def main(args: argparse.Namespace):
    logger = CompleteLogger(args.log, args.phase)
    print(args)

    if args.seed is not None:
        random.seed(args.seed)
        torch.manual_seed(args.seed)
        cudnn.deterministic = True
        warnings.warn('You have chosen to seed training. '
                      'This will turn on the CUDNN deterministic setting, '
                      'which can slow down your training considerably! '
                      'You may see unexpected behavior when restarting '
                      'from checkpoints.')

    cudnn.benchmark = True

    # Data loading code
    normalize = T.Normalize(mean=[0.485, 0.456, 0.406],
                            std=[0.229, 0.224, 0.225])
    if args.center_crop:
        train_transform = T.Compose([
            ResizeImage(256),
            T.CenterCrop(224),
            T.RandomHorizontalFlip(),
            T.ToTensor(), normalize
        ])
    else:
        train_transform = T.Compose([
            ResizeImage(256),
            T.RandomResizedCrop(224),
            T.RandomHorizontalFlip(),
            T.ToTensor(), normalize
        ])
    val_transform = T.Compose(
        [ResizeImage(256),
         T.CenterCrop(224),
         T.ToTensor(), normalize])

    dataset = datasets.__dict__[args.data]
    source_dataset = open_set(dataset, source=True)
    target_dataset = open_set(dataset, source=False)
    train_source_dataset = source_dataset(root=args.root,
                                          task=args.source,
                                          download=True,
                                          transform=train_transform)
    train_source_loader = DataLoader(train_source_dataset,
                                     batch_size=args.batch_size,
                                     shuffle=True,
                                     num_workers=args.workers,
                                     drop_last=True)
    val_dataset = target_dataset(root=args.root,
                                 task=args.target,
                                 download=True,
                                 transform=val_transform)
    val_loader = DataLoader(val_dataset,
                            batch_size=args.batch_size,
                            shuffle=False,
                            num_workers=args.workers)
    if args.data == 'DomainNet':
        test_dataset = target_dataset(root=args.root,
                                      task=args.target,
                                      split='test',
                                      download=True,
                                      transform=val_transform)
        test_loader = DataLoader(test_dataset,
                                 batch_size=args.batch_size,
                                 shuffle=False,
                                 num_workers=args.workers)
    else:
        test_loader = val_loader

    train_source_iter = ForeverDataIterator(train_source_loader)

    # create model
    print("=> using pre-trained model '{}'".format(args.arch))
    backbone = models.__dict__[args.arch](pretrained=True)
    num_classes = train_source_dataset.num_classes
    classifier = Classifier(backbone, num_classes).to(device)
    # define optimizer and lr scheduler
    optimizer = SGD(classifier.get_parameters(),
                    args.lr,
                    momentum=args.momentum,
                    weight_decay=args.wd,
                    nesterov=True)
    lr_scheduler = LambdaLR(
        optimizer, lambda x: args.lr *
        (1. + args.lr_gamma * float(x))**(-args.lr_decay))

    # analysis the model
    if args.phase == 'analysis':
        # using shuffled val loader
        val_loader = DataLoader(val_dataset,
                                batch_size=args.batch_size,
                                shuffle=True,
                                num_workers=args.workers)
        # extract features from both domains
        feature_extractor = nn.Sequential(classifier.backbone,
                                          classifier.bottleneck).to(device)
        source_feature = collect_feature(train_source_loader,
                                         feature_extractor, device)
        target_feature = collect_feature(val_loader, feature_extractor, device)
        # plot t-SNE
        tSNE_filename = osp.join(logger.visualize_directory, 'TSNE.png')
        tsne.visualize(source_feature, target_feature, tSNE_filename)
        print("Saving t-SNE to", tSNE_filename)
        # calculate A-distance, which is a measure for distribution discrepancy
        A_distance = a_distance.calculate(source_feature, target_feature,
                                          device)
        print("A-distance =", A_distance)
        return

    if args.phase == 'test':
        acc1 = validate(test_loader, classifier, args)
        print(acc1)
        return

    # start training
    best_h_score = 0.
    for epoch in range(args.epochs):
        # train for one epoch
        train(train_source_iter, classifier, optimizer, lr_scheduler, epoch,
              args)

        # evaluate on validation set
        h_score = validate(val_loader, classifier, args)

        # remember best acc@1 and save checkpoint
        torch.save(classifier.state_dict(),
                   logger.get_checkpoint_path('latest'))
        if h_score > best_h_score:
            shutil.copy(logger.get_checkpoint_path('latest'),
                        logger.get_checkpoint_path('best'))
        best_h_score = max(h_score, best_h_score)

    print("best_h_score = {:3.1f}".format(best_h_score))

    # evaluate on test set
    classifier.load_state_dict(torch.load(logger.get_checkpoint_path('best')))
    h_score = validate(test_loader, classifier, args)
    print("test_h_score = {:3.1f}".format(h_score))

    logger.close()
Exemplo n.º 2
0
def main(args: argparse.Namespace):
    logger = CompleteLogger(args.log, args.phase)
    print(args)

    if args.seed is not None:
        random.seed(args.seed)
        torch.manual_seed(args.seed)
        cudnn.deterministic = True
        warnings.warn('You have chosen to seed training. '
                      'This will turn on the CUDNN deterministic setting, '
                      'which can slow down your training considerably! '
                      'You may see unexpected behavior when restarting '
                      'from checkpoints.')

    cudnn.benchmark = True

    # Data loading code
    train_transform = utils.get_train_transform(
        args.train_resizing,
        random_horizontal_flip=not args.no_hflip,
        random_color_jitter=False,
        resize_size=args.resize_size,
        norm_mean=args.norm_mean,
        norm_std=args.norm_std)
    val_transform = utils.get_val_transform(args.val_resizing,
                                            resize_size=args.resize_size,
                                            norm_mean=args.norm_mean,
                                            norm_std=args.norm_std)
    print("train_transform: ", train_transform)
    print("val_transform: ", val_transform)

    train_source_dataset, train_target_dataset, val_dataset, test_dataset, num_classes, args.class_names = \
        utils.get_dataset(args.data, args.root, args.source, args.target, train_transform, val_transform)
    train_source_loader = DataLoader(train_source_dataset,
                                     batch_size=args.batch_size,
                                     shuffle=True,
                                     num_workers=args.workers,
                                     drop_last=True)
    train_target_loader = DataLoader(train_target_dataset,
                                     batch_size=args.batch_size,
                                     shuffle=True,
                                     num_workers=args.workers,
                                     drop_last=True)
    val_loader = DataLoader(val_dataset,
                            batch_size=args.batch_size,
                            shuffle=False,
                            num_workers=args.workers)
    test_loader = DataLoader(test_dataset,
                             batch_size=args.batch_size,
                             shuffle=False,
                             num_workers=args.workers)

    train_source_iter = ForeverDataIterator(train_source_loader)
    train_target_iter = ForeverDataIterator(train_target_loader)

    # create model
    print("=> using model '{}'".format(args.arch))
    backbone = utils.get_model(args.arch, pretrain=not args.scratch)
    pool_layer = nn.Identity() if args.no_pool else None
    classifier = ImageClassifier(backbone,
                                 num_classes,
                                 bottleneck_dim=args.bottleneck_dim,
                                 pool_layer=pool_layer,
                                 finetune=not args.scratch).to(device)
    domain_discri = DomainDiscriminator(in_feature=classifier.features_dim,
                                        hidden_size=1024).to(device)

    # define loss function
    domain_adv = DomainAdversarialLoss().to(device)
    gl = WarmStartGradientLayer(alpha=1.,
                                lo=0.,
                                hi=1.,
                                max_iters=1000,
                                auto_step=True)

    # define optimizer and lr scheduler
    optimizer = SGD(classifier.get_parameters(),
                    args.lr,
                    momentum=args.momentum,
                    weight_decay=args.weight_decay,
                    nesterov=True)
    optimizer_d = SGD(domain_discri.get_parameters(),
                      args.lr_d,
                      momentum=args.momentum,
                      weight_decay=args.weight_decay,
                      nesterov=True)
    lr_scheduler = LambdaLR(
        optimizer, lambda x: args.lr *
        (1. + args.lr_gamma * float(x))**(-args.lr_decay))
    lr_scheduler_d = LambdaLR(
        optimizer_d, lambda x: args.lr_d *
        (1. + args.lr_gamma * float(x))**(-args.lr_decay))

