コード例 #1
0
class_path = "/home/ali/VOCdevkit/VOC2012_light/voc.names"

batch_size = 1
# device = 'cpu'
device = 'cuda:0'
check_point_path = "/home/ali/PycharmProjects/yolo/out/save_model/"

use_visdom = True

seq = iaa.Sequential([])
compsed = transform.Compose([Augmenter(seq)])

with open(class_path) as f:
    class_list = f.read().splitlines()

train_data = VOC(root=data_path, transform=compsed, class_path=class_path)

train_loader = dataloader.DataLoader(dataset=train_data,
                                     batch_size=batch_size,
                                     shuffle=True,
                                     collate_fn=detection_collate)

# model

dropout = 0.4
num_class = 20
learning_rate = .4
num_epochs = 6

net = yolov1.YOLOv1(params={"dropout": dropout, "num_class": num_class})
コード例 #2
0
def train(params):

    # future work variable
    dataset = params["dataset"]
    input_height = params["input_height"]
    input_width = params["input_width"]

    data_path = params["data_path"]
    class_path = params["class_path"]
    batch_size = params["batch_size"]
    num_epochs = params["num_epochs"]
    learning_rate = params["lr"]
    dropout = params["dropout"]
    num_gpus = [i for i in range(params["num_gpus"])]
    checkpoint_path = params["checkpoint_path"]

    USE_VISDOM = params["use_visdom"]
    USE_WANDB = params["use_wandb"]
    USE_SUMMARY = params["use_summary"]
    USE_AUGMENTATION = params["use_augmentation"]
    USE_GTCHECKER = params["use_gtcheck"]

    USE_GITHASH = params["use_githash"]
    num_class = params["num_class"]

    if (USE_WANDB):
        wandb.init()
        wandb.config.update(
            params)  # adds all of the arguments as config variables

    with open(class_path) as f:
        class_list = f.read().splitlines()

    device = torch.device('cuda:0' if torch.cuda.is_available() else 'cpu')

    if (USE_GITHASH):
        repo = git.Repo(search_parent_directories=True)
        sha = repo.head.object.hexsha
        short_sha = repo.git.rev_parse(sha, short=7)

    if USE_VISDOM:
        viz = visdom.Visdom(use_incoming_socket=False)
        vis_title = 'Yolo V1 Deepbaksu_vision (feat. martin, visionNoob) PyTorch on ' + 'VOC'
        vis_legend = ['Train Loss']
        iter_plot = create_vis_plot(viz, 'Iteration', 'Total Loss', vis_title,
                                    vis_legend)
        coord1_plot = create_vis_plot(viz, 'Iteration', 'coord1', vis_title,
                                      vis_legend)
        size1_plot = create_vis_plot(viz, 'Iteration', 'size1', vis_title,
                                     vis_legend)
        noobjectness1_plot = create_vis_plot(viz, 'Iteration', 'noobjectness1',
                                             vis_title, vis_legend)
        objectness1_plot = create_vis_plot(viz, 'Iteration', 'objectness1',
                                           vis_title, vis_legend)
        obj_cls_plot = create_vis_plot(viz, 'Iteration', 'obj_cls', vis_title,
                                       vis_legend)

    # 2. Data augmentation setting
    if (USE_AUGMENTATION):
        seq = iaa.SomeOf(
            2,
            [
                iaa.Multiply(
                    (1.2, 1.5)),  # change brightness, doesn't affect BBs
                iaa.Affine(
                    translate_px={
                        "x": 3,
                        "y": 10
                    }, scale=(0.9, 0.9)
                ),  # translate by 40/60px on x/y axis, and scale to 50-70%, affects BBs
                iaa.AdditiveGaussianNoise(scale=0.1 * 255),
                iaa.CoarseDropout(0.02, size_percent=0.15, per_channel=0.5),
                iaa.Affine(rotate=45),
                iaa.Sharpen(alpha=0.5)
            ])
    else:
        seq = iaa.Sequential([])

    composed = transforms.Compose([Augmenter(seq)])

    # 3. Load Dataset
    # composed
    # transforms.ToTensor
    train_dataset = VOC(root=data_path,
                        transform=composed,
                        class_path=class_path)

    train_loader = torch.utils.data.DataLoader(dataset=train_dataset,
                                               batch_size=batch_size,
                                               shuffle=True,
                                               collate_fn=detection_collate)

