Esempio n. 1
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def main():
    device = torch.device('cuda:9' if torch.cuda.is_available else 'cpu')
    train_dataset_dir = tdatasets.ImageFolder('images/all')
    train_dataset = SiameseNetworkDataset(imageFolderDataset = train_dataset_dir, transform = transforms.Compose([transforms.Resize((100,100)), transforms.ToTensor()]))
    vis_dataloader = DataLoader(train_dataset,
                        shuffle=False,
                        num_workers=0,
                        batch_size=10)

    # dataiter = iter(vis_dataloader)
    # example_batch = next(dataiter)
    # concatenated = torch.cat((example_batch[0],example_batch[1]),0)
    # imshow(torchvision.utils.make_grid(concatenated))
    # print(example_batch[2].numpy())
    #
    # example_batch = next(dataiter)
    # concatenated = torch.cat((example_batch[0], example_batch[1]), 0)
    # imshow(torchvision.utils.make_grid(concatenated))
    # print(example_batch[2].numpy())
    net = SiameseNetwork()
    criterion = ContrastiveLoss()
    optimizer = optim.Adam(net.parameters(),lr = 0.0005 )
    loss_vals = []
    '''
    Training Starts
    '''
    print('Training started')
    for epoch in range(10):
       loss_epoch = 0
       for i, data in enumerate(vis_dataloader,0):
           img_0, img_1, label = data
           print(i, label)
           # img_0, img_1, label = img_0.to(device), img_1.to(device), label.to(device)
           optimizer.zero_grad()
           out_0, out_1 = net(img_0, img_1)
           loss = criterion(out_0, out_1, label)
           loss_epoch += loss.item()
           loss.backward()
           optimizer.step()
       loss_vals.append(loss_epoch)
       print('Epoch',str(epoch+1), str(loss_epoch))
       print('Epoch done')
       torch.save(net.state_dict(), 'siamese.pt')
    print('Training completed')
    plt.plot(loss_vals)
    plt.savefig('loss_siamese.png')
   

    # ****************************** Training ends ***************************************


    '''
Esempio n. 2
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  ),
  should_invert=False
)
train_dataloader = DataLoader(siamese_dataset,
                        shuffle=True,
                        num_workers=8,
                        batch_size=Config.train_batch_size)
net = SiameseNetwork().cuda()
print(net)
criterion = ContrastiveLoss()
optimizer = optim.Adam(net.parameters(),lr = 0.0005 )
counter = []
loss_history = [] 
iteration_number= 0
for epoch in range(0,Config.train_number_epochs):
    for i, data in enumerate(train_dataloader,0):
        img0, img1 , label = data
        img0, img1 , label = img0.cuda(), img1.cuda() , label.cuda()
        optimizer.zero_grad()
        output1,output2 = net(img0,img1)
        loss_contrastive = criterion(output1,output2,label)
        loss_contrastive.backward()
        optimizer.step()
        if i %10 == 0 :
            print("Epoch number {}\n Current loss {}\n".format(epoch,loss_contrastive.item()))
            iteration_number +=10
            counter.append(iteration_number)
            loss_history.append(loss_contrastive.item())
    torch.save(net.state_dict(), "./model.pth")
show_plot(counter,loss_history)
Esempio n. 3
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def main():
    device = torch.device('cuda:9' if torch.cuda.is_available else 'cpu')
    train_dataset_dir = tdatasets.ImageFolder('images/train')
    train_dataset = SiameseNetworkDataset(imageFolderDataset = train_dataset_dir, transform = transforms.Compose([transforms.Resize((100,100)), transforms.ToTensor()]))
    vis_dataloader = DataLoader(train_dataset,
                        shuffle=False,
                        num_workers=0,
                        batch_size=1)