    # resume from the best checkpoint
    if args.phase != 'train':
        checkpoint = torch.load(logger.get_checkpoint_path('best'),
                                map_location='cpu')
        classifier.load_state_dict(checkpoint)

    # analysis the model
    if args.phase == 'analysis':
        # extract features from both domains
        feature_extractor = nn.Sequential(classifier.backbone,
                                          classifier.pool_layer,
                                          classifier.bottleneck).to(device)
        source_feature = collect_feature(train_source_loader,
                                         feature_extractor, device)
        target_feature = collect_feature(train_target_loader,
                                         feature_extractor, device)
        # plot t-SNE
        tSNE_filename = osp.join(logger.visualize_directory, 'TSNE.pdf')
        tsne.visualize(source_feature, target_feature, tSNE_filename)
        print("Saving t-SNE to", tSNE_filename)
        # calculate A-distance, which is a measure for distribution discrepancy
        A_distance = a_distance.calculate(source_feature, target_feature,
                                          device)
        print("A-distance =", A_distance)
        return

    if args.phase == 'test':
        acc1 = utils.validate(test_loader, classifier, args, device)
        print(acc1)
        return

    # start training
    best_acc1 = 0.
    for epoch in range(args.epochs):
        print("lr classifier:", lr_scheduler.get_lr())
        print("lr discriminator:", lr_scheduler_d.get_lr())
        # train for one epoch
        train(train_source_iter, train_target_iter, classifier, domain_discri,
              domain_adv, gl, optimizer, lr_scheduler, optimizer_d,
              lr_scheduler_d, epoch, args)

        # evaluate on validation set
        acc1 = utils.validate(val_loader, classifier, args, device)

        # remember best acc@1 and save checkpoint
        torch.save(classifier.state_dict(),
                   logger.get_checkpoint_path('latest'))
        if acc1 > best_acc1:
            shutil.copy(logger.get_checkpoint_path('latest'),
                        logger.get_checkpoint_path('best'))
        best_acc1 = max(acc1, best_acc1)

    print("best_acc1 = {:3.1f}".format(best_acc1))

    # evaluate on test set
    classifier.load_state_dict(torch.load(logger.get_checkpoint_path('best')))
    acc1 = utils.validate(test_loader, classifier, args, device)
    print("test_acc1 = {:3.1f}".format(acc1))

    logger.close()
Exemplo n.º 3
0
def main(args: argparse.Namespace):
    logger = CompleteLogger(args.log, args.phase)
    print(args)

    if args.seed is not None:
        random.seed(args.seed)
        torch.manual_seed(args.seed)
        cudnn.deterministic = True
        warnings.warn('You have chosen to seed training. '
                      'This will turn on the CUDNN deterministic setting, '
                      'which can slow down your training considerably! '
                      'You may see unexpected behavior when restarting '
                      'from checkpoints.')

    cudnn.benchmark = True

    # Data loading code
    normalize = T.Normalize(mean=[0.485, 0.456, 0.406],
                            std=[0.229, 0.224, 0.225])
    train_transform = T.Compose(
        [T.Resize(args.resize_size),
         T.ToTensor(), normalize])
    val_transform = T.Compose(
        [T.Resize(args.resize_size),
         T.ToTensor(), normalize])

    dataset = datasets.__dict__[args.data]
    train_source_dataset = dataset(root=args.root,
                                   task=args.source,
                                   split='train',
                                   download=True,
                                   transform=train_transform)
    train_source_loader = DataLoader(train_source_dataset,
                                     batch_size=args.batch_size,
                                     shuffle=True,
                                     num_workers=args.workers,
                                     drop_last=True)
    train_target_dataset = dataset(root=args.root,
                                   task=args.target,
                                   split='train',
                                   download=True,
                                   transform=train_transform)
    train_target_loader = DataLoader(train_target_dataset,
                                     batch_size=args.batch_size,
                                     shuffle=True,
                                     num_workers=args.workers,
                                     drop_last=True)
    val_dataset = dataset(root=args.root,
                          task=args.target,
                          split='test',
                          download=True,
                          transform=val_transform)
    val_loader = DataLoader(val_dataset,
                            batch_size=args.batch_size,
                            shuffle=False,
                            num_workers=args.workers)

    train_source_iter = ForeverDataIterator(train_source_loader)
    train_target_iter = ForeverDataIterator(train_target_loader)

    # create model
    print("=> using pre-trained model '{}'".format(args.arch))
    num_factors = train_source_dataset.num_factors
    backbone = models.__dict__[args.arch](pretrained=True)
    bottleneck_dim = args.bottleneck_dim
    if args.normalization == 'IN':
        backbone = convert_model(backbone)
        bottleneck = nn.Sequential(
            nn.Conv2d(backbone.out_features,
                      bottleneck_dim,
                      kernel_size=3,
                      stride=1,
                      padding=1),
            nn.InstanceNorm2d(bottleneck_dim),
            nn.ReLU(),
        )
        head = nn.Sequential(
            nn.Conv2d(bottleneck_dim,
                      bottleneck_dim,
                      kernel_size=3,
                      stride=1,
                      padding=1), nn.InstanceNorm2d(bottleneck_dim), nn.ReLU(),
            nn.Conv2d(bottleneck_dim,
                      bottleneck_dim,
                      kernel_size=3,
                      stride=1,
                      padding=1), nn.InstanceNorm2d(bottleneck_dim), nn.ReLU(),
            nn.AdaptiveAvgPool2d(output_size=(1, 1)), nn.Flatten(),
            nn.Linear(bottleneck_dim, num_factors), nn.Sigmoid())
        for layer in head:
            if isinstance(layer, nn.Conv2d) or isinstance(layer, nn.Linear):
                nn.init.normal_(layer.weight, 0, 0.01)
                nn.init.constant_(layer.bias, 0)
        adv_head = nn.Sequential(
            nn.Conv2d(bottleneck_dim,
                      bottleneck_dim,
                      kernel_size=3,
                      stride=1,
                      padding=1), nn.InstanceNorm2d(bottleneck_dim), nn.ReLU(),
            nn.Conv2d(bottleneck_dim,
                      bottleneck_dim,
                      kernel_size=3,
                      stride=1,
                      padding=1), nn.InstanceNorm2d(bottleneck_dim), nn.ReLU(),
            nn.AdaptiveAvgPool2d(output_size=(1, 1)), nn.Flatten(),
            nn.Linear(bottleneck_dim, num_factors), nn.Sigmoid())
        for layer in adv_head:
            if isinstance(layer, nn.Conv2d) or isinstance(layer, nn.Linear):
                nn.init.normal_(layer.weight, 0, 0.01)
                nn.init.constant_(layer.bias, 0)
        regressor = ImageRegressor(backbone,
                                   num_factors,
                                   bottleneck=bottleneck,
                                   head=head,
                                   adv_head=adv_head,
                                   bottleneck_dim=bottleneck_dim,
                                   width=bottleneck_dim)
    else:
        regressor = ImageRegressor(backbone,
                                   num_factors,
                                   bottleneck_dim=bottleneck_dim,
                                   width=bottleneck_dim)

    regressor = regressor.to(device)
    print(regressor)
    mdd = MarginDisparityDiscrepancy(args.margin).to(device)

    # define optimizer and lr scheduler
    optimizer = SGD(regressor.get_parameters(),
                    args.lr,
                    momentum=args.momentum,
                    weight_decay=args.wd,
                    nesterov=True)
    lr_scheduler = LambdaLR(
        optimizer, lambda x: args.lr *
        (1. + args.lr_gamma * float(x))**(-args.lr_decay))

    # resume from the best checkpoint
    if args.phase != 'train':
        checkpoint = torch.load(logger.get_checkpoint_path('best'),
                                map_location='cpu')
        regressor.load_state_dict(checkpoint)