    # 5. Load YOLOv1
    net = yolov1.YOLOv1(params={"dropout": dropout, "num_class": num_class})
    # model = torch.nn.DataParallel(net, device_ids=num_gpus).cuda()

    print("device : ", device)
    if device.type == 'cpu':
        model = torch.nn.DataParallel(net)
    else:
        model = torch.nn.DataParallel(net, device_ids=num_gpus).cuda()

    if USE_SUMMARY:
        summary(model, (3, 448, 448))

    # 7.Train the model
    optimizer = torch.optim.Adam(model.parameters(),
                                 lr=learning_rate,
                                 weight_decay=1e-5)
    scheduler = torch.optim.lr_scheduler.ExponentialLR(optimizer, gamma=0.95)

    # Train the model
    total_step = len(train_loader)

    total_train_step = num_epochs * total_step

    # for epoch in range(num_epochs):
    for epoch in range(1, num_epochs + 1):

        if (epoch == 200) or (epoch == 400) or (epoch == 600) or (
                epoch == 20000) or (epoch == 30000):
            scheduler.step()

        for i, (images, labels, sizes) in enumerate(train_loader):

            current_train_step = (epoch) * total_step + (i + 1)

            if USE_GTCHECKER:
                visualize_GT(images, labels, class_list)

            images = images.to(device)
            labels = labels.to(device)

            # Forward pass
            outputs = model(images)

            # Calc Loss
            loss, \
            obj_coord1_loss, \
            obj_size1_loss, \
            obj_class_loss, \
            noobjness1_loss, \
            objness1_loss = detection_loss_4_yolo(outputs, labels, device.type)
            # objness1_loss = detection_loss_4_yolo(outputs, labels)

            # Backward and optimize
            optimizer.zero_grad()
            loss.backward()
            optimizer.step()

            if (((current_train_step) % 100)
                    == 0) or (current_train_step % 10 == 0
                              and current_train_step < 100):
                print(
                    'epoch: [{}/{}], total step: [{}/{}], batch step [{}/{}], lr: {}, total_loss: {:.4f}, coord1: {:.4f}, size1: {:.4f}, noobj_clss: {:.4f}, objness1: {:.4f}, class_loss: {:.4f}'
                    .format(epoch + 1, num_epochs, current_train_step,
                            total_train_step, i + 1, total_step, ([
                                param_group['lr']
                                for param_group in optimizer.param_groups
                            ])[0], loss.item(), obj_coord1_loss,
                            obj_size1_loss, noobjness1_loss, objness1_loss,
                            obj_class_loss))

                if USE_VISDOM:
                    update_vis_plot(viz, (epoch + 1) * total_step + (i + 1),
                                    loss.item(), iter_plot, None, 'append')
                    update_vis_plot(viz, (epoch + 1) * total_step + (i + 1),
                                    obj_coord1_loss, coord1_plot, None,
                                    'append')
                    update_vis_plot(viz, (epoch + 1) * total_step + (i + 1),
                                    obj_size1_loss, size1_plot, None, 'append')
                    update_vis_plot(viz, (epoch + 1) * total_step + (i + 1),
                                    obj_class_loss, obj_cls_plot, None,
                                    'append')
                    update_vis_plot(viz, (epoch + 1) * total_step + (i + 1),
                                    noobjness1_loss, noobjectness1_plot, None,
                                    'append')
                    update_vis_plot(viz, (epoch + 1) * total_step + (i + 1),
                                    objness1_loss, objectness1_plot, None,
                                    'append')

                if USE_WANDB:
                    wandb.log({
                        'total_loss': loss.item(),
                        'obj_coord1_loss': obj_coord1_loss,
                        'obj_size1_loss': obj_size1_loss,
                        'obj_class_loss': obj_class_loss,
                        'noobjness1_loss': noobjness1_loss,
                        'objness1_loss': objness1_loss
                    })

        if not USE_GITHASH:
            short_sha = 'noHash'

        # if ((epoch % 1000) == 0) and (epoch != 0):
        if ((epoch % 1000) == 0):
            save_checkpoint(
                {
                    'epoch': epoch + 1,
                    'arch': "YOLOv1",
                    'state_dict': model.state_dict(),
                    'optimizer': optimizer.state_dict(),
                },
                False,
                filename=os.path.join(
                    checkpoint_path,
                    'ckpt_{}_ep{:05d}_loss{:.04f}_lr{}.pth.tar'.format(
                        short_sha, epoch, loss.item(), ([
                            param_group['lr']
                            for param_group in optimizer.param_groups
                        ])[0])))
コード例 #3
0
ファイル: train.py プロジェクト: VinACE/Yolo_v2
def train(params):

