Пример #1
0
def main():
    global opt, model
    opt = parser.parse_args()
    logger = set_logger(opt.save)
    print(opt)
    print(opt, file=logger)

    # setting gpu and seed
    os.environ["CUDA_VISIBLE_DEVICES"] = '0'
    opt.seed = random.randint(1, 10000)
    print("Random Seed: ", opt.seed)
    torch.manual_seed(opt.seed)
    torch.cuda.manual_seed(opt.seed)

    # setting dataset
    print("===> Loading dataset")
    patches = datagenerator(data_dir=opt.data_train)
    train_set = DenoisingDataset(patches, sigma=opt.sigma)
    training_data_loader = DataLoader(dataset=train_set,
                                      num_workers=opt.threads,
                                      drop_last=True,
                                      batch_size=opt.batchSize,
                                      shuffle=True)

    # setting model and loss
    print("===> Building model")
    model = DUAL_CNN_DENOISE()
    criterion = nn.MSELoss(size_average=False)
    model = model.cuda()
    criterion = criterion.cuda()

    # setting optimizer
    print("===> Setting Optimizer")
    kwargs = {'weight_decay': opt.weight_decay}
    optimizer = optim.Adam([{
        "params": model.structure_net.parameters(),
        "lr": opt.srcnn_lr
    }, {
        "params": model.detail_net.parameters(),
        "lr": opt.vdsr_lr
    }], **kwargs)

    print("===> Training")
    for epoch in range(opt.start_epoch, opt.nEpochs + 1):
        train(training_data_loader, optimizer, model, criterion, epoch, logger)
        model_path = save_checkpoint(model, epoch)
        eval.eval(model_path, opt.save, opt.sigma)
    # optimizer_compose = optim.Adam(compose_model.parameters(), lr=args.lr)
    # scheduler_compose = MultiStepLR(optimizer_compose, milestones=[30, 60, 90], gamma=0.2)  # learning rates
    for epoch in range(initial_epoch, n_epoch):
        decompose_model.train()
        # compose_model.train()

        scheduler_decompose.step(
            epoch)  # step to the learning rate in this epcoh
        # scheduler_compose.step(epoch)  # step to the learning rate in this epcoh

        xs = dg.datagenerator(data_dir=args.train_data)
        xs = xs.astype('float32') / 255.0
        xs = torch.from_numpy(xs.transpose(
            (0, 3, 1, 2)))  # tensor of the clean patches, NXCXHXW

        DDataset = DenoisingDataset(xs, sigma)
        batch_y, batch_x = DDataset[:238336]

        dataset = torch.cat((batch_x, batch_y), dim=1)
        DLoader = torch.utils.data.DataLoader(dataset=dataset,
                                              num_workers=0,
                                              drop_last=True,
                                              batch_size=batch_size,
                                              shuffle=True)
        epoch_loss = 0
        start_time = time.time()

        for n_count, batch_yx in enumerate(DLoader):

            if cuda:
                batch_x, batch_y = batch_yx[:, 0].cuda(), batch_yx[:, 1].cuda()
Пример #3
0
def train(batch_size=128,
          n_epoch=300,
          sigma=25,
          lr=1e-4,
          depth=7,
          device="cuda:0",
          data_dir='./data/Train400',
          model_dir='models',
          model_name=None):
    device = torch.device(device)

    if not os.path.exists(
            os.path.join(
                model_dir, "model" + str(sigma) + "m" + str(model_name[1]) +
                "d" + str(depth))):
        os.mkdir(
            os.path.join(
                model_dir, "model" + str(sigma) + "m" + str(model_name[1]) +
                "d" + str(depth)))

    save_dir = os.path.join(
        model_dir,
        "model" + str(sigma) + "m" + str(model_name[1]) + "d" + str(depth))

    from datetime import date
    save_name = "model_mode" + str(model_name[1]) + str(depth) + "_" + "".join(
        str(date.today()).split('-')[1:]) + ".pth"

    f = open(os.path.join(save_dir, save_name.replace(".pth", ".txt")), 'w')

    f.write(('--\t This is end to end model saved as ' + save_name + '\n'))
    f.write(('--\t epoch %4d batch_size %4d sigma %4d\n' %
             (n_epoch, batch_size, sigma)))
    f.write(model_name[0])

