Beispiel #1
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 def dream(self):
     # Process image and return variable
     self.processed_image = preprocess_image(self.created_image, True)
     # Define optimizer for the image
     # Earlier layers need higher learning rates to visualize whereas layer layers need less
     optimizer = SGD([self.processed_image], lr=12, weight_decay=1e-4)
     for i in range(1, 251):
         optimizer.zero_grad()
         # Assign create image to a variable to move forward in the model
         x = self.processed_image
         for index, layer in enumerate(self.model):
             # Forward
             x = layer(x)
             # Only need to forward until we the selected layer is reached
             if index == self.selected_layer:
                 break
         # Loss function is the mean of the output of the selected layer/filter
         # We try to minimize the mean of the output of that specific filter
         loss = -torch.mean(self.conv_output)
         print('Iteration:', str(i), 'Loss:',
               "{0:.2f}".format(loss.data.numpy()))
         # Backward
         loss.backward()
         # Update image
         optimizer.step()
         # Recreate image
         self.created_image = recreate_image(self.processed_image)
         # Save image every 20 iteration
         if i % 10 == 0:
             print(self.created_image.shape)
             im_path = '../generated/ddream_l' + str(self.selected_layer) + \
                 '_f' + str(self.selected_filter) + '_iter' + str(i) + '.jpg'
             save_image(self.created_image, im_path)
 def generate(self):
     initial_learning_rate = 6
     for i in range(1, 150):
         # Process image and return variable
         self.processed_image = preprocess_image(self.created_image)
         # Define optimizer for the image
         optimizer = SGD([self.processed_image], lr=initial_learning_rate)
         # Forward
         output = self.model(self.processed_image)
         # Target specific class
         class_loss = -output[0, self.target_class]
         print('Iteration:', str(i), 'Loss',
               "{0:.2f}".format(class_loss.data.numpy()[0]))
         # Zero grads
         self.model.zero_grad()
         # Backward
         class_loss.backward()
         # Update image
         optimizer.step()
         # Recreate image
         self.created_image = recreate_image(self.processed_image)
         # Save image
         cv2.imwrite('../generated/c_specific_iteration_' + str(i) + '.jpg',
                     self.created_image)
     return self.processed_image
    def generate_inverted_image_specific_layer(self,
                                               input_image,
                                               img_size,
                                               target_layer=3):
        # Generate a random image which we will optimize
        opt_img = Variable(1e-1 * torch.randn(1, 3, img_size, img_size),
                           requires_grad=True)
        # Define optimizer for previously created image
        optimizer = SGD([opt_img], lr=1e4, momentum=0.9)
        # Get the output from the model after a forward pass until target_layer
        # with the input image (real image, NOT the randomly generated one)
        input_image_layer_output = \
            self.get_output_from_specific_layer(input_image, target_layer)

        # Alpha regularization parametrs
        # Parameter alpha, which is actually sixth norm
        alpha_reg_alpha = 6
        # The multiplier, lambda alpha
        alpha_reg_lambda = 1e-7

        # Total variation regularization parameters
        # Parameter beta, which is actually second norm
        tv_reg_beta = 2
        # The multiplier, lambda beta
        tv_reg_lambda = 1e-8

        for i in range(201):
            optimizer.zero_grad()
            # Get the output from the model after a forward pass until target_layer
            # with the generated image (randomly generated one, NOT the real image)
            output = self.get_output_from_specific_layer(opt_img, target_layer)
            # Calculate euclidian loss
            euc_loss = 1e-1 * self.euclidian_loss(
                input_image_layer_output.detach(), output)
            # Calculate alpha regularization
            reg_alpha = alpha_reg_lambda * self.alpha_norm(
                opt_img, alpha_reg_alpha)
            # Calculate total variation regularization
            reg_total_variation = tv_reg_lambda * self.total_variation_norm(
                opt_img, tv_reg_beta)
            # Sum all to optimize
            loss = euc_loss + reg_alpha + reg_total_variation
            # Step
            loss.backward()
            optimizer.step()
            # Generate image every 5 iterations
            if i % 5 == 0:
                print('Iteration:', str(i), 'Loss:', loss.data.numpy())
                recreated_im = recreate_image(opt_img)
                im_path = '../generated/Inv_Image_Layer_' + str(target_layer) + \
                    '_Iteration_' + str(i) + '.jpg'
                save_image(recreated_im, im_path)