    # future work variable
    dataset = params["dataset"]
    input_height = params["input_height"]
    input_width = params["input_width"]

    data_path = params["data_path"]
    val_data_path = params["val_data_path"]
    val_datalist_path = params["val_datalist_path"]
    datalist_path = params["datalist_path"]
    class_path = params["class_path"]
    batch_size = params["batch_size"]
    num_epochs = params["num_epochs"]
    learning_rate = params["lr"]
    checkpoint_path = params["checkpoint_path"]

    USE_AUGMENTATION = params["use_augmentation"]
    USE_GTCHECKER = params["use_gtcheck"]
    USE_VISDOM = params["use_visdom"]

    USE_GITHASH = params["use_githash"]
    num_class = params["num_class"]
    num_gpus = [i for i in range(1)]
    with open(class_path) as f:
        class_list = f.read().splitlines()

    device = torch.device('cuda:0' if torch.cuda.is_available() else 'cpu')
    torch.manual_seed(42)
    torch.cuda.manual_seed_all(42)

    if (USE_GITHASH):
        repo = git.Repo(search_parent_directories=True)
        sha = repo.head.object.hexsha
        short_sha = repo.git.rev_parse(sha, short=7)

    if USE_VISDOM:
        viz = visdom.Visdom(use_incoming_socket=False)
        vis_title = 'YOLOv2'
        vis_legend_Train = ['Train Loss']
        vis_legend_Val = ['Val Loss']
        iter_plot = create_vis_plot(viz, 'Iteration', 'Total Loss', vis_title,
                                    vis_legend_Train)
        val_plot = create_vis_plot(viz, 'Iteration', 'Validation Loss',
                                   vis_title, vis_legend_Val)

    # 2. Data augmentation setting
    if (USE_AUGMENTATION):
        seq = iaa.SomeOf(
            2,
            [
                iaa.Multiply(
                    (1.2, 1.5)),  # change brightness, doesn't affect BBs
                iaa.Affine(
                    translate_px={
                        "x": 3,
                        "y": 10
                    }, scale=(0.9, 0.9)
                ),  # translate by 40/60px on x/y axis, and scale to 50-70%, affects BBs
                iaa.AdditiveGaussianNoise(scale=0.1 * 255),
                iaa.CoarseDropout(0.02, size_percent=0.15, per_channel=0.5),
                iaa.Affine(rotate=45),
                iaa.Sharpen(alpha=0.5)
            ])
    else:
        seq = iaa.Sequential([])

    composed = transforms.Compose([Augmenter(seq)])

    # 3. Load Dataset
    # composed
    # transforms.ToTensor
    #TODO : Datalist가 있을때 VOC parsing
    # import pdb;pdb.set_trace()
    train_dataset = VOC(root=data_path,
                        transform=composed,
                        class_path=class_path,
                        datalist_path=datalist_path)

    train_loader = torch.utils.data.DataLoader(dataset=train_dataset,
                                               batch_size=batch_size,
                                               shuffle=True,
                                               collate_fn=detection_collate)
    val_dataset = VOC(root=val_data_path,
                      transform=composed,
                      class_path=class_path,
                      datalist_path=val_datalist_path)

    val_loader = torch.utils.data.DataLoader(dataset=val_dataset,
                                             batch_size=batch_size,
                                             shuffle=True,
                                             collate_fn=detection_collate)
    # 5. Load YOLOv2
    net = yolov2.YOLOv2()
    model = torch.nn.DataParallel(net, device_ids=num_gpus).cuda()

    print("device : ", device)
    if device.type == 'cpu':
        model = torch.nn.DataParallel(net)
    else:
        model = torch.nn.DataParallel(net, device_ids=num_gpus).cuda()

    # 7.Train the model
    optimizer = torch.optim.Adam(model.parameters(),
                                 lr=learning_rate,
                                 weight_decay=1e-5)
    scheduler = torch.optim.lr_scheduler.ExponentialLR(optimizer, gamma=0.9)

    # Train the model
    total_step = len(train_loader)

    total_train_step = num_epochs * total_step

    # for epoch in range(num_epochs):
    for epoch in range(1, num_epochs + 1):
        train_loss = 0
        total_val_loss = 0

        train_total_conf_loss = 0
        train_total_xy_loss = 0
        train_total_wh_loss = 0
        train_total_c_loss = 0

        val_total_conf_loss = 0
        val_total_xy_loss = 0
        val_total_wh_loss = 0
        val_total_c_loss = 0

        if (epoch % 500 == 0 and epoch < 1000):
            learning_rate /= 10
            optimizer = torch.optim.Adam(model.parameters(),
                                         lr=learning_rate,
                                         weight_decay=1e-5)
            scheduler = torch.optim.lr_scheduler.ExponentialLR(optimizer,
                                                               gamma=0.9)