    DNet = torch.load(os.path.join(model_dir, model_name[0]))

    DNet.eval()

    modelG = Model(model_dir=model_dir,
                   model_name=model_name)  #guidance='noisy, denoised'
    modelD = discriminator()

    print(modelG)
    f.write(str(modelG))
    f.write('\n\n')

    ngpu = 2
    if (device.type == 'cuda') and (ngpu > 1):
        modelG = nn.DataParallel(modelG, list(range(ngpu)))
        modelD = nn.DataParallel(modelD, list(range(ngpu)))
        DNet = nn.DataParallel(DNet, list(range(ngpu)))

    modelG.apply(weights_init)
    modelD.apply(weights_init)

    criterion_perceptual = vgg_loss(device)
    criterion_l1 = nn.L1Loss(size_average=None, reduce=None, reduction='sum')
    criterion_bce = nn.BCELoss()
    criterion_l2 = sum_squared_error()
    criterion_ssim = SSIM()

    if torch.cuda.is_available():
        modelG.to(device)
        modelD.to(device)
        DNet.to(device)

    optimizerG = optim.Adam(modelG.parameters(),
                            lr=lr,
                            betas=(0.5, 0.999),
                            weight_decay=1e-5)
    optimizerD = optim.Adam(modelD.parameters(),
                            lr=lr,
                            betas=(0.5, 0.999),
                            weight_decay=1e-5)
    scheduler = MultiStepLR(optimizerG, milestones=[30, 60, 90],
                            gamma=0.2)  # learning rates

    if sigma == 0:
        sigma_list = [5, 10, 15, 20, 25, 30, 35, 40, 45, 50, 55, 60, 65, 70]
    else:
        sigma_list = [sigma]

    for epoch in range(n_epoch):
        for sig in sigma_list:
            x = dg.datagenerator(data_dir=data_dir).astype('float32') / 255.0
            print(x.shape)
            x = torch.from_numpy(x.transpose((0, 3, 1, 2)))
            dataset = DenoisingDataset(x, sigma=sig)
            loader = DataLoader(dataset=dataset,
                                num_workers=4,
                                drop_last=True,
                                batch_size=batch_size,
                                shuffle=True)
            epoch_loss_g = 0
            start_time = time.time()
            n_count = 0
            for cnt, batch_yx in enumerate(loader):
                if torch.cuda.is_available():
                    batch_original, batch_noise = batch_yx[1].to(
                        device), batch_yx[0].to(device)
                '''
                modelD.zero_grad()
                b_size = batch_original.size(0)
                label = torch.full((b_size,), 1, device=device)
                output = modelD(batch_original).view(-1)
                errD_real = criterion_bce(output, label)
                errD_real.backward(retain_graph=True)
                '''
                residual = DNet(batch_noise)
                fake, structure, denoised = modelG(batch_noise, residual)
                '''
                label.fill_(0)
                output = modelD(fake.detach()).view(-1)
                errD_fake = criterion_bce(output, label)
                errD_fake.backward(retain_graph=True)

                d_loss = errD_real + errD_fake
                optimizerD.step()
                '''
                modelG.zero_grad()
                '''
                label = torch.full((b_size,), 1, device=device)
                output = modelD(fake).view(-1)
                gan_loss = criterion_bce(output, label)
                '''
                s_loss = criterion_l2(structure, batch_original - denoised)
                s_loss.backward(retain_graph=True)

                l1_loss = criterion_l1(fake, batch_original)
                perceptual_loss = criterion_perceptual(fake, batch_original, 0)
                #ssim_out = 1-criterion_ssim(fake, batch_original)
                #l2_loss = criterion_l2(fake, batch_original)

                g_loss = l1_loss + 2e-2 * perceptual_loss  #+1e-2*gan_loss
                g_loss.backward(retain_graph=True)
                epoch_loss_g += g_loss.item()
                optimizerG.step()