    # analysis the model
    if args.phase == 'analysis':
        train_source_loader = DataLoader(train_source_dataset,
                                         batch_size=args.batch_size,
                                         shuffle=True,
                                         num_workers=args.workers,
                                         drop_last=True)
        train_target_loader = DataLoader(train_target_dataset,
                                         batch_size=args.batch_size,
                                         shuffle=True,
                                         num_workers=args.workers,
                                         drop_last=True)
        # extract features from both domains
        feature_extractor = nn.Sequential(regressor.backbone,
                                          regressor.bottleneck,
                                          regressor.head[:-2]).to(device)
        source_feature = collect_feature(train_source_loader,
                                         feature_extractor, device)
        target_feature = collect_feature(train_target_loader,
                                         feature_extractor, device)
        # plot t-SNE
        tSNE_filename = osp.join(logger.visualize_directory, 'TSNE.pdf')
        tsne.visualize(source_feature, target_feature, tSNE_filename)
        print("Saving t-SNE to", tSNE_filename)
        # calculate A-distance, which is a measure for distribution discrepancy
        A_distance = a_distance.calculate(source_feature, target_feature,
                                          device)
        print("A-distance =", A_distance)
        return

    if args.phase == 'test':
        mae = validate(val_loader, regressor, args,
                       train_source_dataset.factors, device)
        print(mae)
        return

    # start training
    best_mae = 100000.
    for epoch in range(args.epochs):
        # train for one epoch
        print("lr", lr_scheduler.get_lr())
        train(train_source_iter, train_target_iter, regressor, mdd, optimizer,
              lr_scheduler, epoch, args)

        # evaluate on validation set
        mae = validate(val_loader, regressor, args,
                       train_source_dataset.factors, device)

        # remember best mae and save checkpoint
        torch.save(regressor.state_dict(),
                   logger.get_checkpoint_path('latest'))
        if mae < best_mae:
            shutil.copy(logger.get_checkpoint_path('latest'),
                        logger.get_checkpoint_path('best'))
        best_mae = min(mae, best_mae)
        print("mean MAE {:6.3f} best MAE {:6.3f}".format(mae, best_mae))

    print("best_mae = {:6.3f}".format(best_mae))

    logger.close()
Exemplo n.º 4
0
def main(args: argparse.Namespace):
    logger = CompleteLogger(args.log, args.phase)

    if args.seed is not None:
        random.seed(args.seed)
        torch.manual_seed(args.seed)
        cudnn.deterministic = True
        warnings.warn('You have chosen to seed training. '
                      'This will turn on the CUDNN deterministic setting, '
                      'which can slow down your training considerably! '
                      'You may see unexpected behavior when restarting '
                      'from checkpoints.')

    cudnn.benchmark = True

    # Data loading code
    if args.num_channels == 3:
        mode = 'RGB'
        mean = std = [0.5, 0.5, 0.5]
    else:
        mode = 'L'
        mean = std = [
            0.5,
        ]
    normalize = T.Normalize(mean=mean, std=std)

    train_transform = T.Compose([
        ResizeImage(args.image_size),
        # T.RandomRotation(10), # TODO need results
        T.ToTensor(),
        normalize
    ])
    val_transform = T.Compose(
        [ResizeImage(args.image_size),
         T.ToTensor(), normalize])

    source_dataset = datasets.__dict__[args.source]
    train_source_dataset = source_dataset(root=args.source_root,
                                          mode=mode,
                                          download=True,
                                          transform=train_transform)
    train_source_loader = DataLoader(train_source_dataset,
                                     batch_size=args.batch_size,
                                     shuffle=True,
                                     num_workers=args.workers,
                                     drop_last=True)
    target_dataset = datasets.__dict__[args.target]
    train_target_dataset = target_dataset(root=args.target_root,
                                          mode=mode,
                                          download=True,
                                          transform=train_transform)
    train_target_loader = DataLoader(train_target_dataset,
                                     batch_size=args.batch_size,
                                     shuffle=True,
                                     num_workers=args.workers,
                                     drop_last=True)
    val_dataset = target_dataset(root=args.target_root,
                                 mode=mode,
                                 split='test',
                                 download=True,
                                 transform=val_transform)
    val_loader = DataLoader(val_dataset,
                            batch_size=args.batch_size,
                            shuffle=False,
                            num_workers=args.workers)

    train_source_iter = ForeverDataIterator(train_source_loader)
    train_target_iter = ForeverDataIterator(train_target_loader)

    # create model
    print("=> using pre-trained model '{}'".format(args.arch))
    arch = models.__dict__[args.arch]()
    bottleneck = nn.Sequential(
        nn.Flatten(), nn.Linear(arch.bottleneck_dim, arch.bottleneck_dim),
        nn.BatchNorm1d(arch.bottleneck_dim), nn.ReLU(), nn.Dropout(0.5))
    head = arch.head()
    adv_head = arch.head()
    classifier = GeneralModule(arch.backbone(),
                               arch.num_classes,
                               bottleneck,
                               head,
                               adv_head,
                               finetune=False)
    mdd = MarginDisparityDiscrepancy(args.margin).to(device)

    # define optimizer and lr scheduler
    optimizer = Adam(classifier.get_parameters(),
                     args.lr,
                     betas=args.betas,
                     weight_decay=args.wd)
    lr_scheduler = LambdaLR(
        optimizer, lambda x: args.lr *
        (1. + args.lr_gamma * float(x))**(-args.lr_decay))

    # resume from the best checkpoint
    if args.phase != 'train':
        checkpoint = torch.load(logger.get_checkpoint_path('best'),
                                map_location='cpu')
        classifier.load_state_dict(checkpoint)

    # analysis the model
    if args.phase == 'analysis':
        # extract features from both domains
        feature_extractor = torch.nn.Sequential(
            classifier.backbone, classifier.bottleneck).to(device)
        source_feature = collect_feature(train_source_loader,
                                         feature_extractor, device, 10)
        target_feature = collect_feature(val_loader, feature_extractor, device,
                                         10)
        # plot t-SNE
        tSNE_filename = osp.join(logger.visualize_directory, 'TSNE.png')
        tsne.visualize(source_feature, target_feature, tSNE_filename)
        print("Saving t-SNE to", tSNE_filename)
        # calculate A-distance, which is a measure for distribution discrepancy
        A_distance = a_distance.calculate(source_feature, target_feature,
                                          device)
        print("A-distance =", A_distance)
        return

    if args.phase == 'test':
        acc1 = validate(val_loader, classifier, args)
        print(acc1)
        return

    # start training
    best_acc1 = 0.
    for epoch in range(args.epochs):
        print(lr_scheduler.get_lr())
        # train for one epoch
        train(train_source_iter, train_target_iter, classifier, mdd, optimizer,
              lr_scheduler, epoch, args)

        # evaluate on validation set
        acc1 = validate(val_loader, classifier, args)

        # remember best acc@1 and save checkpoint
        torch.save(classifier.state_dict(),
                   logger.get_checkpoint_path('latest'))
        if acc1 > best_acc1:
            shutil.copy(logger.get_checkpoint_path('latest'),
                        logger.get_checkpoint_path('best'))
        best_acc1 = max(acc1, best_acc1)

    print("best_acc1 = {:3.1f}".format(best_acc1))

    logger.close()
Exemplo n.º 5
0
def main(args: argparse.Namespace):
    logger = CompleteLogger(args.log, args.phase)

    if args.seed is not None:
        random.seed(args.seed)
        torch.manual_seed(args.seed)
        cudnn.deterministic = True
        warnings.warn('You have chosen to seed training. '
                      'This will turn on the CUDNN deterministic setting, '
                      'which can slow down your training considerably! '
                      'You may see unexpected behavior when restarting '
                      'from checkpoints.')

    cudnn.benchmark = True

    # Data loading code
    normalize = T.Normalize(mean=[0.485, 0.456, 0.406],
                            std=[0.229, 0.224, 0.225])
    if args.center_crop:
        train_transform = T.Compose([
            ResizeImage(256),
            T.CenterCrop(224),
            T.RandomHorizontalFlip(),
            T.ToTensor(), normalize
        ])
    else:
        train_transform = T.Compose([
            ResizeImage(256),
            T.RandomCrop(224),
            T.RandomHorizontalFlip(),
            T.ToTensor(), normalize
        ])
    val_transform = T.Compose(
        [ResizeImage(256),
         T.CenterCrop(224),
         T.ToTensor(), normalize])

    dataset = datasets.__dict__[args.data]
    train_source_dataset = dataset(root=args.root,
                                   task=args.source,
                                   download=True,
                                   transform=train_transform)
    train_source_loader = DataLoader(train_source_dataset,
                                     batch_size=args.batch_size,
                                     shuffle=True,
                                     num_workers=args.workers,
                                     drop_last=True)
    train_target_dataset = dataset(root=args.root,
                                   task=args.target,
                                   download=True,
                                   transform=train_transform)
    train_target_loader = DataLoader(train_target_dataset,
                                     batch_size=args.batch_size,
                                     shuffle=True,
                                     num_workers=args.workers,
                                     drop_last=True)
    val_dataset = dataset(root=args.root,
                          task=args.target,
                          download=True,
                          transform=val_transform)
    val_loader = DataLoader(val_dataset,
                            batch_size=args.batch_size,
                            shuffle=False,
                            num_workers=args.workers)
    if args.data == 'DomainNet':
        test_dataset = dataset(root=args.root,
                               task=args.target,
                               split='test',
                               download=True,
                               transform=val_transform)
        test_loader = DataLoader(test_dataset,
                                 batch_size=args.batch_size,
                                 shuffle=False,
                                 num_workers=args.workers)
    else:
        test_loader = val_loader

    train_source_iter = ForeverDataIterator(train_source_loader)
    train_target_iter = ForeverDataIterator(train_target_loader)