            # Reduce learning rate every 40 iterations
            if i % 40 == 0:
                for param_group in optimizer.param_groups:
                    param_group['lr'] *= 1 / 10
Beispiel #4
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    def visualise_layer_with_hooks(self):
        # Hook the selected layer
        self.hook_layer()  # 여기서 선택된 필터
        # Generate a random image
        random_image = np.uint8(np.random.uniform(150, 180, (224, 224, 3)))
        # Process image and return variable
        processed_image = preprocess_image(
            random_image, False)  # 이미지 제로민 노말라이즈, torch tensor 형태로 만듬
        # Define optimizer for the image
        optimizer = Adam([processed_image], lr=0.1, weight_decay=1e-6)

        for i in range(1, 31):
            optimizer.zero_grad()
            # Assign create image to a variable to move forward in the model
            x = processed_image

            for index, layer in enumerate(self.model):
                # Forward pass layer by layer
                # x is not used after this point because it is only needed to trigger
                # the forward hook function
                x = layer(x)
                # print(">>>",x.size()) => 여기서 forward 해서 계속 feature map이 나온다.
                # Only need to forward until the selected layer is reached
                if index == self.selected_layer:
                    # (forward hook function triggered) => for 문나갈 떄 hook trigger 된다.
                    break

            # Loss function is the mean of the output of the selected layer/filter
            # We try to minimize the mean of the output of that specific filter
            # print(self.conv_output.size())
            loss = -torch.mean(
                self.conv_output)  # 특정 filter 의 output의 mean을 backprob으로 미니마이즈
            exit()
            print('Iteration:', str(i), 'Loss:',
                  "{0:.2f}".format(loss.data.numpy()))
            # Backward
            loss.backward()
            # Update image
            optimizer.step()
            # Recreate image
            self.created_image = recreate_image(
                processed_image)  # 다시 이미지 형태로 복원
            # Save image
            if i % 5 == 0:
                im_path = '../generated/layer_vis_l' + str(self.selected_layer) + \
                    '_f' + str(self.selected_filter) + '_iter' + str(i) + '.jpg'
                save_image(self.created_image, im_path)
Beispiel #5
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 def visualise_layer_without_hooks(self):
     # Process image and return variable
     # Generate a random image
     random_image = np.uint8(np.random.uniform(150, 180, (224, 224, 3)))
     # Process image and return variable
     processed_image = preprocess_image(random_image, False)
     # Define optimizer for the image
     optimizer = Adam([processed_image], lr=0.1, weight_decay=1e-6)
     for i in range(1, 31):
         optimizer.zero_grad()
         # Assign create image to a variable to move forward in the model
         x = processed_image
         for index, layer in enumerate(self.model):
             # Forward pass layer by layer
             x = layer(x)
             if index == self.selected_layer:
                 # Only need to forward until the selected layer is reached
                 # Now, x is the output of the selected layer
                 break
         # Here, we get the specific filter from the output of the convolution operation
         # x is a tensor of shape 1x512x28x28.(For layer 17)
         # So there are 512 unique filter outputs
         # Following line selects a filter from 512 filters so self.conv_output will become
         # a tensor of shape 28x28
         self.conv_output = x[0, self.selected_filter]
         # Loss function is the mean of the output of the selected layer/filter
         # We try to minimize the mean of the output of that specific filter
         loss = -torch.mean(self.conv_output)
         print('Iteration:', str(i), 'Loss:',
               "{0:.2f}".format(loss.data.numpy()))
         # Backward
         loss.backward()
         # Update image
         optimizer.step()
         # Recreate image
         self.created_image = recreate_image(processed_image)
         # Save image
         if i % 5 == 0:
             im_path = '../generated/layer_vis_l' + str(self.selected_layer) + \
                 '_f' + str(self.selected_filter) + '_iter' + str(i) + '.jpg'
             save_image(self.created_image, im_path)
Beispiel #6
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 def visualise_layer_without_hooks(self):
     # Process image and return variable
     self.processed_image = preprocess_image(self.created_image)
     # Define optimizer for the image
     # Earlier layers need higher learning rates to visualize whereas later layers need less