                if cnt % 100 == 0:
                    line = '%4d %4d / %4d g_loss = %2.4f\t(snet_l2_loss = %2.4f / l1_loss=%2.4f / perceptual_loss=%2.4f)' % (
                        epoch + 1, cnt, x.size(0) // batch_size,
                        g_loss.item() / batch_size, s_loss.item() / batch_size,
                        l1_loss.item() / batch_size,
                        perceptual_loss.item() / batch_size)
                    print(line)
                    f.write(line)
                    f.write('\n')
                n_count += 1

            elapsed_time = time.time() - start_time
            line = 'epoch = %4d, sigma = %4d, loss = %4.4f , time = %4.2f s' % (
                epoch + 1, sig, epoch_loss_g /
                (n_count * batch_size), elapsed_time)
            print(line)
            f.write(line)
            f.write('\n')
            if (epoch + 1) % 20 == 0:
                torch.save(
                    modelG,
                    os.path.join(
                        save_dir,
                        save_name.replace('.pth', '_epoch%03d.pth') %
                        (epoch + 1)))

        torch.save(modelG, os.path.join(save_dir, save_name))
    f.close()
Пример #4
0
def pretrain_DNet(batch_size=128,
                  n_epoch=150,
                  sigma=25,
                  lr=1e-3,
                  depth=17,
                  device="cuda:0",
                  data_dir='./data/Train400',
                  model_dir='models'):
    device = torch.device(device)

    model_dir = os.path.join(model_dir,
                             "DNet_s" + str(sigma) + "d" + str(depth))
    if not os.path.exists(model_dir):
        os.mkdir(model_dir)

    from datetime import date
    save_name = "DNet_s" + str(sigma) + "d" + str(depth) + "_" + "".join(
        str(date.today()).split('-')[1:]) + ".pth"

    print('\n')
    print('--\t This model is pre-trained DNet saved as ', save_name)
    print('--\t epoch %4d batch_size %4d sigma %4d depth %4d' %
          (n_epoch, batch_size, sigma, depth))
    print('\n')

    model = DNet(depth=depth)

    model.train()

    print(model)
    print("\n")

    criterion = sum_squared_error()

    if torch.cuda.is_available():
        model.to(device)

    optimizer = optim.Adam(model.parameters(), lr=lr, weight_decay=1e-5)
    scheduler = MultiStepLR(optimizer, milestones=[30, 60, 90],
                            gamma=0.2)  # learning rates

    if sigma == 0:
        sigma_list = [5, 10, 15, 20, 25, 30, 35, 40, 45, 50, 55, 60, 65, 70]
    else:
        sigma_list = [sigma]

    for epoch in range(n_epoch):
        for sig in sigma_list:
            x = dg.datagenerator(data_dir=data_dir).astype('float32') / 255.0
            x = torch.from_numpy(x.transpose((0, 3, 1, 2)))

            dataset = None
            dataset = DenoisingDataset(x, sigma)

            loader = DataLoader(dataset=dataset,
                                num_workers=4,
                                drop_last=True,
                                batch_size=batch_size,
                                shuffle=True)
            epoch_loss = 0
            start_time = time.time()
            n_count = 0
            for cnt, batch_yx in enumerate(loader):
                optimizer.zero_grad()
                if torch.cuda.is_available():
                    batch_original, batch_noise = batch_yx[1].to(
                        device), batch_yx[0].to(device)

                r = model(batch_noise)
                loss = criterion(batch_noise - r, batch_original)
                epoch_loss += loss.item()
                loss.backward()
                optimizer.step()
                if cnt % 100 == 0:
                    print('%4d %4d / %4d loss = %2.4f' %
                          (epoch + 1, cnt, x.size(0) // batch_size,
                           loss.item() / batch_size))
                n_count += 1