        if (epoch == 200) or (epoch == 400) or (epoch == 600) or (
                epoch == 20000) or (epoch == 30000):
            scheduler.step()
        model.train()
        for i, (images, labels, sizes) in enumerate(train_loader):

            current_train_step = (epoch) * total_step + (i + 1)

            if USE_GTCHECKER:
                visualize_GT(images, labels, class_list)

            images = images.to(device)
            labels = labels.to(device)

            dog = labels[0, 4, 7, :]
            human = labels[0, 6, 6, :]
            # Forward pass
            outputs = model(images)

            # Calc Loss
            one_loss, conf_loss, xy_loss, wh_loss, class_loss = detection_loss_4_yolo(
                outputs, labels, device.type)
            # objness1_loss = detection_loss_4_yolo(outputs, labels)
            # Backward and optimize
            optimizer.zero_grad()
            one_loss.backward()
            optimizer.step()
            train_loss += one_loss.item()
            train_total_conf_loss += conf_loss.item()
            train_total_xy_loss += xy_loss.item()
            train_total_wh_loss += wh_loss.item()
            train_total_c_loss += class_loss.item()

        train_total_conf_loss = train_total_conf_loss / len(train_loader)
        train_total_xy_loss = train_total_xy_loss / len(train_loader)
        train_total_wh_loss = train_total_wh_loss / len(train_loader)
        train_total_c_loss = train_total_c_loss / len(train_loader)
        train_epoch_loss = train_loss / len(train_loader)
        update_vis_plot(viz, epoch + 1, train_epoch_loss, iter_plot, None,
                        'append')

        model.eval()
        with torch.no_grad():

            for j, (v_images, v_labels, v_sizes) in enumerate(val_loader):
                v_images = v_images.to(device)
                v_labels = v_labels.to(device)
                # Forward pass
                v_outputs = model(v_images)

                # Calc Loss
                val_loss, conf_loss, xy_loss, wh_loss, class_loss = detection_loss_4_yolo(
                    v_outputs, v_labels, device.type)
                total_val_loss += val_loss.item()
                val_total_conf_loss += conf_loss.item()
                val_total_xy_loss += xy_loss.item()
                val_total_wh_loss += wh_loss.item()
                val_total_c_loss += class_loss.item()

            val_epoch_loss = total_val_loss / len(val_loader)
            val_total_conf_loss = val_total_conf_loss / len(val_loader)
            val_total_xy_loss = val_total_xy_loss / len(val_loader)
            val_total_wh_loss = val_total_wh_loss / len(val_loader)
            val_total_c_loss = val_total_c_loss / len(val_loader)
            update_vis_plot(viz, epoch + 1, val_epoch_loss, val_plot, None,
                            'append')

        if (((current_train_step) % 100)
                == 0) or (current_train_step % 1 == 0
                          and current_train_step < 300):
            print(
                'epoch: [{}/{}], total step: [{}/{}], batch step [{}/{}], lr: {},one_loss: {:.4f},val_loss: {:.4f}'
                .format(epoch + 1, num_epochs, current_train_step,
                        total_train_step, i + 1, total_step, ([
                            param_group['lr']
                            for param_group in optimizer.param_groups
                        ])[0], one_loss, val_loss))

        print('train loss', train_epoch_loss, 'val loss', val_epoch_loss)
        print('train conf loss', train_total_conf_loss, 'val conf loss',
              val_total_conf_loss)
        print('train xy loss', train_total_xy_loss, 'val xy loss',
              val_total_xy_loss)
        print('train wh loss', train_total_wh_loss, 'val wh loss',
              val_total_wh_loss)
        print('train class loss', train_total_c_loss, 'val class loss',
              val_total_c_loss)
        if not USE_GITHASH:
            short_sha = 'noHash'