     optimizer = SGD([self.processed_image], lr=5, weight_decay=1e-6)
     for i in range(1, 51):
         optimizer.zero_grad()
         # Assign create image to a variable to move forward in the model
         x = self.processed_image
         for index, layer in enumerate(self.model):
             # Forward pass layer by layer
             x = layer(x)
             if index == self.selected_layer:
                 # Only need to forward until the selected layer is reached
                 # Now, x is the output of the selected layer
                 break
         # Here, we get the specific filter from the output of the convolution operation
         # x is a tensor of shape 1x512x28x28.(For layer 17)
         # So there are 512 unique filter outputs
         # Following line selects a filter from 512 filters so self.conv_output will become
         # a tensor of shape 28x28
         self.conv_output = x[0, self.selected_filter]
         # Loss function is the mean of the output of the selected layer/filter
         # We try to minimize the mean of the output of that specific filter
         loss = torch.mean(self.conv_output)
         print('Iteration:', str(i), 'Loss:',
               "{0:.2f}".format(loss.data.numpy()[0]))
         # Backward
         loss.backward()
         # Update image
         optimizer.step()
         # Recreate image
         self.created_image = recreate_image(self.processed_image)
         # Save image
         if i % 5 == 0:
             cv2.imwrite(
                 'generated/layer_vis_l' + str(self.selected_layer) + '_f' +
                 str(self.selected_filter) + '_iter' + str(i) + '.jpg',
                 self.created_image)
Beispiel #7
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 def visualise_layer_with_hooks(self):
     # Hook the selected layer
     self.hook_layer()
     # Process image and return variable
     self.processed_image = preprocess_image(self.created_image)
     # Define optimizer for the image
     # Earlier layers need higher learning rates to visualize whereas later layers need less
     optimizer = SGD([self.processed_image], lr=5, weight_decay=1e-6)
     for i in range(1, 51):
         optimizer.zero_grad()
         # Assign create image to a variable to move forward in the model
         x = self.processed_image
         for index, layer in enumerate(self.model):
             # Forward pass layer by layer
             # x is not used after this point because it is only needed to trigger
             # the forward hook function
             x = layer(x)
             # Only need to forward until the selected layer is reached
             if index == self.selected_layer:
                 # (forward hook function triggered)
                 break
         # Loss function is the mean of the output of the selected layer/filter
         # We try to minimize the mean of the output of that specific filter
         loss = torch.mean(self.conv_output)
         print('Iteration:', str(i), 'Loss:',
               "{0:.2f}".format(loss.data.numpy()[0]))
         # Backward
         loss.backward()
         # Update image
         optimizer.step()
         # Recreate image
         self.created_image = recreate_image(self.processed_image)
         # Save image
         if i % 5 == 0:
             cv2.imwrite(
                 'generated/layer_vis_l' + str(self.selected_layer) + '_f' +
                 str(self.selected_filter) + '_iter' + str(i) + '.jpg',
                 self.created_image)
Beispiel #8
0
        tolerance = vis_args.RESULTS.POINTING_GAME.tolerance
        pg = PointingGame(vis_args.MODEL.n_classes, tolerance=tolerance)

    for f, path in tqdm.tqdm(zip(files, paths)):
        img = open_image(path)
        prep_img = preprocess_image(img, h=h, w=w)

        cam, pred = gcv2.generate_cam(prep_img, vis_args.DATASET.target_class)
        guided_grads = GBP.generate_gradients(prep_img,
                                              vis_args.DATASET.target_class)
        cam_gb = guided_grad_cam(cam, guided_grads)
        bw_cam_gb = convert_to_grayscale(cam_gb)

        if vis_args.RESULTS.POINTING_GAME.state:
            boxes = get_boxes(vis_args.RESULTS.DRAW_GT_BBOX.gt_src, f, img)
            hit = pg.evaluate(boxes, bw_cam_gb.squeeze())
            _ = pg.accumulate(hit[0], 1)

        prep_img = recreate_image(prep_img)
        r = alpha * bw_cam_gb + (1 - alpha) * prep_img
        r = ((r - r.min()) / (r.max() - r.min()) * 255).astype(np.float32)
        custom_save_gradient_images(bw_cam_gb,
                                    vis_args.RESULTS.dir,
                                    f,
                                    obj="bw_ggradcam")

    if vis_args.RESULTS.POINTING_GAME.state:
        print(pg.print_stats())

    print('Guided grad cam completed')