    # create model
    print("=> using pre-trained model '{}'".format(args.arch))
    backbone = models.__dict__[args.arch](pretrained=True)
    classifier = ImageClassifier(backbone,
                                 train_source_dataset.num_classes,
                                 args.num_blocks,
                                 bottleneck_dim=args.bottleneck_dim,
                                 dropout_p=args.dropout_p).to(device)
    adaptive_feature_norm = AdaptiveFeatureNorm(args.delta).to(device)

    # define optimizer
    # the learning rate is fixed according to origin paper
    optimizer = SGD(classifier.get_parameters(),
                    args.lr,
                    weight_decay=args.weight_decay)

    # resume from the best checkpoint
    if args.phase != 'train':
        checkpoint = torch.load(logger.get_checkpoint_path('best'),
                                map_location='cpu')
        classifier.load_state_dict(checkpoint)

    # analysis the model
    if args.phase == 'analysis':
        # extract features from both domains
        feature_extractor = nn.Sequential(classifier.backbone,
                                          classifier.bottleneck).to(device)
        source_feature = collect_feature(train_source_loader,
                                         feature_extractor, device)
        target_feature = collect_feature(train_target_loader,
                                         feature_extractor, device)
        # plot t-SNE
        tSNE_filename = osp.join(logger.visualize_directory, 'TSNE.png')
        tsne.visualize(source_feature, target_feature, tSNE_filename)
        print("Saving t-SNE to", tSNE_filename)
        # calculate A-distance, which is a measure for distribution discrepancy
        A_distance = a_distance.calculate(source_feature, target_feature,
                                          device)
        print("A-distance =", A_distance)
        return

    if args.phase == 'test':
        acc1 = validate(test_loader, classifier, args)
        print(acc1)
        return

    # start training
    best_acc1 = 0.
    for epoch in range(args.epochs):
        # train for one epoch
        train(train_source_iter, train_target_iter, classifier,
              adaptive_feature_norm, optimizer, epoch, args)

        # evaluate on validation set
        acc1 = validate(val_loader, classifier, args)

        # remember best acc@1 and save checkpoint
        torch.save(classifier.state_dict(),
                   logger.get_checkpoint_path('latest'))
        if acc1 > best_acc1:
            shutil.copy(logger.get_checkpoint_path('latest'),
                        logger.get_checkpoint_path('best'))
        best_acc1 = max(acc1, best_acc1)

    print("best_acc1 = {:3.1f}".format(best_acc1))

    # evaluate on test set
    classifier.load_state_dict(torch.load(logger.get_checkpoint_path('best')))
    acc1 = validate(test_loader, classifier, args)
    print("test_acc1 = {:3.1f}".format(acc1))

    logger.close()
Exemplo n.º 6
0
def main(args: argparse.Namespace):
    logger = CompleteLogger(args.log, args.phase)
    print(args)

    if args.seed is not None:
        random.seed(args.seed)
        torch.manual_seed(args.seed)
        cudnn.deterministic = True
        warnings.warn('You have chosen to seed training. '
                      'This will turn on the CUDNN deterministic setting, '
                      'which can slow down your training considerably! '
                      'You may see unexpected behavior when restarting '
                      'from checkpoints.')

    cudnn.benchmark = True

    # Data loading code
    train_transform = utils.get_train_transform(args.train_resizing, random_horizontal_flip=not args.no_hflip,
                                                random_color_jitter=False, resize_size=args.resize_size,
                                                norm_mean=args.norm_mean, norm_std=args.norm_std)
    val_transform = utils.get_val_transform(args.val_resizing, resize_size=args.resize_size,
                                            norm_mean=args.norm_mean, norm_std=args.norm_std)
    print("train_transform: ", train_transform)
    print("val_transform: ", val_transform)

    train_source_dataset, train_target_dataset, val_dataset, test_dataset, num_classes, args.class_names = \
        utils.get_dataset(args.data, args.root, args.source, args.target, train_transform, val_transform)
    train_source_loader = DataLoader(train_source_dataset, batch_size=args.batch_size,
                                     shuffle=True, num_workers=args.workers, drop_last=True)
    train_target_loader = DataLoader(train_target_dataset, batch_size=args.batch_size,
                                     shuffle=True, num_workers=args.workers, drop_last=True)
    val_loader = DataLoader(val_dataset, batch_size=args.batch_size, shuffle=False, num_workers=args.workers)
    test_loader = DataLoader(test_dataset, batch_size=args.batch_size, shuffle=False, num_workers=args.workers)

    train_source_iter = ForeverDataIterator(train_source_loader)
    train_target_iter = ForeverDataIterator(train_target_loader)

    # create model
    print("=> using model '{}'".format(args.arch))
    backbone = utils.get_model(args.arch, pretrain=not args.scratch)
    pool_layer = nn.Identity() if args.no_pool else None
    classifier = ImageClassifier(backbone, num_classes, args.num_blocks,
                                 bottleneck_dim=args.bottleneck_dim, dropout_p=args.dropout_p,
                                 pool_layer=pool_layer, finetune=not args.scratch).to(device)
    adaptive_feature_norm = AdaptiveFeatureNorm(args.delta).to(device)

    # define optimizer
    # the learning rate is fixed according to origin paper
    optimizer = SGD(classifier.get_parameters(), args.lr, weight_decay=args.weight_decay)

    # resume from the best checkpoint
    if args.phase != 'train':
        checkpoint = torch.load(logger.get_checkpoint_path('best'), map_location='cpu')
        classifier.load_state_dict(checkpoint)

    # analysis the model
    if args.phase == 'analysis':
        # extract features from both domains
        feature_extractor = nn.Sequential(classifier.backbone, classifier.pool_layer, classifier.bottleneck).to(device)
        source_feature = collect_feature(train_source_loader, feature_extractor, device)
        target_feature = collect_feature(train_target_loader, feature_extractor, device)
        # plot t-SNE
        tSNE_filename = osp.join(logger.visualize_directory, 'TSNE.pdf')
        tsne.visualize(source_feature, target_feature, tSNE_filename)
        print("Saving t-SNE to", tSNE_filename)
        # calculate A-distance, which is a measure for distribution discrepancy
        A_distance = a_distance.calculate(source_feature, target_feature, device)
        print("A-distance =", A_distance)
        return

    if args.phase == 'test':
        acc1 = utils.validate(test_loader, classifier, args, device)
        print(acc1)
        return

    # start training
    best_acc1 = 0.
    for epoch in range(args.epochs):
        # train for one epoch
        train(train_source_iter, train_target_iter, classifier, adaptive_feature_norm, optimizer, epoch, args)

        # evaluate on validation set
        acc1 = utils.validate(val_loader, classifier, args, device)

        # remember best acc@1 and save checkpoint
        torch.save(classifier.state_dict(), logger.get_checkpoint_path('latest'))
        if acc1 > best_acc1:
            shutil.copy(logger.get_checkpoint_path('latest'), logger.get_checkpoint_path('best'))
        best_acc1 = max(acc1, best_acc1)

    print("best_acc1 = {:3.1f}".format(best_acc1))

    # evaluate on test set
    classifier.load_state_dict(torch.load(logger.get_checkpoint_path('best')))
    acc1 = utils.validate(test_loader, classifier, args, device)
    print("test_acc1 = {:3.1f}".format(acc1))

    logger.close()
Exemplo n.º 7
0
def main(args: argparse.Namespace):
    logger = CompleteLogger(args.log, args.phase)
    print(args)

    if args.seed is not None:
        random.seed(args.seed)
        torch.manual_seed(args.seed)
        cudnn.deterministic = True
        warnings.warn('You have chosen to seed training. '
                      'This will turn on the CUDNN deterministic setting, '
                      'which can slow down your training considerably! '
                      'You may see unexpected behavior when restarting '
                      'from checkpoints.')