            elapsed_time = time.time() - start_time
            print('epoch = %4d , sigma = %4d, loss = %4.4f , time = %4.2f s' %
                  (epoch + 1, sig, epoch_loss / n_count, elapsed_time))
            if (epoch + 1) % 25 == 0:
                torch.save(
                    model,
                    os.path.join(
                        model_dir,
                        save_name.replace('.pth', '_epoch%03d.pth') %
                        (epoch + 1)))
            torch.save(model, os.path.join(model_dir, save_name))

    torch.save(model, os.path.join(model_dir, save_name))
Пример #5
0
def pretrain_SNet(batch_size=128,
                  n_epoch=100,
                  sigma=25,
                  lr=1e-4,
                  device="cuda:0",
                  data_dir='./data/Train400',
                  model_dir='models/SNet',
                  model_name=None,
                  model=0):
    device = torch.device(device)
    if not os.path.exists(model_dir):
        os.mkdir(os.path.join(model_dir))

    DNet = torch.load(os.path.join(model_dir, model_name[0]))
    if model == 0:
        model = SNet_jfver1()
        save_name = 'SNet_jfver1'
    elif model == 1:
        model = SNet_dfver1()
        save_name = 'SNet_dfver1'
    elif model == 2:
        model = SNet_dfver2()
        save_name = 'SNet_dfver2'
    elif model == 3:
        model = SNet_texture_ver1()
        save_name = 'SNet_texture_ver1'

    from datetime import date
    save_name = save_name + "_" + "".join(str(
        date.today()).split('-')[1:]) + ".pth"

    f = open(os.path.join(model_dir, save_name.replace(".pth", ".txt")), 'w')

    print('\n')
    print('--\t This model is pre-trained SNet saved as ', save_name)
    print('--\t epoch %4d batch_size %4d sigma %4d' %
          (n_epoch, batch_size, sigma))
    print('\n')

    DNet.eval()
    model.train()

    print(model)
    print("\n")

    criterion = sum_squared_error()

    if torch.cuda.is_available():
        DNet.to(device)
        model.to(device)

    optimizer = optim.Adam(model.parameters(), lr=lr, weight_decay=1e-5)
    scheduler = MultiStepLR(optimizer, milestones=[30, 60, 90],
                            gamma=0.2)  # learning rates
    for epoch in range(n_epoch):
        x = dg.datagenerator(data_dir=data_dir).astype('float32') / 255.0
        x = torch.from_numpy(x.transpose((0, 3, 1, 2)))
        dataset = DenoisingDataset(x, sigma)
        loader = DataLoader(dataset=dataset,
                            num_workers=4,
                            drop_last=True,
                            batch_size=batch_size,
                            shuffle=True)
        epoch_loss = 0
        start_time = time.time()
        n_count = 0
        for cnt, batch_yx in enumerate(loader):
            optimizer.zero_grad()
            if torch.cuda.is_available():
                batch_original, batch_noise = batch_yx[1].to(
                    device), batch_yx[0].to(device)

            r = DNet(batch_noise)
            d = batch_noise - r
            #r=1.55*(r+0.5)-0.8
            s = model(r, d)
            #target = 1.8*(batch_original-d+0.5)-0.8
            loss = criterion(s, batch_original - d)
            epoch_loss += loss.item()
            loss.backward()
            optimizer.step()
            if cnt % 100 == 0:
                line = '%4d %4d / %4d loss = %2.4f' % (
                    epoch + 1, cnt, x.size(0) // batch_size,
                    loss.item() / batch_size)
                print(line)
                f.write(line)
            n_count += 1

        elapsed_time = time.time() - start_time
        line = 'epoch = %4d , loss = %4.4f , time = %4.2f s' % (
            epoch + 1, epoch_loss / n_count, elapsed_time)
        print(line)
        f.write(line)
        if (epoch + 1) % 1 == 0:
            torch.save(
                model,
                os.path.join(
                    model_dir,
                    save_name.replace('.pth', '_epoch%03d.pth') % (epoch + 1)))

