prior = create_prior(
            prior_type=args.get('right_hand_prior_type'),
            dtype=dtype,
            use_right_hand=True,
            **rhand_args)

    shape_prior = create_prior(prior_type=args.get('shape_prior_type', 'l2'),
                               dtype=dtype,
                               **args)

    angle_prior = create_prior(prior_type='angle', dtype=dtype)

    if use_cuda and torch.cuda.is_available():
        device = torch.device('cuda')

        camera = camera.to(device=device)
        female_model = female_model.to(device=device)
        male_model = male_model.to(device=device)
        if args.get('model_type') != 'smplh':
            neutral_model = neutral_model.to(device=device)
        body_pose_prior = body_pose_prior.to(device=device)
        angle_prior = angle_prior.to(device=device)
        shape_prior = shape_prior.to(device=device)
        if use_face:
            expr_prior = expr_prior.to(device=device)
            jaw_prior = jaw_prior.to(device=device)
        if use_hands:
            left_hand_prior = left_hand_prior.to(device=device)
            right_hand_prior = right_hand_prior.to(device=device)
    else:
        device = torch.device('cpu')

    # A weight for every joint of the model
    joint_weights = dataset_obj.get_joint_weights().to(device=device,
                                                       dtype=dtype)
    # Add a fake batch dimension for broadcasting
    joint_weights.unsqueeze_(dim=0)

    for idx, data in enumerate(dataset_obj):

        img = data['img']
        fn = data['fn']
        keypoints = data['keypoints']
        depth_im = data['depth_im']
        mask = data['mask']
        init_trans = None if data['init_trans'] is None else torch.tensor(
            data['init_trans'], dtype=dtype).view(-1, 3)
        scan = data['scan_dict']
        print('Processing: {}'.format(data['img_path']))

        curr_result_folder = osp.join(result_folder, fn)
        if not osp.exists(curr_result_folder):
            os.makedirs(curr_result_folder)
        curr_mesh_folder = osp.join(mesh_folder, fn)
        if not osp.exists(curr_mesh_folder):
            os.makedirs(curr_mesh_folder)
        #TODO: SMPLifyD and PROX won't work for multiple persons
        for person_id in range(keypoints.shape[0]):
            if person_id >= max_persons and max_persons > 0:
                continue

            curr_result_fn = osp.join(curr_result_folder,
                                      '{:03d}.pkl'.format(person_id))
            curr_mesh_fn = osp.join(curr_mesh_folder,
                                    '{:03d}.ply'.format(person_id))
            curr_body_scene_rendering_fn = osp.join(body_scene_rendering_dir,
                                                    fn + '.png')

            curr_img_folder = osp.join(output_folder, 'images', fn,
                                       '{:03d}'.format(person_id))
            if not osp.exists(curr_img_folder):
                os.makedirs(curr_img_folder)

            if gender_lbl_type != 'none':
                if gender_lbl_type == 'pd' and 'gender_pd' in data:
                    gender = data['gender_pd'][person_id]
                if gender_lbl_type == 'gt' and 'gender_gt' in data:
                    gender = data['gender_gt'][person_id]
            else:
                gender = input_gender

            if gender == 'neutral':
                body_model = neutral_model
            elif gender == 'female':
                body_model = female_model
            elif gender == 'male':
                body_model = male_model

            out_img_fn = osp.join(curr_img_folder, 'output.png')

            fit_single_frame(
                img,
                keypoints[[person_id]],
                init_trans,
                scan,
                cam2world_dir=cam2world_dir,
                scene_dir=scene_dir,
                sdf_dir=sdf_dir,
                body_segments_dir=body_segments_dir,
                scene_name=scene_name,
                body_model=body_model,
                camera=camera,
                joint_weights=joint_weights,
                dtype=dtype,
                output_folder=output_folder,
                result_folder=curr_result_folder,
                out_img_fn=out_img_fn,
                result_fn=curr_result_fn,
                mesh_fn=curr_mesh_fn,
                body_scene_rendering_fn=curr_body_scene_rendering_fn,
                shape_prior=shape_prior,
                expr_prior=expr_prior,
                body_pose_prior=body_pose_prior,
                left_hand_prior=left_hand_prior,
                right_hand_prior=right_hand_prior,
                jaw_prior=jaw_prior,
                angle_prior=angle_prior,
                **args)

    elapsed = time.time() - start
    time_msg = time.strftime('%H hours, %M minutes, %S seconds',
                             time.gmtime(elapsed))
    print('Processing the data took: {}'.format(time_msg))
Пример #2
0
def main(**args):
    output_folder = args.pop('output_folder')
    output_folder = osp.expandvars(output_folder)
    if not osp.exists(output_folder):
        os.makedirs(output_folder)

