def val(net, val_dataset, predictions_name, name_dataset):
    if name_dataset == "Lip":
        evaluate(val_dataset, predictions_name, net)
        pck = calc_pckh(val_dataset.labels_file_path, predictions_name)
        val_loss = 100 - pck[-1][-1]
    elif name_dataset == "CocoSingle":
        coco_evaluate(val_dataset, predictions_name, net)
        ap_metric = run_coco_eval(
            os.path.join(val_dataset._dataset_folder, 'annotations',
                         'person_keypoints_val2017.json'), predictions_name)
        val_loss = 100 - ap_metric[0] * 100
    else:
        raise RuntimeError("Unknown dataset.")

    return val_loss
def train(images_folder,
          num_refinement_stages,
          base_lr,
          batch_size,
          batches_per_iter,
          num_workers,
          checkpoint_path,
          weights_only,
          from_mobilenet,
          checkpoints_folder,
          log_after,
          checkpoint_after,
          num_kps,
          finetune=False):
    net = SinglePersonPoseEstimationWithMobileNet(
        num_refinement_stages=num_refinement_stages,
        num_heatmaps=num_kps + 1).cuda()
    stride = 8
    sigma = 7
    # num of kps is default 16 ,+bg=17
    # the img size is arbitrary , flip may not need
    data_flag = "real" if images_folder.split(
        "/")[-1] == "data_lip" else "anime"
    train_log = get_logger(checkpoints_folder, cmd_stream=True)

    if data_flag == "real":
        dataset = LipTrainDataset(images_folder,
                                  stride,
                                  sigma,
                                  transform=transforms.Compose([
                                      SinglePersonBodyMasking(),
                                      ChannelPermutation(),
                                      SinglePersonRotate(pad=(128, 128, 128),
                                                         max_rotate_degree=40),
                                      SinglePersonCropPad(pad=(128, 128, 128),
                                                          crop_x=256,
                                                          crop_y=256),
                                      SinglePersonFlip()
                                  ]))
    else:
        dataset = AnimeTrainDataset(
            images_folder,
            stride,
            sigma,
            transform=transforms.Compose([
                SinglePersonBodyMasking(),
                ChannelPermutation(),
                SinglePersonRotate(pad=(128, 128, 128), max_rotate_degree=40),
                SinglePersonCropPad(pad=(128, 128, 128),
                                    crop_x=256,
                                    crop_y=256)
            ]))
    # b=32 default
    train_loader = DataLoader(dataset,
                              batch_size=batch_size,
                              shuffle=True,
                              num_workers=num_workers)

    backbone_p = [{
        'params': get_parameters_conv(net.model, 'weight')
    }, {
        'params': get_parameters_conv_depthwise(net.model, 'weight'),
        'weight_decay': 0
    }, {
        'params': get_parameters_bn(net.model, 'weight'),
        'weight_decay': 0
    }, {
        'params': get_parameters_bn(net.model, 'bias'),
        'lr': base_lr * 2,
        'weight_decay': 0
    }]
    cpm_p = [{
        'params': get_parameters_conv(net.cpm, 'weight'),
        'lr': base_lr
    }, {
        'params': get_parameters_conv(net.cpm, 'bias'),
        'lr': base_lr * 2,
        'weight_decay': 0
    }, {
        'params': get_parameters_conv_depthwise(net.cpm, 'weight'),
        'weight_decay': 0
    }]
    initial_p = [{
        'params': get_parameters_conv(net.initial_stage, 'weight'),
        'lr': base_lr
    }, {
        'params': get_parameters_conv(net.initial_stage, 'bias'),
        'lr': base_lr * 2,
        'weight_decay': 0
    }, {
        'params': get_parameters_bn(net.initial_stage, 'weight'),
        'weight_decay': 0
    }, {
        'params': get_parameters_bn(net.initial_stage, 'bias'),
        'lr': base_lr * 2,
        'weight_decay': 0
    }]
    refine_p = [{
        'params': get_parameters_conv(net.refinement_stages, 'weight'),
        'lr': base_lr * 4
    }, {
        'params': get_parameters_conv(net.refinement_stages, 'bias'),
        'lr': base_lr * 8,
        'weight_decay': 0
    }, {
        'params': get_parameters_bn(net.refinement_stages, 'weight'),
        'weight_decay': 0
    }, {
        'params': get_parameters_bn(net.refinement_stages, 'bias'),
        'lr': base_lr * 2,
        'weight_decay': 0
    }]
    opt_p = []
    #TODO modify params needed update above and change the model structure.
    if not finetune:
        opt_p += backbone_p
    opt_p += cpm_p
    opt_p += initial_p
    opt_p += refine_p
    optimizer = optim.Adam(opt_p, lr=base_lr, weight_decay=5e-4)