    cudnn.benchmark = True

    # Data loading code
    normalize = T.Normalize(mean=[0.485, 0.456, 0.406],
                            std=[0.229, 0.224, 0.225])
    if args.center_crop:
        train_transform = T.Compose([
            ResizeImage(256),
            T.CenterCrop(224),
            T.RandomHorizontalFlip(),
            T.ToTensor(), normalize
        ])
    else:
        train_transform = T.Compose([
            ResizeImage(256),
            T.RandomResizedCrop(224),
            T.RandomHorizontalFlip(),
            T.ToTensor(), normalize
        ])
    val_transform = T.Compose(
        [ResizeImage(256),
         T.CenterCrop(224),
         T.ToTensor(), normalize])

    dataset = datasets.__dict__[args.data]
    """
    dataset settings for SECC
    """
    from common.vision.datasets.office31 import Office31
    public_classes = Office31.CLASSES[:10]
    source_private = Office31.CLASSES[10:20]
    target_private = Office31.CLASSES[20:]

    source_dataset = open_set(dataset, public_classes, source_private)
    target_dataset = open_set(dataset, public_classes, target_private)
    """"""

    train_source_dataset = source_dataset(root=args.root,
                                          task=args.source,
                                          download=True,
                                          transform=train_transform)
    train_source_loader = DataLoader(train_source_dataset,
                                     batch_size=args.batch_size,
                                     shuffle=True,
                                     num_workers=args.workers,
                                     drop_last=True)
    train_target_dataset = target_dataset(root=args.root,
                                          task=args.target,
                                          download=True,
                                          transform=train_transform)
    train_target_loader = DataLoader(train_target_dataset,
                                     batch_size=args.batch_size,
                                     shuffle=True,
                                     num_workers=args.workers,
                                     drop_last=True)
    val_dataset = target_dataset(root=args.root,
                                 task=args.target,
                                 download=True,
                                 transform=val_transform)
    val_loader = DataLoader(val_dataset,
                            batch_size=args.batch_size,
                            shuffle=False,
                            num_workers=args.workers)

    train_source_iter = ForeverDataIterator(train_source_loader)
    train_target_iter = ForeverDataIterator(train_target_loader)

    test_loader = val_loader

    # create model
    print("=> using pre-trained model '{}'".format(args.arch))
    num_classes = train_source_dataset.num_classes
    backbone = models.__dict__[args.arch](pretrained=True)
    """
    mean teacher model for SECC
    """

    classifier = ImageClassifier(backbone,
                                 num_classes,
                                 bottleneck_dim=args.bottleneck_dim).to(device)
    teacher = EmaTeacher(classifier, 0.9)

    k = 25
    """
    distribution cluster for SECC
    """
    print("=> initiating k-means clusters")
    feature_extractor = FeatureExtractor(backbone)
    cluster_distribution = ClusterDistribution(train_target_loader,
                                               feature_extractor,
                                               k=k)
    """
    cluster assignment for SECC
    """
    cluster_assignment = ASoftmax(
        feature_extractor,
        num_clusters=k,
        num_features=cluster_distribution.num_features).to(device)
    """
    loss functions for SECC
    """

    kl_loss = nn.KLDivLoss().to(device)
    conditional_loss = ConditionalEntropyLoss().to(device)
    consistent_loss = L2ConsistencyLoss().to(device)
    class_balance_loss = ClassBalanceLoss(num_classes).to(device)

    # define optimizer and lr scheduler
    optimizer = SGD(classifier.get_parameters() +
                    cluster_assignment.get_parameters(),
                    args.lr,
                    momentum=args.momentum,
                    weight_decay=args.weight_decay,
                    nesterov=True)
    lr_scheduler = LambdaLR(
        optimizer, lambda x: args.lr *
        (1. + args.lr_gamma * float(x))**(-args.lr_decay))

    # analysis the model
    if args.phase == 'analysis':
        # extract features from both domains
        feature_extractor = nn.Sequential(classifier.backbone,
                                          classifier.bottleneck).to(device)
        source_feature = collect_feature(train_source_loader,
                                         feature_extractor, device)
        target_feature = collect_feature(train_target_loader,
                                         feature_extractor, device)
        # plot t-SNE
        tSNE_filename = osp.join(logger.visualize_directory, 'TSNE.png')
        tsne.visualize(source_feature, target_feature, tSNE_filename)
        print("Saving t-SNE to", tSNE_filename)
        # calculate A-distance, which is a measure for distribution discrepancy
        A_distance = a_distance.calculate(source_feature, target_feature,
                                          device)
        print("A-distance =", A_distance)
        return

    if args.phase == 'test':
        acc1 = validate(test_loader, classifier, args)
        print(acc1)
        return

    # start training
    best_h_score = 0.
    for epoch in range(args.epochs):
        # train for one epoch
        train(train_source_iter, train_target_iter, classifier, teacher,
              cluster_assignment, cluster_distribution, consistent_loss,
              class_balance_loss, kl_loss, conditional_loss, optimizer,
              lr_scheduler, epoch, args)

        # evaluate on validation set
        h_score = validate(val_loader, classifier, args)

        # remember best acc@1 and save checkpoint
        torch.save(classifier.state_dict(),
                   logger.get_checkpoint_path('latest'))
        if h_score > best_h_score:
            shutil.copy(logger.get_checkpoint_path('latest'),
                        logger.get_checkpoint_path('best'))
        best_h_score = max(h_score, best_h_score)

    print("best_h_score = {:3.1f}".format(best_h_score))

    # evaluate on test set
    classifier.load_state_dict(torch.load(logger.get_checkpoint_path('best')))
    h_score = validate(test_loader, classifier, args)
    print("test_h_score = {:3.1f}".format(h_score))

    logger.close()
Exemplo n.º 8
0
def main(args: argparse.Namespace):
    logger = CompleteLogger(args.log, args.phase)
    print(args)

    if args.seed is not None:
        random.seed(args.seed)
        torch.manual_seed(args.seed)
        cudnn.deterministic = True
        warnings.warn('You have chosen to seed training. '
                      'This will turn on the CUDNN deterministic setting, '
                      'which can slow down your training considerably! '
                      'You may see unexpected behavior when restarting '
                      'from checkpoints.')

    cudnn.benchmark = True

    # Data loading code
    normalize = T.Normalize(mean=[0.485, 0.456, 0.406],
                            std=[0.229, 0.224, 0.225])
    if args.center_crop:
        train_transform = T.Compose([
            ResizeImage(256),
            T.CenterCrop(224),
            T.RandomHorizontalFlip(),
            T.ToTensor(), normalize
        ])
    else:
        train_transform = T.Compose([
            ResizeImage(256),
            T.RandomResizedCrop(224),
            T.RandomHorizontalFlip(),
            T.ToTensor(), normalize
        ])
    val_transform = T.Compose(
        [ResizeImage(256),
         T.CenterCrop(224),
         T.ToTensor(), normalize])

    dataset = datasets.__dict__[args.data]
    train_source_dataset = dataset(root=args.root,
                                   task=args.source,
                                   download=True,
                                   transform=train_transform)
    train_source_loader = DataLoader(train_source_dataset,
                                     batch_size=args.batch_size,
                                     shuffle=True,
                                     num_workers=args.workers,
                                     drop_last=True)
    train_target_dataset = dataset(root=args.root,
                                   task=args.target,
                                   download=True,
                                   transform=train_transform)
    train_target_loader = DataLoader(train_target_dataset,
                                     batch_size=args.batch_size,
                                     shuffle=True,
                                     num_workers=args.workers,
                                     drop_last=True)
    val_dataset = dataset(root=args.root,
                          task=args.target,
                          download=True,
                          transform=val_transform)
    val_loader = DataLoader(val_dataset,
                            batch_size=args.batch_size,
                            shuffle=False,
                            num_workers=args.workers)
    if args.data == 'DomainNet':
        test_dataset = dataset(root=args.root,
                               task=args.target,
                               split='test',
                               download=True,
                               transform=val_transform)
        test_loader = DataLoader(test_dataset,
                                 batch_size=args.batch_size,
                                 shuffle=False,
                                 num_workers=args.workers)
    else:
        test_loader = val_loader

    train_source_iter = ForeverDataIterator(train_source_loader)
    train_target_iter = ForeverDataIterator(train_target_loader)