    # Store the arguments for the current experiment
    conf_fn = osp.join(output_folder, 'conf.yaml')
    with open(conf_fn, 'w') as conf_file:
        yaml.dump(args, conf_file)

    result_folder = args.pop('result_folder', 'results')
    result_folder = osp.join(output_folder, result_folder)
    if not osp.exists(result_folder):
        os.makedirs(result_folder)

    mesh_folder = args.pop('mesh_folder', 'meshes')
    mesh_folder = osp.join(output_folder, mesh_folder)
    if not osp.exists(mesh_folder):
        os.makedirs(mesh_folder)

    out_img_folder = osp.join(output_folder, 'images')
    if not osp.exists(out_img_folder):
        os.makedirs(out_img_folder)

    float_dtype = args['float_dtype']
    if float_dtype == 'float64':
        dtype = torch.float64
    elif float_dtype == 'float32':
        dtype = torch.float64
    else:
        print('Unknown float type {}, exiting!'.format(float_dtype))
        sys.exit(-1)

    use_cuda = args.get('use_cuda', True)
    if use_cuda and not torch.cuda.is_available():
        print('CUDA is not available, exiting!')
        sys.exit(-1)

    img_folder = args.pop('img_folder', 'images')
    dataset_obj = create_dataset(img_folder=img_folder, **args)

    start = time.time()

    input_gender = args.pop('gender', 'neutral')
    gender_lbl_type = args.pop('gender_lbl_type', 'none')
    max_persons = args.pop('max_persons', -1)

    float_dtype = args.get('float_dtype', 'float32')
    if float_dtype == 'float64':
        dtype = torch.float64
    elif float_dtype == 'float32':
        dtype = torch.float32
    else:
        raise ValueError('Unknown float type {}, exiting!'.format(float_dtype))

    joint_mapper = JointMapper(dataset_obj.get_model2data())

    model_params = dict(model_path=args.get('model_folder'),
                        joint_mapper=joint_mapper,
                        create_global_orient=True,
                        create_body_pose=not args.get('use_vposer'),
                        create_betas=True,
                        create_left_hand_pose=True,
                        create_right_hand_pose=True,
                        create_expression=True,
                        create_jaw_pose=True,
                        create_leye_pose=True,
                        create_reye_pose=True,
                        create_transl=False,
                        dtype=dtype,
                        **args)

    male_model = smplx.create(gender='male', **model_params)
    # SMPL-H has no gender-neutral model
    if args.get('model_type') != 'smplh':
        neutral_model = smplx.create(gender='neutral', **model_params)
    female_model = smplx.create(gender='female', **model_params)

    # Create the camera object
    focal_length = args.get('focal_length')
    camera = create_camera(focal_length_x=focal_length,
                           focal_length_y=focal_length,
                           dtype=dtype,
                           **args)

    if hasattr(camera, 'rotation'):
        camera.rotation.requires_grad = False

    use_hands = args.get('use_hands', True)
    use_face = args.get('use_face', True)

    body_pose_prior = create_prior(prior_type=args.get('body_prior_type'),
                                   dtype=dtype,
                                   **args)

    jaw_prior, expr_prior = None, None
    if use_face:
        jaw_prior = create_prior(prior_type=args.get('jaw_prior_type'),
                                 dtype=dtype,
                                 **args)
        expr_prior = create_prior(prior_type=args.get('expr_prior_type', 'l2'),
                                  dtype=dtype,
                                  **args)

    left_hand_prior, right_hand_prior = None, None
    if use_hands:
        lhand_args = args.copy()
        lhand_args['num_gaussians'] = args.get('num_pca_comps')
        left_hand_prior = create_prior(
            prior_type=args.get('left_hand_prior_type'),
            dtype=dtype,
            use_left_hand=True,
            **lhand_args)