    num_iter = 0
    current_epoch = 0
    scheduler = optim.lr_scheduler.ReduceLROnPlateau(optimizer,
                                                     factor=0.1,
                                                     patience=5,
                                                     threshold=1e-2,
                                                     verbose=True)
    if checkpoint_path:
        checkpoint = torch.load(checkpoint_path)

        if from_mobilenet:
            load_from_mobilenet(net, checkpoint)
        else:
            load_state(net, checkpoint)
            if not weights_only:
                optimizer.load_state_dict(checkpoint['optimizer'])
                scheduler.load_state_dict(checkpoint['scheduler'])
                num_iter = checkpoint['iter']
                num_iter = num_iter // log_after * log_after  # round iterations, to print proper loss when resuming
                current_epoch = checkpoint['current_epoch'] + 1

    net = DataParallel(net, device_ids=[0])
    net.train()
    for epochId in range(current_epoch, 100):
        train_log.debug('Epoch: {}'.format(epochId))
        net.train()
        total_losses = [0] * (num_refinement_stages + 1
                              )  # heatmaps loss per stage
        batch_per_iter_idx = 0
        for batch_data in train_loader:
            if batch_per_iter_idx == 0:
                optimizer.zero_grad()

            images = batch_data['image'].cuda()
            keypoint_maps = batch_data['keypoint_maps'].cuda()

            stages_output = net(images)

            losses = []
            # guess to update the init stage + refinement stages
            for loss_idx in range(len(total_losses)):
                losses.append(
                    l2_loss(stages_output[loss_idx], keypoint_maps,
                            images.shape[0]))
                total_losses[loss_idx] += losses[-1].item() / batches_per_iter

            loss = losses[0]
            for loss_idx in range(1, len(losses)):
                loss += losses[loss_idx]
            loss /= batches_per_iter
            loss.backward()
            batch_per_iter_idx += 1
            if batch_per_iter_idx == batches_per_iter:
                optimizer.step()
                batch_per_iter_idx = 0
                num_iter += 1
            else:
                continue
            #per 100 iter
            if num_iter % log_after == 0:
                train_log.debug('Iter: {}'.format(num_iter))
                for loss_idx in range(len(total_losses)):
                    train_log.debug('\n'.join([
                        'stage{}_heatmaps_loss: {}'
                    ]).format(loss_idx + 1,
                              total_losses[loss_idx] / log_after))
                for loss_idx in range(len(total_losses)):
                    total_losses[loss_idx] = 0

        snapshot_name = '{}/checkpoint_last_epoch.pth'.format(
            checkpoints_folder)
        torch.save(
            {
                'state_dict': net.module.state_dict(),
                'optimizer': optimizer.state_dict(),
                'scheduler': scheduler.state_dict(),
                'iter': num_iter,
                'current_epoch': epochId
            }, snapshot_name)
        if (epochId + 1) % checkpoint_after == 0:
            snapshot_name = '{}/checkpoint_epoch_{}.pth'.format(
                checkpoints_folder, epochId)
            torch.save(
                {
                    'state_dict': net.module.state_dict(),
                    'optimizer': optimizer.state_dict(),
                    'scheduler': scheduler.state_dict(),
                    'iter': num_iter,
                    'current_epoch': epochId
                }, snapshot_name)
        train_log.debug('Validation...')
        net.eval()
        eval_num = 1000
        if data_flag == "real":
            val_dataset = LipValDataset(images_folder, eval_num)
        else:
            val_dataset = AnimeValDataset(images_folder, eval_num)
        predictions_name = '{}/val_results.csv'.format(checkpoints_folder)
        evaluate(val_dataset, predictions_name, net, num_kps=num_kps)
        pck = calc_pckh(val_dataset.labels_file_path,
                        predictions_name,
                        eval_num=eval_num)

        val_loss = 100 - pck[-1][-1]  # 100 - avg_pckh
        train_log.debug('Val loss: {}'.format(val_loss))
        scheduler.step(val_loss, epochId)
Beispiel #3
0
    parser = argparse.ArgumentParser()
    parser.add_argument('--dataset-folder',
                        type=str,
                        required=True,
                        help='path to dataset folder')
    parser.add_argument('--output-name',
                        type=str,
                        default='detections.csv',
                        help='name of output file with detected keypoints')
    parser.add_argument('--checkpoint-path',
                        type=str,
                        required=True,
                        help='path to the checkpoint')
    parser.add_argument('--multiscale',
                        action='store_true',
                        help='average inference results over multiple scales')
    parser.add_argument('--visualize',
                        action='store_true',
                        help='show keypoints')
    args = parser.parse_args()