    # create model
    print("=> using pre-trained model '{}'".format(args.arch))
    backbone = models.__dict__[args.arch](pretrained=True)
    num_classes = train_source_dataset.num_classes
    classifier = ImageClassifier(backbone,
                                 num_classes,
                                 bottleneck_dim=args.bottleneck_dim).to(device)

    # define loss function
    if args.adversarial:
        thetas = [
            Theta(dim).to(device)
            for dim in (classifier.features_dim, num_classes)
        ]
    else:
        thetas = None
    jmmd_loss = JointMultipleKernelMaximumMeanDiscrepancy(
        kernels=([GaussianKernel(alpha=2**k) for k in range(-3, 2)],
                 (GaussianKernel(sigma=0.92, track_running_stats=False), )),
        linear=args.linear,
        thetas=thetas).to(device)

    parameters = classifier.get_parameters()
    if thetas is not None:
        parameters += [{
            "params": theta.parameters(),
            'lr': 0.1
        } for theta in thetas]

    # define optimizer
    optimizer = SGD(parameters,
                    args.lr,
                    momentum=args.momentum,
                    weight_decay=args.wd,
                    nesterov=True)
    lr_scheduler = LambdaLR(
        optimizer, lambda x: args.lr *
        (1. + args.lr_gamma * float(x))**(-args.lr_decay))

    # resume from the best checkpoint
    if args.phase != 'train':
        checkpoint = torch.load(logger.get_checkpoint_path('best'),
                                map_location='cpu')
        classifier.load_state_dict(checkpoint)

    # analysis the model
    if args.phase == 'analysis':
        # extract features from both domains
        feature_extractor = nn.Sequential(classifier.backbone,
                                          classifier.bottleneck).to(device)
        source_feature = collect_feature(train_source_loader,
                                         feature_extractor, device)
        target_feature = collect_feature(train_target_loader,
                                         feature_extractor, device)
        # plot t-SNE
        tSNE_filename = osp.join(logger.visualize_directory, 'TSNE.png')
        tsne.visualize(source_feature, target_feature, tSNE_filename)
        print("Saving t-SNE to", tSNE_filename)
        # calculate A-distance, which is a measure for distribution discrepancy
        A_distance = a_distance.calculate(source_feature, target_feature,
                                          device)
        print("A-distance =", A_distance)
        return

    if args.phase == 'test':
        acc1 = validate(test_loader, classifier, args)
        print(acc1)
        return

    # start training
    best_acc1 = 0.
    for epoch in range(args.epochs):
        # train for one epoch
        train(train_source_iter, train_target_iter, classifier, jmmd_loss,
              optimizer, lr_scheduler, epoch, args)

        # evaluate on validation set
        acc1 = validate(val_loader, classifier, args)

        # remember best acc@1 and save checkpoint
        torch.save(classifier.state_dict(),
                   logger.get_checkpoint_path('latest'))
        if acc1 > best_acc1:
            shutil.copy(logger.get_checkpoint_path('latest'),
                        logger.get_checkpoint_path('best'))
        best_acc1 = max(acc1, best_acc1)

    print("best_acc1 = {:3.1f}".format(best_acc1))

    # evaluate on test set
    classifier.load_state_dict(torch.load(logger.get_checkpoint_path('best')))
    acc1 = validate(test_loader, classifier, args)
    print("test_acc1 = {:3.1f}".format(acc1))

    logger.close()
Exemplo n.º 9
0
def main(args: argparse.Namespace):
    logger = CompleteLogger(args.log, args.phase)

    if args.seed is not None:
        random.seed(args.seed)
        torch.manual_seed(args.seed)
        cudnn.deterministic = True
        warnings.warn('You have chosen to seed training. '
                      'This will turn on the CUDNN deterministic setting, '
                      'which can slow down your training considerably! '
                      'You may see unexpected behavior when restarting '
                      'from checkpoints.')

    cudnn.benchmark = True

    # Data loading code
    if args.num_channels == 3:
        mode = 'RGB'
        mean = std = [0.5, 0.5, 0.5]
    else:
        mode = 'L'
        mean = std = [
            0.5,
        ]
    normalize = T.Normalize(mean=mean, std=std)

    if args.resume_cyclegan is not None:
        print("Use CycleGAN to translate source images into target style")
        checkpoint = torch.load(args.resume_cyclegan, map_location='cpu')
        nc = args.num_channels
        netG_S2T = cyclegan.generator.__dict__[args.netG](
            ngf=args.ngf,
            norm=args.norm,
            use_dropout=False,
            input_nc=nc,
            output_nc=nc).to(device)
        print("Loading CycleGAN model from", args.resume_cyclegan)
        netG_S2T.load_state_dict(checkpoint['netG_S2T'])
        train_transform = T.Compose([
            ResizeImage(args.image_size),
            cyclegan.transform.Translation(netG_S2T,
                                           device,
                                           mean=mean,
                                           std=std),
            T.ToTensor(), normalize
        ])
    else:
        train_transform = T.Compose(
            [ResizeImage(args.image_size),
             T.ToTensor(), normalize])
    val_transform = T.Compose(
        [ResizeImage(args.image_size),
         T.ToTensor(), normalize])

    source_dataset = datasets.__dict__[args.source]
    train_source_dataset = source_dataset(root=args.source_root,
                                          mode=mode,
                                          download=True,
                                          transform=train_transform)
    train_source_loader = DataLoader(train_source_dataset,
                                     batch_size=args.batch_size,
                                     shuffle=True,
                                     num_workers=args.workers,
                                     drop_last=True)
    target_dataset = datasets.__dict__[args.target]
    val_dataset = target_dataset(root=args.target_root,
                                 mode=mode,
                                 split='test',
                                 download=True,
                                 transform=val_transform)
    val_loader = DataLoader(val_dataset,
                            batch_size=args.batch_size,
                            shuffle=False,
                            num_workers=args.workers)

    train_source_iter = ForeverDataIterator(train_source_loader)
    print(len(train_source_dataset))
    # create model
    print("=> using pre-trained model '{}'".format(args.arch))
    arch = models.__dict__[args.arch]()
    classifier = Classifier(arch.backbone(), arch.num_classes,
                            arch.bottleneck(), arch.bottleneck_dim,
                            arch.head(), False).to(device)

    # define optimizer and lr scheduler
    optimizer = Adam(classifier.get_parameters(),
                     args.lr,
                     betas=args.betas,
                     weight_decay=args.wd)
    lr_scheduler = LambdaLR(
        optimizer, lambda x: args.lr *
        (1. + args.lr_gamma * float(x))**(-args.lr_decay))

    # resume from the best checkpoint
    if args.phase != 'train':
        checkpoint = torch.load(logger.get_checkpoint_path('best'),
                                map_location='cpu')
        classifier.load_state_dict(checkpoint)

    # analysis the model
    if args.phase == 'analysis':
        # using shuffled val loader
        val_loader = DataLoader(val_dataset,
                                batch_size=args.batch_size,
                                shuffle=True,
                                num_workers=args.workers)
        # extract features from both domains
        feature_extractor = classifier.backbone.to(device)
        source_feature = collect_feature(train_source_loader,
                                         feature_extractor, device, 10)
        target_feature = collect_feature(val_loader, feature_extractor, device,
                                         10)
        # plot t-SNE
        tSNE_filename = osp.join(logger.visualize_directory, 'TSNE.png')
        tsne.visualize(source_feature, target_feature, tSNE_filename)
        print("Saving t-SNE to", tSNE_filename)
        # calculate A-distance, which is a measure for distribution discrepancy
        A_distance = a_distance.calculate(source_feature, target_feature,
                                          device)
        print("A-distance =", A_distance)
        return

    if args.phase == 'test':
        acc1 = validate(val_loader, classifier, args)
        print(acc1)
        return

    # start training
    best_acc1 = 0.
    for epoch in range(args.epochs):
        # train for one epoch
        train(train_source_iter, classifier, optimizer, lr_scheduler, epoch,
              args)