        rhand_args = args.copy()
        rhand_args['num_gaussians'] = args.get('num_pca_comps')
        right_hand_prior = create_prior(
            prior_type=args.get('right_hand_prior_type'),
            dtype=dtype,
            use_right_hand=True,
            **rhand_args)

    shape_prior = create_prior(prior_type=args.get('shape_prior_type', 'l2'),
                               dtype=dtype,
                               **args)

    angle_prior = create_prior(prior_type='angle', dtype=dtype)

    if use_cuda and torch.cuda.is_available():
        device = torch.device('cuda')

        camera = camera.to(device=device)
        female_model = female_model.to(device=device)
        male_model = male_model.to(device=device)
        if args.get('model_type') != 'smplh':
            neutral_model = neutral_model.to(device=device)
        body_pose_prior = body_pose_prior.to(device=device)
        angle_prior = angle_prior.to(device=device)
        shape_prior = shape_prior.to(device=device)
        if use_face:
            expr_prior = expr_prior.to(device=device)
            jaw_prior = jaw_prior.to(device=device)
        if use_hands:
            left_hand_prior = left_hand_prior.to(device=device)
            right_hand_prior = right_hand_prior.to(device=device)
    else:
        device = torch.device('cpu')

    # A weight for every joint of the model
    joint_weights = dataset_obj.get_joint_weights().to(device=device,
                                                       dtype=dtype)
    # Add a fake batch dimension for broadcasting
    joint_weights.unsqueeze_(dim=0)

    for idx, data in enumerate(dataset_obj):

        img = data['img']
        fn = data['fn']
        keypoints = data['keypoints']
        print('Processing: {}'.format(data['img_path']))

        curr_result_folder = osp.join(result_folder, fn)
        if not osp.exists(curr_result_folder):
            os.makedirs(curr_result_folder)
        curr_mesh_folder = osp.join(mesh_folder, fn)
        if not osp.exists(curr_mesh_folder):
            os.makedirs(curr_mesh_folder)
        for person_id in range(keypoints.shape[0]):
            if person_id >= max_persons and max_persons > 0:
                continue

            curr_result_fn = osp.join(curr_result_folder,
                                      '{:03d}.pkl'.format(person_id))
            curr_mesh_fn = osp.join(curr_mesh_folder,
                                    '{:03d}.obj'.format(person_id))

            curr_img_folder = osp.join(output_folder, 'images', fn,
                                       '{:03d}'.format(person_id))
            if not osp.exists(curr_img_folder):
                os.makedirs(curr_img_folder)

            if gender_lbl_type != 'none':
                if gender_lbl_type == 'pd' and 'gender_pd' in data:
                    gender = data['gender_pd'][person_id]
                if gender_lbl_type == 'gt' and 'gender_gt' in data:
                    gender = data['gender_gt'][person_id]
            else:
                gender = input_gender

            if gender == 'neutral':
                body_model = neutral_model
            elif gender == 'female':
                body_model = female_model
            elif gender == 'male':
                body_model = male_model

            try:
                out_img_fn = osp.join(curr_img_folder,
                                      '{:06d}.png'.format(int(fn)))
            except:
                out_img_fn = osp.join(curr_img_folder, 'output.png')

            fit_single_frame(img,
                             keypoints[[person_id]],
                             body_model=body_model,
                             camera=camera,
                             joint_weights=joint_weights,
                             dtype=dtype,
                             output_folder=output_folder,
                             result_folder=curr_result_folder,
                             out_img_fn=out_img_fn,
                             result_fn=curr_result_fn,
                             mesh_fn=curr_mesh_fn,
                             shape_prior=shape_prior,
                             expr_prior=expr_prior,
                             body_pose_prior=body_pose_prior,
                             left_hand_prior=left_hand_prior,
                             right_hand_prior=right_hand_prior,
                             jaw_prior=jaw_prior,
                             angle_prior=angle_prior,
                             **args)

    elapsed = time.time() - start
    time_msg = time.strftime('%H hours, %M minutes, %S seconds',
                             time.gmtime(elapsed))
    print('Processing the data took: {}'.format(time_msg))
Пример #3
0
def init(**kwarg):

    setting = {}
    # create folder
    output_folder = kwarg.pop('output_folder')
    output_folder = osp.expandvars(output_folder)
    if not osp.exists(output_folder):
        os.makedirs(output_folder)