    # dataiter = iter(vis_dataloader)
    # example_batch = next(dataiter)
    # concatenated = torch.cat((example_batch[0],example_batch[1]),0)
    # imshow(torchvision.utils.make_grid(concatenated))
    # print(example_batch[2].numpy())
    #
    # example_batch = next(dataiter)
    # concatenated = torch.cat((example_batch[0], example_batch[1]), 0)
    # imshow(torchvision.utils.make_grid(concatenated))
    # print(example_batch[2].numpy())
    net = SiameseNetwork()
    criterion = ContrastiveLoss()
    optimizer = optim.Adam(net.parameters(),lr = 0.0005 )
    loss_vals = []
    net.to(device)
    '''
    Training Starts
    '''
    print('Training started')
    for epoch in range(1000):
       loss_epoch = 0
       for i, data in enumerate(vis_dataloader,0):
           img_0, img_1, label = data
           img_0, img_1, label = img_0.to(device), img_1.to(device), label.to(device)
           optimizer.zero_grad()
           out_0, out_1 = net(img_0, img_1)
           loss = criterion(out_0, out_1, label)
           loss_epoch += loss.item()
           loss.backward()
           optimizer.step()
       loss_vals.append(loss_epoch)
       print('Epoch',str(epoch+1), str(loss_epoch))
    print('Training completed')
    plt.plot(loss_vals)
    plt.savefig('loss_siamese.png')
    
    

    # ****************************** Training ends ***************************************


    '''
    Testing starts
    '''
    

    test_dataset_dir = tdatasets.ImageFolder('images/test')
    net.load_state_dict(torch.load('siamese.pt'))
    test_dataset = SiameseNetworkDataset(imageFolderDataset = test_dataset_dir, transform = transforms.Compose([transforms.Resize((100,100)), transforms.ToTensor()]))

    test_dataloader = DataLoader(test_dataset,
                        shuffle=True,
                        num_workers=2,
                        batch_size=1)
    print('Testing starts')
    correct = 0
    total = 0
    test_img_sub = None
    for i, data in enumerate(test_dataloader, 0):
        img_0, img_1, label = data
        if test_img_sub is None:
            test_img_sub = img_0
        #concat = torch.cat((test_img_sub, img_1), 0)
        concat = torch.cat((img_0, img_1), 0)
        test_img_sub, img_1, label = test_img_sub.to(device), img_1.to(device), label.to(device)
        img_0, img_1, label = img_0.to(device), img_1.to(device), label.to(device)
        out_0, out_1 = net(img_0, img_1)
        dist = F.pairwise_distance(out_0, out_1)
        if dist <= 0.5 and label == 0:
            correct = correct + 1
        elif label == 1:
            correct = correct + 1
        else:
            pass
        total = total + 1
        imshow(torchvision.utils.make_grid(concat),i,'Dissimilarity: {:.2f}'.format(dist.item()), True)
        test_img_sub = test_img_sub.cpu()
#        dist = dist.cpu().detach()
#        print(dist.numpy())
#        dist = torch.sigmoid(dist)
#        print(dist.numpy())
    print(correct/total)


    print('Testing complete')

    torch.save(net.state_dict(), 'siamese_blog.pt')
Esempio n. 4
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            time_ = datetime.datetime.now()
            for iter_, data in enumerate(validate_dataloader, 0):
                iter1_, img0, iter2_, img1, label = data
                img0, img1, label = img0.cuda(), img1.cuda(), label.cuda()
                with torch.no_grad():
                    output1, output2 = model(img0, img1)
                    loss_contrastive = criterion(output1, output2, label)

                    eval_loss += loss_contrastive.item()
                nb_eval_steps += 1
            eval_loss = eval_loss / nb_eval_steps

            elapsed = datetime.datetime.now() - time_
            print('evaluation done^^')
            print('[epoch {}] elapsed: {}'.format(epoch + 1, elapsed))

            if best_loss > eval_loss:
                best_loss = eval_loss
                # save the best model!!!!
                print('achieve best loss!')
                best_dir = os.path.join('./model_save/', 'best_model/')
                os.makedirs(best_dir, exist_ok=True)
                tmp_state = {
                    'model': model.state_dict(),
                    'optimizer': optimizer.state_dict()
                }
                torch.save(tmp_state,
                           os.path.join(best_dir,
                                        str(epoch + 1) + '.pth'))