    net = SinglePersonPoseEstimationWithMobileNet(num_refinement_stages=5)
    checkpoint = torch.load(args.checkpoint_path)
    load_state(net, checkpoint)

    dataset = LipValDataset(args.dataset_folder)
    evaluate(dataset, args.output_name, net, args.multiscale, args.visualize)
    pck = calc_pckh(dataset.labels_file_path,
                    args.output_name,
                    eval_num=len(dataset))
Beispiel #4
0
def train(
    images_folder,
    num_refinement_stages,
    base_lr,
    batch_size,
    batches_per_iter,
    num_workers,
    checkpoint_path,
    weights_only,
    from_mobilenet,
    checkpoints_folder,
    log_after,
    checkpoint_after,
):
    net = SinglePersonPoseEstimationWithMobileNet(num_refinement_stages).cuda()
    stride = 8
    sigma = 7
    dataset = LipTrainDataset(
        images_folder,
        stride,
        sigma,
        transform=transforms.Compose([
            SinglePersonBodyMasking(),
            ChannelPermutation(),
            SinglePersonRotate(pad=(128, 128, 128), max_rotate_degree=40),
            SinglePersonCropPad(pad=(128, 128, 128), crop_x=256, crop_y=256),
            SinglePersonFlip(
                left_keypoints_indice=LipTrainDataset.left_keypoints_indice,
                right_keypoints_indice=LipTrainDataset.right_keypoints_indice,
            ),
        ]),
    )
    train_loader = DataLoader(dataset,
                              batch_size=batch_size,
                              shuffle=True,
                              num_workers=num_workers)

    optimizer = optim.Adam(
        [
            {
                "params": get_parameters_conv(net.model, "weight")
            },
            {
                "params": get_parameters_conv_depthwise(net.model, "weight"),
                "weight_decay": 0,
            },
            {
                "params": get_parameters_bn(net.model, "weight"),
                "weight_decay": 0
            },
            {
                "params": get_parameters_bn(net.model, "bias"),
                "lr": base_lr * 2,
                "weight_decay": 0,
            },
            {
                "params": get_parameters_conv(net.cpm, "weight"),
                "lr": base_lr
            },
            {
                "params": get_parameters_conv(net.cpm, "bias"),
                "lr": base_lr * 2,
                "weight_decay": 0,
            },
            {
                "params": get_parameters_conv_depthwise(net.cpm, "weight"),
                "weight_decay": 0,
            },
            {
                "params": get_parameters_conv(net.initial_stage, "weight"),
                "lr": base_lr
            },
            {
                "params": get_parameters_conv(net.initial_stage, "bias"),
                "lr": base_lr * 2,
                "weight_decay": 0,
            },
            {
                "params": get_parameters_bn(net.initial_stage, "weight"),
                "weight_decay": 0,
            },
            {
                "params": get_parameters_bn(net.initial_stage, "bias"),
                "lr": base_lr * 2,
                "weight_decay": 0,
            },
            {
                "params": get_parameters_conv(net.refinement_stages, "weight"),
                "lr": base_lr * 4,
            },
            {
                "params": get_parameters_conv(net.refinement_stages, "bias"),
                "lr": base_lr * 8,
                "weight_decay": 0,
            },
            {
                "params": get_parameters_bn(net.refinement_stages, "weight"),
                "weight_decay": 0,
            },
            {
                "params": get_parameters_bn(net.refinement_stages, "bias"),
                "lr": base_lr * 2,
                "weight_decay": 0,
            },
        ],
        lr=base_lr,
        weight_decay=5e-4,
    )

    num_iter = 0
    current_epoch = 0
    scheduler = optim.lr_scheduler.ReduceLROnPlateau(optimizer,
                                                     factor=0.1,
                                                     patience=5,
                                                     threshold=1e-2,
                                                     verbose=True)
    if checkpoint_path:
        checkpoint = torch.load(checkpoint_path)

        if from_mobilenet:
            load_from_mobilenet(net, checkpoint)
        else:
            load_state(net, checkpoint)
            if not weights_only:
                optimizer.load_state_dict(checkpoint["optimizer"])
                scheduler.load_state_dict(checkpoint["scheduler"])
                num_iter = checkpoint["iter"]
                current_epoch = checkpoint["current_epoch"] + 1

    net = DataParallel(net)
    net.train()
    for epochId in range(current_epoch, 100):
        print("Epoch: {}".format(epochId))
        net.train()
        total_losses = [0] * (num_refinement_stages + 1
                              )  # heatmaps loss per stage
        batch_per_iter_idx = 0
        for batch_data in train_loader:
            if batch_per_iter_idx == 0:
                optimizer.zero_grad()