    torch.save(model, os.path.join(model_dir, save_name))
    f.close()
            logging.info('epoch' + str(epoch))
            scheduler.step(epoch)  # step to the learning rate in this epcoh
            xs, xn = dg.datagenerator(data_dir=args.train_data,
                                      data_dir_noise=args.train_data_noise,
                                      batch_size=batch_size)
            listr = list(range(0, xs.shape[0]))
            random.shuffle(listr)
            xs = xs[listr, :, :, :]
            xn = xn[listr, :, :, :]
            xs = xs.astype('float32') / 255.0
            xn = xn.astype('float32') / 255.0
            xs = torch.from_numpy(xs.transpose(
                (0, 3, 1, 2)))  # tensor of the clean patches, NXCXHXW
            xn = torch.from_numpy(xn.transpose(
                (0, 3, 1, 2)))  # tensor of the clean patches, NXCXHXW
            DDataset = DenoisingDataset(xs, xn)
            DLoader = DataLoader(dataset=DDataset,
                                 num_workers=8,
                                 drop_last=True,
                                 batch_size=batch_size,
                                 shuffle=True)
            epoch_loss = 0
            start_time = time.time()

            for n_count, batch_yx in enumerate(DLoader):
                optimizer.zero_grad()
                if cuda:
                    batch_x, batch_y = batch_yx[1].cuda(), batch_yx[0].cuda()
                loss = criterion(model(batch_y), batch_x)
                epoch_loss += loss.item()
                loss.backward()
Пример #7
0
    scheduler = MultiStepLR(optimizer, milestones=[30, 60, 90],
                            gamma=0.2)  # learning rates
    xs_val, ys_val = dg.testgenerator()

    for epoch in range(initial_epoch, n_epoch):
        scheduler.step(epoch)  # step to the learning rate in this epcoh
        xs, ys = dg.datagenerator(data_dir=args.train_data)
        # Normalize patches
        ys -= np.mean(ys, axis=(1, 2))[:, np.newaxis, np.newaxis]
        ys /= np.std(ys, axis=(1, 2))[:, np.newaxis, np.newaxis]

        xs = torch.from_numpy(xs.transpose(
            (0, 3, 1, 2)))  # tensor of the clean patches, NXCXHXW
        ys = torch.from_numpy(ys.transpose(
            (0, 3, 1, 2)))  # tensor of the clean patches, NXCXHXW
        DDataset = DenoisingDataset(xs, ys)
        DLoader = DataLoader(dataset=DDataset,
                             num_workers=4,
                             drop_last=True,
                             batch_size=batch_size,
                             shuffle=True)
        epoch_loss = 0
        start_time = time.time()

        for n_count, batch_yx in enumerate(DLoader):
            optimizer.zero_grad()
            if cuda:
                batch_x, batch_y = batch_yx[1].cuda(), batch_yx[0].cuda()
            pre = model(batch_yx[0])
            loss = criterion(pre,
                             batch_yx[1]) + reg_param * torch.norm(pre, p=1)
Пример #8
0
def train(batch_size=128,
          n_epoch=150,
          sigma=25,
          lr=1e-3,
          lr2=1e-5,
          depth=17,
          device="cuda:0",
          data_dir='./data/Train400',
          model_dir='models'):
    device = torch.device(device)

    from datetime import date
    model_dir = os.path.join(
        model_dir, "result_" + "".join(str(date.today()).split('-')[1:]))
    if not os.path.exists(model_dir):
        os.mkdir(model_dir)

    save_name = "net.pth"
    save_name2 = "net2.pth"

    print('\n')
    print('--\t This model is pre-trained DNet saved as ', save_name)
    print('--\t epoch %4d batch_size %4d sigma %4d depth %4d' %
          (n_epoch, batch_size, sigma, depth))
    print('\n')

    model = DnCNN(depth=depth)
    model2 = DnCNN(depth=depth)

    model.train()
    model2.train()

    criterion = sum_squared_error()
    criterion_l1 = nn.L1Loss(size_average=None, reduce=None, reduction='sum')

    if torch.cuda.is_available():
        model.to(device)
        model2.to(device)