    # Store the arguments for the current experiment
    conf_fn = osp.join(output_folder, 'conf.yaml')
    with open(conf_fn, 'w') as conf_file:
        yaml.dump(kwarg, conf_file)

    result_folder = kwarg.pop('result_folder', 'results')
    result_folder = osp.join(output_folder, result_folder)
    if not osp.exists(result_folder):
        os.makedirs(result_folder)

    mesh_folder = kwarg.pop('mesh_folder', 'meshes')
    mesh_folder = osp.join(output_folder, mesh_folder)
    if not osp.exists(mesh_folder):
        os.makedirs(mesh_folder)

    out_img_folder = osp.join(output_folder, 'images')
    if not osp.exists(out_img_folder):
        os.makedirs(out_img_folder)

    # assert cuda is available
    use_cuda = kwarg.get('use_cuda', True)
    if use_cuda and not torch.cuda.is_available():
        print('CUDA is not available, exiting!')
        sys.exit(-1)

    #read gender
    input_gender = kwarg.pop('gender', 'neutral')
    model_type = kwarg.get('model_type')
    if model_type == 'smpllsp':
        assert(input_gender=='neutral'), 'smpl-lsp model support neutral only'
    gender_lbl_type = kwarg.pop('gender_lbl_type', 'none')

    if model_type == 'smpllsp':
        # the hip joint of smpl is different with 2D annotation predicted by openpose/alphapose, so we use smpl-lsp model to replace
        pose_format = 'lsp14' 
    else:
        pose_format = 'coco17'

    dataset_obj = create_dataset(pose_format=pose_format, **kwarg)

    float_dtype = kwarg.get('float_dtype', 'float32')
    if float_dtype == 'float64':
        dtype = torch.float64
    elif float_dtype == 'float32':
        dtype = torch.float32
    else:
        raise ValueError('Unknown float type {}, exiting!'.format(float_dtype))

    # map smpl joints to 2D keypoints
    joint_mapper = JointMapper(dataset_obj.get_model2data())

    model_params = dict(model_path=kwarg.get('model_folder'),
                        joint_mapper=joint_mapper,
                        create_global_orient=True,
                        create_body_pose=not kwarg.get('use_vposer'),
                        create_betas=True,
                        create_left_hand_pose=False,
                        create_right_hand_pose=False,
                        create_expression=False,
                        create_jaw_pose=False,
                        create_leye_pose=False,
                        create_reye_pose=False,
                        create_transl=True, #set transl in multi-view task  --Buzhen Huang 07/31/2019
                        create_scale=True,
                        dtype=dtype,
                        **kwarg)

    model = smplx.create_scale(gender=input_gender, **model_params)

    # load camera parameters
    cam_params = kwarg.pop('cam_param')
    extris, intris = load_camera_para(cam_params)
    trans, rot = get_rot_trans(extris, photoscan=False)


    # Create the camera object
    # create camera
    views = len(extris)
    camera = []
    for v in range(views):
        focal_length = float(intris[v][0][0])
        rotate = torch.tensor(rot[v],dtype=dtype).unsqueeze(0)
        translation = torch.tensor(trans[v],dtype=dtype).unsqueeze(0)
        center = torch.tensor(intris[v][:2,2],dtype=dtype).unsqueeze(0)
        camera_t = create_camera(focal_length_x=focal_length,
                            focal_length_y=focal_length,
                            translation=translation,
                            rotation=rotate,
                            center=center,
                            dtype=dtype,
                            **kwarg)
        camera.append(camera_t)

    # fix rotation and translation of camera
    for cam in camera:
        if hasattr(cam, 'rotation'):
            cam.rotation.requires_grad = False
        if hasattr(cam, 'translation'):
            cam.translation.requires_grad = False