            images = batch_data["image"].cuda()
            keypoint_maps = batch_data["keypoint_maps"].cuda()

            stages_output = net(images)

            losses = []
            for loss_idx in range(len(total_losses)):
                losses.append(
                    l2_loss(stages_output[loss_idx], keypoint_maps,
                            images.shape[0]))
                total_losses[loss_idx] += losses[-1].item() / batches_per_iter

            loss = losses[0]
            for loss_idx in range(1, len(losses)):
                loss += losses[loss_idx]
            loss /= batches_per_iter
            loss.backward()
            batch_per_iter_idx += 1
            if batch_per_iter_idx == batches_per_iter:
                optimizer.step()
                batch_per_iter_idx = 0
                num_iter += 1
            else:
                continue

            if num_iter % log_after == 0:
                print("Iter: {}".format(num_iter))
                for loss_idx in range(len(total_losses)):
                    print("\n".join(["stage{}_heatmaps_loss: {}"]).format(
                        loss_idx + 1, total_losses[loss_idx] / log_after))
                for loss_idx in range(len(total_losses)):
                    total_losses[loss_idx] = 0

        snapshot_name = "{}/checkpoint_last_epoch.pth".format(
            checkpoints_folder)
        torch.save(
            {
                "state_dict": net.module.state_dict(),
                "optimizer": optimizer.state_dict(),
                "scheduler": scheduler.state_dict(),
                "iter": num_iter,
                "current_epoch": epochId,
            },
            snapshot_name,
        )
        if (epochId + 1) % checkpoint_after == 0:
            snapshot_name = "{}/checkpoint_epoch_{}.pth".format(
                checkpoints_folder, epochId)
            torch.save(
                {
                    "state_dict": net.module.state_dict(),
                    "optimizer": optimizer.state_dict(),
                    "scheduler": scheduler.state_dict(),
                    "iter": num_iter,
                    "current_epoch": epochId,
                },
                snapshot_name,
            )
        print("Validation...")
        net.eval()
        eval_num = 1000
        val_dataset = LipValDataset(images_folder, eval_num)
        predictions_name = "{}/val_results.csv".format(checkpoints_folder)
        evaluate(val_dataset, predictions_name, net)
        pck = calc_pckh(val_dataset.labels_file_path,
                        predictions_name,
                        eval_num=eval_num)

        val_loss = 100 - pck[-1][-1]  # 100 - avg_pckh
        print("Val loss: {}".format(val_loss))
        scheduler.step(val_loss, epochId)
def train(images_folder, num_refinement_stages, base_lr, batch_size,
          batches_per_iter, num_workers, checkpoint_path, weights_only,
          from_mobilenet, checkpoints_folder, log_after, checkpoint_after):
    net = SinglePersonPoseEstimationWithMobileNet(num_refinement_stages).cuda()
    stride = 8
    sigma = 7
    dataset = LipTrainDataset(images_folder,
                              stride,
                              sigma,
                              transform=transforms.Compose([
                                  SinglePersonBodyMasking(),
                                  ChannelPermutation(),
                                  SinglePersonRotate(pad=(128, 128, 128),
                                                     max_rotate_degree=40),
                                  SinglePersonCropPad(pad=(128, 128, 128),
                                                      crop_x=256,
                                                      crop_y=256),
                                  SinglePersonFlip()
                              ]))
    train_loader = DataLoader(dataset,
                              batch_size=batch_size,
                              shuffle=True,
                              num_workers=num_workers)

    optimizer = optim.Adam([
        {
            'params': get_parameters_conv(net.model, 'weight')
        },
        {
            'params': get_parameters_conv_depthwise(net.model, 'weight'),
            'weight_decay': 0
        },
        {
            'params': get_parameters_bn(net.model, 'weight'),
            'weight_decay': 0
        },
        {
            'params': get_parameters_bn(net.model, 'bias'),
            'lr': base_lr * 2,
            'weight_decay': 0
        },
        {
            'params': get_parameters_conv(net.cpm, 'weight'),
            'lr': base_lr
        },
        {
            'params': get_parameters_conv(net.cpm, 'bias'),
            'lr': base_lr * 2,
            'weight_decay': 0
        },
        {
            'params': get_parameters_conv_depthwise(net.cpm, 'weight'),
            'weight_decay': 0
        },
        {
            'params': get_parameters_conv(net.initial_stage, 'weight'),
            'lr': base_lr
        },
        {
            'params': get_parameters_conv(net.initial_stage, 'bias'),
            'lr': base_lr * 2,
            'weight_decay': 0
        },
        {
            'params': get_parameters_bn(net.initial_stage, 'weight'),
            'weight_decay': 0
        },
        {
            'params': get_parameters_bn(net.initial_stage, 'bias'),
            'lr': base_lr * 2,
            'weight_decay': 0
        },
        {
            'params': get_parameters_conv(net.refinement_stages, 'weight'),
            'lr': base_lr * 4
        },
        {
            'params': get_parameters_conv(net.refinement_stages, 'bias'),
            'lr': base_lr * 8,
            'weight_decay': 0
        },
        {
            'params': get_parameters_bn(net.refinement_stages, 'weight'),
            'weight_decay': 0
        },
        {
            'params': get_parameters_bn(net.refinement_stages, 'bias'),
            'lr': base_lr * 2,
            'weight_decay': 0
        },
    ],
                           lr=base_lr,
                           weight_decay=5e-4)