        # evaluate on validation set
        acc1 = validate(val_loader, classifier, args)

        # remember best acc@1 and save checkpoint
        torch.save(classifier.state_dict(),
                   logger.get_checkpoint_path('latest'))
        if acc1 > best_acc1:
            shutil.copy(logger.get_checkpoint_path('latest'),
                        logger.get_checkpoint_path('best'))
        best_acc1 = max(acc1, best_acc1)

    print("best_acc1 = {:3.1f}".format(best_acc1))

    logger.close()
Exemplo n.º 10
0
def main(args: argparse.Namespace):
    logger = CompleteLogger(args.log, args.phase)

    if args.seed is not None:
        random.seed(args.seed)
        torch.manual_seed(args.seed)
        cudnn.deterministic = True
        warnings.warn('You have chosen to seed training. '
                      'This will turn on the CUDNN deterministic setting, '
                      'which can slow down your training considerably! '
                      'You may see unexpected behavior when restarting '
                      'from checkpoints.')

    cudnn.benchmark = True

    # Data loading code
    normalize = T.Normalize(mean=[0.485, 0.456, 0.406],
                            std=[0.229, 0.224, 0.225])
    if args.center_crop:
        train_transform = T.Compose([
            ResizeImage(256),
            T.CenterCrop(224),
            T.RandomHorizontalFlip(),
            T.ToTensor(), normalize
        ])
    else:
        train_transform = T.Compose([
            ResizeImage(256),
            T.RandomResizedCrop(224),
            T.RandomHorizontalFlip(),
            T.ToTensor(), normalize
        ])
    val_transform = T.Compose(
        [ResizeImage(256),
         T.CenterCrop(224),
         T.ToTensor(), normalize])

    # __dict__这里可以查一下百度,实际上就是类里面的各种静态变量之类的
    # 官方示例--data office31,实际上这里是common/vision/datasets/office31.py 里面定义类的实例化
    # 可以在这里直接实例化common/vision/datasets/imagelist.py 里面定义的类ImageList
    dataset = datasets.__dict__[args.data]
    train_source_dataset = dataset(root=args.root,
                                   task=args.source,
                                   download=False,
                                   transform=train_transform)
    train_source_loader = DataLoader(train_source_dataset,
                                     batch_size=args.batch_size,
                                     shuffle=True,
                                     num_workers=args.workers,
                                     drop_last=True)
    train_target_dataset = dataset(root=args.root,
                                   task=args.target,
                                   download=False,
                                   transform=train_transform)
    train_target_loader = DataLoader(train_target_dataset,
                                     batch_size=args.batch_size,
                                     shuffle=True,
                                     num_workers=args.workers,
                                     drop_last=True)
    val_dataset = dataset(root=args.root,
                          task=args.validation,
                          download=False,
                          transform=val_transform)
    val_loader = DataLoader(val_dataset,
                            batch_size=args.batch_size,
                            shuffle=False,
                            num_workers=args.workers)
    if args.data == 'DomainNet':
        test_dataset = dataset(root=args.root,
                               task=args.target,
                               split='test',
                               download=True,
                               transform=val_transform)
        test_loader = DataLoader(test_dataset,
                                 batch_size=args.batch_size,
                                 shuffle=False,
                                 num_workers=args.workers)
    else:
        test_loader = val_loader

    train_source_iter = ForeverDataIterator(train_source_loader)
    train_target_iter = ForeverDataIterator(train_target_loader)

    # create model
    print("=> using pre-trained model '{}'".format(args.arch))
    backbone = models.__dict__[args.arch](pretrained=True)
    classifier = ImageClassifier(backbone,
                                 train_source_dataset.num_classes,
                                 bottleneck_dim=args.bottleneck_dim).to(device)
    domain_discri = DomainDiscriminator(in_feature=classifier.features_dim,
                                        hidden_size=1024).to(device)

    # define optimizer and lr scheduler
    optimizer = SGD(classifier.get_parameters() +
                    domain_discri.get_parameters(),
                    args.lr,
                    momentum=args.momentum,
                    weight_decay=args.weight_decay,
                    nesterov=True)
    lr_scheduler = LambdaLR(
        optimizer, lambda x: args.lr *
        (1. + args.lr_gamma * float(x))**(-args.lr_decay))

    # define loss function
    domain_adv = DomainAdversarialLoss(domain_discri).to(device)

    # resume from the best checkpoint
    if args.phase != 'train':
        checkpoint = torch.load(logger.get_checkpoint_path('best'),
                                map_location='cpu')
        classifier.load_state_dict(checkpoint)

    # analysis the model
    if args.phase == 'analysis':
        # extract features from both domains
        feature_extractor = nn.Sequential(classifier.backbone,
                                          classifier.bottleneck).to(device)
        source_feature = collect_feature(train_source_loader,
                                         feature_extractor, device)
        target_feature = collect_feature(train_target_loader,
                                         feature_extractor, device)
        # plot t-SNE
        tSNE_filename = osp.join(logger.visualize_directory, 'TSNE.png')
        tsne.visualize(source_feature, target_feature, tSNE_filename)
        print("Saving t-SNE to", tSNE_filename)
        # calculate A-distance, which is a measure for distribution discrepancy
        A_distance = a_distance.calculate(source_feature, target_feature,
                                          device)
        print("A-distance =", A_distance)
        return

    if args.phase == 'test':
        acc1 = validate(test_loader, classifier, args)
        print(acc1)
        return

    # start training
    best_acc1 = 0.
    for epoch in range(args.epochs):
        # train for one epoch
        train(train_source_iter, train_target_iter, classifier, domain_adv,
              optimizer, lr_scheduler, epoch, args)

        # evaluate on validation set
        acc1 = validate(val_loader, classifier, args)

        # remember best acc@1 and save checkpoint
        torch.save(classifier.state_dict(),
                   logger.get_checkpoint_path('latest'))
        if acc1 > best_acc1:
            shutil.copy(logger.get_checkpoint_path('latest'),
                        logger.get_checkpoint_path('best'))
        best_acc1 = max(acc1, best_acc1)

    print("best_acc1 = {:3.1f}".format(best_acc1))

    # evaluate on test set
    classifier.load_state_dict(torch.load(logger.get_checkpoint_path('best')))
    acc1 = validate(test_loader, classifier, args)
    print("test_acc1 = {:3.1f}".format(acc1))

    logger.close()
Exemplo n.º 11
0
def main(args: argparse.Namespace):
    logger = CompleteLogger(args.log, args.phase)
    print(args)

    if args.seed is not None:
        random.seed(args.seed)
        torch.manual_seed(args.seed)
        cudnn.deterministic = True
        warnings.warn('You have chosen to seed training. '
                      'This will turn on the CUDNN deterministic setting, '
                      'which can slow down your training considerably! '
                      'You may see unexpected behavior when restarting '
                      'from checkpoints.')

    cudnn.benchmark = True

    # Data loading code
    normalize = T.Normalize(mean=[0.485, 0.456, 0.406],
                            std=[0.229, 0.224, 0.225])
    train_transform = T.Compose([
        ResizeImage(256),
        T.RandomCrop(224),
        T.RandomHorizontalFlip(),
        T.ColorJitter(brightness=0.7, contrast=0.7, saturation=0.7, hue=0.5),
        T.RandomGrayscale(),
        T.ToTensor(), normalize
    ])
    val_transform = T.Compose(
        [ResizeImage(256),
         T.CenterCrop(224),
         T.ToTensor(), normalize])

    train_source_dataset, train_target_dataset, val_dataset, test_dataset, num_classes, args.class_names = \
        utils.get_dataset(args.data, args.root, args.source, args.target,
                          train_transform, val_transform, MultipleApply([train_transform, val_transform]))
    train_source_loader = DataLoader(train_source_dataset,
                                     batch_size=args.batch_size,
                                     shuffle=True,
                                     num_workers=args.workers,
                                     drop_last=True)
    train_target_loader = DataLoader(train_target_dataset,
                                     batch_size=args.batch_size,
                                     shuffle=True,
                                     num_workers=args.workers,
                                     drop_last=True)
    val_loader = DataLoader(val_dataset,
                            batch_size=args.batch_size,
                            shuffle=False,
                            num_workers=args.workers)
    test_loader = DataLoader(test_dataset,
                             batch_size=args.batch_size,
                             shuffle=False,
                             num_workers=args.workers)

    train_source_iter = ForeverDataIterator(train_source_loader)
    train_target_iter = ForeverDataIterator(train_target_loader)

    # create model
    print("=> using model '{}'".format(args.arch))
    backbone = utils.get_model(args.arch, pretrain=not args.scratch)
    pool_layer = nn.Identity() if args.no_pool else None
    classifier = ImageClassifier(backbone,
                                 num_classes,
                                 bottleneck_dim=args.bottleneck_dim,
                                 pool_layer=pool_layer,
                                 finetune=not args.scratch).to(device)