    # create prior
    body_pose_prior = create_prior(
        prior_type=kwarg.get('body_prior_type'),
        dtype=dtype,
        **kwarg)
    shape_prior = create_prior(
        prior_type=kwarg.get('shape_prior_type', 'l2'),
        dtype=dtype, **kwarg)
    angle_prior = create_prior(prior_type='angle', dtype=dtype)

    if use_cuda and torch.cuda.is_available():
        device = torch.device('cuda')

        for cam in camera:
            cam = cam.to(device=device)
        model = model.to(device=device)
        body_pose_prior = body_pose_prior.to(device=device)
        angle_prior = angle_prior.to(device=device)
        shape_prior = shape_prior.to(device=device)
    else:
        device = torch.device('cpu')
    
    # A weight for every joint of the model
    joint_weights = dataset_obj.get_joint_weights().to(device=device,
                                                       dtype=dtype)
    # Add a fake batch dimension for broadcasting
    joint_weights.unsqueeze_(dim=0)

    # load vposer
    vposer = None
    pose_embedding = None
    batch_size = 1
    if kwarg.get('use_vposer'):
        vposer_ckpt = osp.expandvars(kwarg.get('prior_folder'))
        vposer = load_vposer(vposer_ckpt, vp_model='snapshot')
        vposer = vposer.to(device=device)
        vposer.eval()
        pose_embedding = torch.zeros([batch_size, 32],
                                     dtype=dtype, device=device,
                                     requires_grad=True)

    # process fixed parameters
    setting['fix_scale'] = kwarg.get('fix_scale')
    if kwarg.get('fix_scale'):
        setting['fixed_scale'] = np.array(kwarg.get('scale'))
    else:
        setting['fixed_scale'] = None
    if kwarg.get('fix_shape'):
        setting['fixed_shape'] = np.array(kwarg.get('shape'))
    else:
        setting['fixed_shape'] = None

    # return setting
    setting['use_3d'] = kwarg.pop("use_3d")
    setting['extrinsics'] = extris
    setting['intrinsics'] = intris
    setting['model'] = model
    setting['dtype'] = dtype
    setting['device'] = device
    setting['vposer'] = vposer
    setting['joints_weight'] = joint_weights
    setting['body_pose_prior'] = body_pose_prior
    setting['shape_prior'] = shape_prior
    setting['angle_prior'] = angle_prior
    setting['cameras'] = camera
    setting['img_folder'] = out_img_folder
    setting['result_folder'] = result_folder
    setting['mesh_folder'] = mesh_folder
    setting['pose_embedding'] = pose_embedding
    setting['batch_size'] = batch_size
    return dataset_obj, setting
Пример #4
0
def configure(**args):
    output_folder = args.pop('output_folder')
    output_folder = osp.expandvars(output_folder)
    if not osp.exists(output_folder):
        os.makedirs(output_folder)

    # Store the arguments for the current experiment
    conf_fn = osp.join(output_folder, 'conf.yaml')
    with open(conf_fn, 'w') as conf_file:
        yaml.dump(args, conf_file)

    result_folder = args.pop('result_folder', 'results')
    result_folder = osp.join(output_folder, result_folder)
    if not osp.exists(result_folder):
        os.makedirs(result_folder)

    mesh_folder = args.pop('mesh_folder', 'meshes')
    mesh_folder = osp.join(output_folder, mesh_folder)
    if not osp.exists(mesh_folder):
        os.makedirs(mesh_folder)

    out_img_folder = osp.join(output_folder, 'images')
    if not osp.exists(out_img_folder):
        os.makedirs(out_img_folder)

    float_dtype = args['float_dtype']
    if float_dtype == 'float64':
        dtype = torch.float64
    elif float_dtype == 'float32':
        dtype = torch.float64
    else:
        print('Unknown float type {}, exiting!'.format(float_dtype))
        sys.exit(-1)

    use_cuda = args.get('use_cuda', True)
    if use_cuda and not torch.cuda.is_available():
        print('CUDA is not available, exiting!')
        sys.exit(-1)
    else:
        print("no cuda")