        # if ((epoch % 1000) == 0) and (epoch != 0):
        # if ((epoch % 100) == 0) :
        if ((epoch % 10) == 0):
            #if (one_loss <= 1) :
            save_checkpoint(
                {
                    'epoch': epoch + 1,
                    'arch': "YOLOv2",
                    'state_dict': model.state_dict(),
                    'optimizer': optimizer.state_dict(),
                },
                False,
                filename=os.path.join(
                    checkpoint_path,
                    'ckpt_{}_ep{:05d}_loss{:.04f}_lr{}.pth.tar'.format(
                        short_sha, epoch, one_loss.item(), ([
                            param_group['lr']
                            for param_group in optimizer.param_groups
                        ])[0])))
            # print(dir(model))
            filename = os.path.join(
                checkpoint_path,
                'ckpt_{}_ep{:05d}_loss{:.04f}_lr{}model.pth.tar'.format(
                    short_sha, epoch, one_loss.item(), ([
                        param_group['lr']
                        for param_group in optimizer.param_groups
                    ])[0]))
            torch.save(model.module.state_dict(), filename)
コード例 #4
0
def train(args):
    dataset = args.dataset
    data_path = args.data_path
    class_path = args.class_path
    checkpoint_path = args.checkpoint_path

    input_height = args.input_height
    input_width = args.input_width
    batch_size = args.batch_size
    num_epochs = args.num_epochs
    lr = args.lr
    weight_decay = args.weight_decay
    dropout = args.dropout
    l_coord = args.l_coord
    l_noobj = args.l_noobj
    num_gpus = [i for i in range(args.num_gpus)]
    num_class = args.num_class

    USE_AUGMENTATION = args.use_augmentation
    #     USE_VISDOM = args.use_visdom
    #     USE_WANDB = args.use_wandb
    USE_SUMMARY = args.use_summary

    if USE_AUGMENTATION:
        seq = iaa.SomeOf(2, [
            iaa.Multiply((1.2, 1.5)),
            iaa.Affine(translate_px={
                "x": 3,
                "y": 10
            }, scale=(0.9, 0.9)),
            iaa.AdditiveGaussianNoise(scale=0.1 * 255),
            iaa.CoarseDropout(0.02, size_percent=0.15, per_channel=0.5),
            iaa.Affine(rotate=45),
            iaa.Sharpen(alpha=0.5)
        ])
    else:
        seq = iaa.Sequential([])

    composed = transforms.Compose([Augmenter(seq)])

    # DataLoader

    train_dataset = VOC(root=data_path,
                        transform=composed,
                        class_path=class_path)

    train_loader = torch.utils.data.DataLoader(dataset=train_dataset,
                                               batch_size=batch_size,
                                               shuffle=True,
                                               collate_fn=detection_collate)

    # model

    model = models.YOLOv1(num_class, dropout)

    device = torch.device('cuda:0' if torch.cuda.is_available() else 'cpu')

    if torch.cuda.is_available():
        model = torch.nn.DataParallel(model, device_ids=num_gpus).to(device)
    else:
        model = torch.nn.DataParallel(model)

    if USE_SUMMARY:
        summary(model, (3, 448, 448))

    optimizer = torch.optim.Adam(model.parameters(),
                                 lr=lr,
                                 weight_decay=weight_decay)

    scheduler = torch.optim.lr_scheduler.ExponentialLR(optimizer, gamma=0.95)

    total_step = 0
    #     total_train_step = num_epochs * total_step

    for epoch in range(1, num_epochs + 1):
        if (epoch == 200) or (epoch == 400) or (epoch == 600) or (
                epoch == 20000) or (epoch == 30000):
            scheduler.step()

        for i, (images, labels, sizes) in enumerate(train_loader):

            total_step += 1
            images = images.to(device)
            labels = labels.to(device)

            pred = model(images)

            loss, losses = detection_loss_4_yolo(pred, labels, l_coord,
                                                 l_noobj, device)

            coord_loss = losses[0]
            size_loss = losses[1]
            objness_loss = losses[2]
            noobjness_loss = losses[3]
            class_loss = losses[4]

            optimizer.zero_grad()
            loss.backward()
            optimizer.step()

            if total_step % 100 == 0:
                print("epoch: [{}/{}], step:{}, lr:{}, total_loss:{:.4f}, \
                    \ncoord:{:.4f}, size:{:.4f}, objness:{:.4f}, noobjness:{:.4f}, class:{:.4f}"
                      .format(epoch, num_epochs, total_step, ([
                          param['lr'] for param in optimizer.param_groups
                      ])[0], loss.item(), coord_loss, size_loss, objness_loss,
                              noobjness_loss, class_loss))

            if epoch % 1000 == 0:
                save_checkpoint(
                    {
                        "epoch": epoch,
                        "arch": "YoloV1",
                        "state_dict": model.state.dict(),
                        "optimizer": optimizer.state.dict()
                    },
                    False,
                    filename=os.path.join(
                        checkpoint_path,
                        "ckpt_ep{:.05d}_loss{:.04f}_lr{}.pth.tar".format(
                            epoch, loss.item(),
                            ([param['lr']
                              for param in optimizer.param_group])[0])))