コード例 #1
0
def main():
    # device = torch.device("cuda")
    device = torch.device("cpu")
    cnn = CNN()
    cnn.eval()

    cnn.load_state_dict(
        torch.load('synthesizer_4.pkl', map_location={'cuda:0': 'cpu'}))
    cnn.to(device)
    generator = Generator()
    generator.load_state_dict(
        torch.load('7800.pkl', map_location={'cuda:0': 'cpu'}))
    generator.to(device)
    generator.eval()
    print("load cnn net.")

    #test_dataloader = my_dataset.get_test_train_data_loader()
    test_dataloader = my_dataset.get_test_data_loader()
    correct = 0
    total = 0
    for i, (images1, labels, _) in enumerate(test_dataloader):
        try:
            image = images1
            image = Variable(image)
            image, labels = image.to(device), labels.to(device)
            # vimage = generator(image)
            predict_label = cnn(image)
            labels = labels.cpu()
            predict_label = predict_label.cpu()
            c0 = captcha_setting.ALL_CHAR_SET[np.argmax(predict_label[
                0, 0:captcha_setting.ALL_CHAR_SET_LEN].data.numpy())]
            c1 = captcha_setting.ALL_CHAR_SET[np.argmax(
                predict_label[0, captcha_setting.ALL_CHAR_SET_LEN:2 *
                              captcha_setting.ALL_CHAR_SET_LEN].data.numpy())]
            c2 = captcha_setting.ALL_CHAR_SET[np.argmax(
                predict_label[0, 2 * captcha_setting.ALL_CHAR_SET_LEN:3 *
                              captcha_setting.ALL_CHAR_SET_LEN].data.numpy())]
            c3 = captcha_setting.ALL_CHAR_SET[np.argmax(
                predict_label[0, 3 * captcha_setting.ALL_CHAR_SET_LEN:4 *
                              captcha_setting.ALL_CHAR_SET_LEN].data.numpy())]
            # c4 = captcha_setting.ALL_CHAR_SET[np.argmax(predict_label[0, 4 * captcha_setting.ALL_CHAR_SET_LEN:5 * captcha_setting.ALL_CHAR_SET_LEN].data.numpy())]
            # c5 = captcha_setting.ALL_CHAR_SET[np.argmax(predict_label[0, 5 * captcha_setting.ALL_CHAR_SET_LEN:6 * captcha_setting.ALL_CHAR_SET_LEN].data.numpy())]

            #c3 = captcha_setting.ALL_CHAR_SET[np.argmax(predict_label[0, 3 * captcha_setting.ALL_CHAR_SET_LEN:4 * captcha_setting.ALL_CHAR_SET_LEN].data.numpy())]
            #predict_label = '%s%s%s%s' % (c0, c1, c2, c3)
            predict_label = '%s%s%s%s' % (c0, c1, c2, c3)
            true_label = one_hot_encoding.decode(labels.numpy()[0])
            total += labels.size(0)
            #save_image(vimage,'temp_result/'+str(i)+'.png')
            # print(predict_label.upper(),'>>>>>',true_label)
            if (predict_label.upper() == true_label.upper()):
                correct += 1
            if (total % 2000 == 0):
                print(
                    'Test Accuracy of the model on the %d test images: %f %%' %
                    (total, 100 * correct / total))
        except:
            pass
    print('Test Accuracy of the model on the %d test images: %f %%' %
          (total, 100 * correct / total))
コード例 #2
0
ファイル: captcha_train.py プロジェクト: lucmichalski/DW-GAN
def main():
    device = torch.device("cuda:1" if torch.cuda.is_available() else "cpu")

    accuracy_list = []
    # Train the Model
    print("Loading Data")
    train_dataloader = my_dataset.get_train_data_loader()
    test_dataloader = my_dataset.get_test_data_loader()
    print("Data Ready")
    accuracy = 0
    for ttest_num in range(0, 5):
        print('>>>>>>>>>>>>>>>>> ROUND: ', ttest_num)
        cnn = CNN()
        cnn.to(device)
        cnn.train()
        print('init net')
        criterion = nn.CrossEntropyLoss()
        optimizer = torch.optim.Adam(cnn.parameters(), lr=learning_rate)
        accuracy = 0
        for epoch in range(num_epochs):
            print('....')
            for i, (images1, labels) in enumerate(train_dataloader):
                images1 = Variable(images1)
                labels = Variable(labels)  #.view(-1,1))
                images, labels = images1.to(device), labels.to(device)
                # images = generator(images)
                #labels = torch.tensor(labels, dtype=torch.long, device=device)
                predict_labels = cnn(images)  #.view(1,-1)[0]
                # print(predict_labels.type)
                # print(labels.type)
                # print(images.shape)
                #print(labels)
                #print(predict_labels)
                loss = criterion(predict_labels, labels)
                optimizer.zero_grad()
                loss.backward()
                optimizer.step()
                # if (i+1) % 1500 == 0:
                #     print("epoch:", epoch, "step:", i, "loss:", loss.item())
                # if (i+1) % 2500 == 0:
                #     print("save model")
            correct = 0
            total = 0
            for i, (images1, labels) in enumerate(test_dataloader):
                image = images1
                #print(image)
                image = Variable(image)
                image, labels = image.to(device), labels.to(device)
                # image = generator(image)

                predict_label = cnn(image)
                labels = labels.cpu()
                predict_label = predict_label.cpu()
                _, predicted = torch.max(predict_label, 1)
                total += labels.size(0)
                # print(predicted,'>>>>>>>>',labels)
                if (predicted == labels):
                    correct += 1
            print(
                'Test Accuracy of the model on the %d test images (%d): %f %%'
                % (total, correct, 100 * correct / total))
            if (correct / total > accuracy):
                accuracy = correct / total
                torch.save(
                    cnn.state_dict(), "./model_lake/" +
                    model_name.replace('.', '_' + str(ttest_num) + '.'))
                # torch.save(cnn.state_dict(), "./model_lake/"+model_name)   #current is model.pickle
                print('saved!!!!!!!!!!!!!!!!!!!!!!!')

        # torch.save(cnn.state_dict(), "./"+model_name)   #current is model.pkl
            print("epoch:", epoch, "step:", i, "loss:", loss.item())
    # print('final accuracy: ',accuracy)
        accuracy_list.append(accuracy)
        print(accuracy_list)