    # Creates a dataset with a non existing folder, is just used for other configuration
    img_folder = args.pop('img_folder', 'images')
    dataset_obj = create_dataset(img_folder='images', **args)

    input_gender = args.pop('gender', 'neutral')
    gender_lbl_type = args.pop('gender_lbl_type', 'none')
    max_persons = args.pop('max_persons', -1)

    float_dtype = args.get('float_dtype', 'float32')
    if float_dtype == 'float64':
        dtype = torch.float64
    elif float_dtype == 'float32':
        dtype = torch.float32
    else:
        raise ValueError('Unknown float type {}, exiting!'.format(float_dtype))

    joint_mapper = JointMapper(dataset_obj.get_model2data())

    model_params = dict(model_path=args.get('model_folder'),
                        joint_mapper=joint_mapper,
                        create_global_orient=True,
                        create_body_pose=not args.get('use_vposer'),
                        create_betas=True,
                        create_left_hand_pose=True,
                        create_right_hand_pose=True,
                        create_expression=True,
                        create_jaw_pose=True,
                        create_leye_pose=True,
                        create_reye_pose=True,
                        create_transl=False,
                        dtype=dtype,
                        **args)

    male_model = smplx.create(gender='male', **model_params)
    # SMPL-H has no gender-neutral model
    if args.get('model_type') != 'smplh':
        neutral_model = smplx.create(gender='neutral', **model_params)
    female_model = smplx.create(gender='female', **model_params)

    # Create the camera object
    focal_length = args.get('focal_length')
    camera = create_camera(focal_length_x=focal_length,
                           focal_length_y=focal_length,
                           dtype=dtype,
                           **args)

    if hasattr(camera, 'rotation'):
        camera.rotation.requires_grad = False

    use_hands = args.get('use_hands', True)
    use_face = args.get('use_face', True)

    body_pose_prior = create_prior(prior_type=args.get('body_prior_type'),
                                   dtype=dtype,
                                   **args)

    jaw_prior, expr_prior = None, None
    if use_face:
        jaw_prior = create_prior(prior_type=args.get('jaw_prior_type'),
                                 dtype=dtype,
                                 **args)
        expr_prior = create_prior(prior_type=args.get('expr_prior_type', 'l2'),
                                  dtype=dtype,
                                  **args)

    left_hand_prior, right_hand_prior = None, None
    if use_hands:
        lhand_args = args.copy()
        lhand_args['num_gaussians'] = args.get('num_pca_comps')
        left_hand_prior = create_prior(
            prior_type=args.get('left_hand_prior_type'),
            dtype=dtype,
            use_left_hand=True,
            **lhand_args)

        rhand_args = args.copy()
        rhand_args['num_gaussians'] = args.get('num_pca_comps')
        right_hand_prior = create_prior(
            prior_type=args.get('right_hand_prior_type'),
            dtype=dtype,
            use_right_hand=True,
            **rhand_args)

    shape_prior = create_prior(prior_type=args.get('shape_prior_type', 'l2'),
                               dtype=dtype,
                               **args)

    angle_prior = create_prior(prior_type='angle', dtype=dtype)

    if use_cuda and torch.cuda.is_available():
        device = torch.device('cuda')

        camera = camera.to(device=device)
        female_model = female_model.to(device=device)
        male_model = male_model.to(device=device)
        if args.get('model_type') != 'smplh':
            neutral_model = neutral_model.to(device=device)
        body_pose_prior = body_pose_prior.to(device=device)
        angle_prior = angle_prior.to(device=device)
        shape_prior = shape_prior.to(device=device)
        if use_face:
            expr_prior = expr_prior.to(device=device)
            jaw_prior = jaw_prior.to(device=device)
        if use_hands:
            left_hand_prior = left_hand_prior.to(device=device)
            right_hand_prior = right_hand_prior.to(device=device)
    else:
        device = torch.device('cpu')

    # A weight for every joint of the model
    joint_weights = dataset_obj.get_joint_weights().to(device=device,
                                                       dtype=dtype)
    # Add a fake batch dimension for broadcasting
    joint_weights.unsqueeze_(dim=0)

    return {
        'neutral_model': neutral_model,
        'camera': camera,
        'joint_weights': joint_weights,
        'body_pose_prior': body_pose_prior,
        'jaw_prior': jaw_prior,
        'left_hand_prior': left_hand_prior,
        'right_hand_prior': right_hand_prior,
        'shape_prior': shape_prior,
        'expr_prior': expr_prior,
        'angle_prior': angle_prior
    }