    optimizer = optim.Adam(model.parameters(), lr=lr, weight_decay=1e-5)
    scheduler = MultiStepLR(optimizer, milestones=[30, 60, 90],
                            gamma=0.2)  # learning rates
    optimizer2 = optim.Adam(model2.parameters(), lr=lr2, weight_decay=1e-5)
    scheduler2 = MultiStepLR(optimizer2, milestones=[30, 60, 90],
                             gamma=0.2)  # learning rates

    for epoch in range(n_epoch):
        x = dg.datagenerator(data_dir=data_dir).astype('float32') / 255.0
        x = torch.from_numpy(x.transpose((0, 3, 1, 2)))

        dataset = None
        dataset = DenoisingDataset(x, sigma)

        loader = DataLoader(dataset=dataset,
                            num_workers=4,
                            drop_last=True,
                            batch_size=batch_size,
                            shuffle=True)
        epoch_loss = 0
        epoch_loss_first = 0
        start_time = time.time()
        n_count = 0
        for cnt, batch_yx in enumerate(loader):
            optimizer.zero_grad()
            if torch.cuda.is_available():
                batch_original, batch_noise = batch_yx[1].to(
                    device), batch_yx[0].to(device)

            residual = model(batch_noise)
            loss_first = criterion(batch_noise - residual, batch_original)
            loss_first.backward(retain_graph=True)
            optimizer.step()

            structure_residual = model2(residual)
            target = batch_original - (batch_noise - residual)
            structure = residual - structure_residual
            loss = criterion_l1(structure, target)
            loss.backward()
            optimizer2.step()

            epoch_loss_first += loss_first.item()
            epoch_loss += loss.item()

            if cnt % 100 == 0:
                print(
                    '%4d %4d / %4d 1_loss = %2.4f loss = %2.4f' %
                    (epoch + 1, cnt, x.size(0) // batch_size,
                     loss_first.item() / batch_size, loss.item() / batch_size))
            n_count += 1

        elapsed_time = time.time() - start_time
        print(
            'epoch = %4d , sigma = %4d, 1_loss = %4.4f, loss = %4.4f , time = %4.2f s'
            % (epoch + 1, sigma, epoch_loss_first / n_count,
               epoch_loss / n_count, elapsed_time))
        if (epoch + 1) % 25 == 0:
            torch.save(
                model,
                os.path.join(
                    model_dir,
                    save_name.replace('.pth', '_epoch%03d.pth') % (epoch + 1)))
            torch.save(
                model2,
                os.path.join(
                    model_dir,
                    save_name2.replace('.pth', '_epoch%03d.pth') %
                    (epoch + 1)))

    torch.save(model, os.path.join(model_dir, save_name))
    torch.save(model2, os.path.join(model_dir, save_name2))
    initial_epoch = findLastCheckpoint(
        save_dir=save_dir)  # load the last model in matconvnet style
    if initial_epoch > 0:
        print('resuming by loading epoch %03d' % initial_epoch)
        # model.load_state_dict(torch.load(os.path.join(save_dir, 'model_%03d.pth' % initial_epoch)))
        model = torch.load(
            os.path.join(save_dir, 'model_%03d.pth' % initial_epoch))
    model.train()
    # criterion = nn.MSELoss(reduction = 'sum')  # PyTorch 0.4.1
    criterion = nn.CrossEntropyLoss()
    if cuda:
        model = model.cuda()
        # device_ids = [0]
        # model = nn.DataParallel(model, device_ids=device_ids).cuda()
        # criterion = criterion.cuda()
    DDataset = DenoisingDataset(args.train_data)
    DLoader = DataLoader(dataset=DDataset,
                         collate_fn=collate,
                         num_workers=10,
                         drop_last=True,
                         batch_size=batch_size,
                         shuffle=True)

    optimizer = optim.Adam(model.parameters(), lr=args.lr)
    scheduler = MultiStepLR(optimizer, milestones=[30, 60, 90],
                            gamma=0.2)  # learning rates
    for epoch in range(initial_epoch, n_epoch):

        scheduler.step(epoch)  # step to the learning rate in this epcoh

        epoch_loss = 0