    num_iter = 0
    current_epoch = 0
    scheduler = optim.lr_scheduler.ReduceLROnPlateau(optimizer,
                                                     factor=0.1,
                                                     patience=5,
                                                     threshold=1e-2,
                                                     verbose=True)
    if checkpoint_path:
        checkpoint = torch.load(checkpoint_path)

        if from_mobilenet:
            load_from_mobilenet(net, checkpoint)
        else:
            load_state(net, checkpoint)
            if not weights_only:
                optimizer.load_state_dict(checkpoint['optimizer'])
                scheduler.load_state_dict(checkpoint['scheduler'])
                num_iter = checkpoint['iter']
                num_iter = num_iter // log_after * log_after  # round iterations, to print proper loss when resuming
                current_epoch = checkpoint['current_epoch'] + 1

    net = DataParallel(net)
    net.train()
    for epochId in range(current_epoch, 100):
        print('Epoch: {}'.format(epochId))
        net.train()
        total_losses = [0] * (num_refinement_stages + 1
                              )  # heatmaps loss per stage
        batch_per_iter_idx = 0
        for batch_data in train_loader:
            if batch_per_iter_idx == 0:
                optimizer.zero_grad()

            images = batch_data['image'].cuda()
            keypoint_maps = batch_data['keypoint_maps'].cuda()

            stages_output = net(images)

            losses = []
            for loss_idx in range(len(total_losses)):
                losses.append(
                    l2_loss(stages_output[loss_idx], keypoint_maps,
                            images.shape[0]))
                total_losses[loss_idx] += losses[-1].item() / batches_per_iter

            loss = losses[0]
            for loss_idx in range(1, len(losses)):
                loss += losses[loss_idx]
            loss /= batches_per_iter
            loss.backward()
            batch_per_iter_idx += 1
            if batch_per_iter_idx == batches_per_iter:
                optimizer.step()
                batch_per_iter_idx = 0
                num_iter += 1
            else:
                continue

            if num_iter % log_after == 0:
                print('Iter: {}'.format(num_iter))
                for loss_idx in range(len(total_losses)):
                    print('\n'.join(['stage{}_heatmaps_loss: {}']).format(
                        loss_idx + 1, total_losses[loss_idx] / log_after))
                for loss_idx in range(len(total_losses)):
                    total_losses[loss_idx] = 0

        snapshot_name = '{}/checkpoint_last_epoch.pth'.format(
            checkpoints_folder)
        torch.save(
            {
                'state_dict': net.module.state_dict(),
                'optimizer': optimizer.state_dict(),
                'scheduler': scheduler.state_dict(),
                'iter': num_iter,
                'current_epoch': epochId
            }, snapshot_name)
        if (epochId + 1) % checkpoint_after == 0:
            snapshot_name = '{}/checkpoint_epoch_{}.pth'.format(
                checkpoints_folder, epochId + 1)
            torch.save(
                {
                    'state_dict': net.module.state_dict(),
                    'optimizer': optimizer.state_dict(),
                    'scheduler': scheduler.state_dict(),
                    'iter': num_iter,
                    'current_epoch': epochId
                }, snapshot_name)
        print('Validation...')
        net.eval()
        eval_num = 1000
        val_dataset = LipValDataset(images_folder, eval_num)
        predictions_name = '{}/val_results.csv'.format(checkpoints_folder)
        evaluate(val_dataset, predictions_name, net)
        pck = calc_pckh(val_dataset.labels_file_path,
                        predictions_name,
                        eval_num=eval_num)

        val_loss = 100 - pck[-1][-1]  # 100 - avg_pckh
        print('Val loss: {}'.format(val_loss))
        scheduler.step(val_loss, epochId)