    # define optimizer and lr scheduler
    optimizer = Adam(classifier.get_parameters(), args.lr)
    lr_scheduler = LambdaLR(
        optimizer, lambda x: args.lr *
        (1. + args.lr_gamma * float(x))**(-args.lr_decay))

    # resume from the best checkpoint
    if args.phase != 'train':
        checkpoint = torch.load(logger.get_checkpoint_path('best'),
                                map_location='cpu')
        classifier.load_state_dict(checkpoint)

    # analysis the model
    if args.phase == 'analysis':
        # extract features from both domains
        feature_extractor = nn.Sequential(classifier.backbone,
                                          classifier.pool_layer,
                                          classifier.bottleneck).to(device)
        source_feature = collect_feature(train_source_loader,
                                         feature_extractor, device)
        target_feature = collect_feature(train_target_loader,
                                         feature_extractor, device)
        # plot t-SNE
        tSNE_filename = osp.join(logger.visualize_directory, 'TSNE.pdf')
        tsne.visualize(source_feature, target_feature, tSNE_filename)
        print("Saving t-SNE to", tSNE_filename)
        # calculate A-distance, which is a measure for distribution discrepancy
        A_distance = a_distance.calculate(source_feature, target_feature,
                                          device)
        print("A-distance =", A_distance)
        return

    if args.phase == 'test':
        acc1 = utils.validate(test_loader, classifier, args, device)
        print(acc1)
        return

    if args.pretrain is None:
        # first pretrain the classifier wish source data
        print("Pretraining the model on source domain.")
        args.pretrain = logger.get_checkpoint_path('pretrain')
        pretrain_model = ImageClassifier(backbone,
                                         num_classes,
                                         bottleneck_dim=args.bottleneck_dim,
                                         pool_layer=pool_layer,
                                         finetune=not args.scratch).to(device)
        pretrain_optimizer = Adam(pretrain_model.get_parameters(),
                                  args.pretrain_lr)
        pretrain_lr_scheduler = LambdaLR(
            pretrain_optimizer, lambda x: args.pretrain_lr *
            (1. + args.lr_gamma * float(x))**(-args.lr_decay))

        # start pretraining
        for epoch in range(args.pretrain_epochs):
            # pretrain for one epoch
            utils.pretrain(train_source_iter, pretrain_model,
                           pretrain_optimizer, pretrain_lr_scheduler, epoch,
                           args, device)
            # validate to show pretrain process
            utils.validate(val_loader, pretrain_model, args, device)

        torch.save(pretrain_model.state_dict(), args.pretrain)
        print("Pretraining process is done.")

    checkpoint = torch.load(args.pretrain, map_location='cpu')
    classifier.load_state_dict(checkpoint)
    teacher = EmaTeacher(classifier, alpha=args.alpha)
    consistent_loss = L2ConsistencyLoss().to(device)
    class_balance_loss = ClassBalanceLoss(num_classes).to(device)

    # start training
    best_acc1 = 0.
    for epoch in range(args.epochs):
        print(lr_scheduler.get_lr())
        # train for one epoch
        train(train_source_iter, train_target_iter, classifier, teacher,
              consistent_loss, class_balance_loss, optimizer, lr_scheduler,
              epoch, args)

        # evaluate on validation set
        acc1 = utils.validate(val_loader, classifier, args, device)

        # remember best acc@1 and save checkpoint
        torch.save(classifier.state_dict(),
                   logger.get_checkpoint_path('latest'))
        if acc1 > best_acc1:
            shutil.copy(logger.get_checkpoint_path('latest'),
                        logger.get_checkpoint_path('best'))
        best_acc1 = max(acc1, best_acc1)

    print("best_acc1 = {:3.1f}".format(best_acc1))

    # evaluate on test set
    classifier.load_state_dict(torch.load(logger.get_checkpoint_path('best')))
    acc1 = utils.validate(test_loader, classifier, args, device)
    print("test_acc1 = {:3.1f}".format(acc1))

    logger.close()
Exemplo n.º 12
0
def main(args: argparse.Namespace):
    logger = CompleteLogger(args.log, args.phase)
    print(args)

    if args.seed is not None:
        random.seed(args.seed)
        torch.manual_seed(args.seed)
        cudnn.deterministic = True
        warnings.warn('You have chosen to seed training. '
                      'This will turn on the CUDNN deterministic setting, '
                      'which can slow down your training considerably! '
                      'You may see unexpected behavior when restarting '
                      'from checkpoints.')

    cudnn.benchmark = True

    # Data loading code
    train_transform = utils.get_train_transform(args.train_resizing,
                                                random_horizontal_flip=True,
                                                random_color_jitter=False)
    val_transform = utils.get_val_transform(args.val_resizing)
    print("train_transform: ", train_transform)
    print("val_transform: ", val_transform)

    train_source_dataset, train_target_dataset, val_dataset, test_dataset, num_classes, args.class_names = \
        utils.get_dataset(args.data, args.root, args.source, args.target, train_transform, val_transform)
    train_source_loader = DataLoader(train_source_dataset,
                                     batch_size=args.batch_size,
                                     shuffle=True,
                                     num_workers=args.workers,
                                     drop_last=True)
    train_target_loader = DataLoader(train_target_dataset,
                                     batch_size=args.batch_size,
                                     shuffle=True,
                                     num_workers=args.workers,
                                     drop_last=True)
    val_loader = DataLoader(val_dataset,
                            batch_size=args.batch_size,
                            shuffle=False,
                            num_workers=args.workers)
    test_loader = DataLoader(test_dataset,
                             batch_size=args.batch_size,
                             shuffle=False,
                             num_workers=args.workers)

    train_source_iter = ForeverDataIterator(train_source_loader)
    train_target_iter = ForeverDataIterator(train_target_loader)

    # create model
    print("=> using pre-trained model '{}'".format(args.arch))
    backbone = utils.get_model(args.arch)
    pool_layer = nn.Identity() if args.no_pool else None
    classifier = Classifier(backbone,
                            num_classes,
                            bottleneck_dim=args.bottleneck_dim,
                            pool_layer=pool_layer).to(device)
    print(classifier)
    unknown_bce = UnknownClassBinaryCrossEntropy(t=0.5)

    # define optimizer and lr scheduler
    optimizer = SGD(classifier.get_parameters(),
                    args.lr,
                    momentum=args.momentum,
                    weight_decay=args.wd,
                    nesterov=True)
    lr_scheduler = LambdaLR(
        optimizer, lambda x: args.lr *
        (1. + args.lr_gamma * float(x))**(-args.lr_decay))

    # analysis the model
    if args.phase == 'analysis':
        # extract features from both domains
        feature_extractor = nn.Sequential(classifier.backbone,
                                          classifier.pool_layer,
                                          classifier.bottleneck).to(device)
        source_feature = collect_feature(train_source_loader,
                                         feature_extractor, device)
        target_feature = collect_feature(train_target_loader,
                                         feature_extractor, device)
        # plot t-SNE
        tSNE_filename = osp.join(logger.visualize_directory, 'TSNE.png')
        tsne.visualize(source_feature, target_feature, tSNE_filename)
        print("Saving t-SNE to", tSNE_filename)
        # calculate A-distance, which is a measure for distribution discrepancy
        A_distance = a_distance.calculate(source_feature, target_feature,
                                          device)
        print("A-distance =", A_distance)
        return

    if args.phase == 'test':
        acc1 = validate(test_loader, classifier, args)
        print(acc1)
        return

    # start training
    best_h_score = 0.
    for epoch in range(args.epochs):
        # train for one epoch
        train(train_source_iter, train_target_iter, classifier, unknown_bce,
              optimizer, lr_scheduler, epoch, args)

        # evaluate on validation set
        h_score = validate(val_loader, classifier, args)

        # remember best acc@1 and save checkpoint
        torch.save(classifier.state_dict(),
                   logger.get_checkpoint_path('latest'))
        if h_score > best_h_score:
            shutil.copy(logger.get_checkpoint_path('latest'),
                        logger.get_checkpoint_path('best'))
        best_h_score = max(h_score, best_h_score)

    print("best_h_score = {:3.1f}".format(best_h_score))

    # evaluate on test set
    classifier.load_state_dict(torch.load(logger.get_checkpoint_path('best')))
    h_score = validate(test_loader, classifier, args)
    print("test_h_score = {:3.1f}".format(h_score))

    logger.close()