def display_enc_dec_images(images, intermediate_height, intermediate_width):
    """
    Displays a list of images after the process of encoding and decoding
    :param images: numpy array of images
    :param intermediate_height: int
    :param intermediate_width: int
    :return: None
    """
    columns, rows = 3, len(images)
    fig = plt.figure()

    # ax enables access to manipulate each of subplots
    ax = []

    for row in range(rows):
        raw_img = images[row]

        encoded = encode_symbol(raw_img,
                                intermediate_height,
                                intermediate_width,
                                erode=True)
        decoded = decode_symbol(encoded, INPUT_HEIGHT, INPUT_WIDTH)

        ax.append(fig.add_subplot(rows, columns, columns * row + 1))
        plt.imshow(raw_img, alpha=0.25, cmap='gray')

        ax.append(fig.add_subplot(rows, columns, columns * row + 2))
        plt.imshow(encoded, alpha=0.25, cmap='gray')

        ax.append(fig.add_subplot(rows, columns, columns * row + 3))
        plt.imshow(decoded, alpha=0.25, cmap='gray')

    plt.colorbar()
    plt.show()
示例#2
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    def show_frames(self, frame, symbols, expressions):
        """
        Displays the symbols found in the image, as well as additional frame to show how the classifier
        'sees' the symbols candidates
        :param frame: input image
        :param symbols: list of symbolboxes found in the image
        :param expressions: list of expressionboxes found in the image
        :return: None
        """
        super().show_frames(frame, symbols, expressions)

        frame_height, frame_width = frame.shape[0], frame.shape[1]
        decoded_frame = 255 * np.ones(
            (frame_height, frame_width), dtype=np.uint8)
        m = len(symbols)
        for i in range(m):
            symbol = symbols[i]
            if symbol.top < frame_height - INPUT_HEIGHT and symbol.left < frame_width - INPUT_WIDTH:
                encoded_symbol_box = encode_symbol(symbol.get_raw_box(),
                                                   erode=False)
                encoded_decoded_symbol_box = decode_symbol(
                    encoded_symbol_box, INPUT_HEIGHT, INPUT_WIDTH)
                decoded_frame[symbol.top:symbol.top + INPUT_HEIGHT,
                              symbol.left:symbol.left +
                              INPUT_WIDTH] = encoded_decoded_symbol_box
            cv2.putText(decoded_frame,
                        symbol.prediction_cls,
                        org=(symbol.left, symbol.top),
                        fontFace=cv2.FONT_HERSHEY_SIMPLEX,
                        fontScale=1,
                        color=(0, 255, 0),
                        thickness=2)
        cv2.imshow('classification frame', decoded_frame)
def preprocess_symbol(img, target_channel_size):
    """
    First step transformation of a symbol image before it can be
    merged with background
    :param img: input symbol image
    :param target_channel_size: 2 for gray, 3 for bgr
    :return: transformed symbol image
    """
    assert len(img.shape) == 2
    img = encode_symbol(img, *img.shape, erode=False)
    img = decode_symbol(img, *img.shape)
    if target_channel_size == 2:
        pass
    elif target_channel_size == 3:
        img = cv2.cvtColor(img, cv2.COLOR_GRAY2BGR)
    return img
def generate_encoded_decoded_dataset(source_folder_path, target_folder_path,
                                     intermediate_shape):
    """
    Transforms the symbols specified in the source folder into
    more appropriate shape and saves in the target folder
    :param source_folder_path: path to folder with input .npz symbols
    :param target_folder_path: path to folder with output folder
    :param intermediate_shape: intermediate shape (height, width) of the symbol
                                image
    :return: None
    """

    for filename in os.listdir(source_folder_path):

        symbol_name = filename[:-4]
        print("Resizing symbol: {}".format(symbol_name))

        source_dataset = np.load(pjoin(source_folder_path, filename))
        X, y = source_dataset['X'], source_dataset['y']
        count, newX, newY = 0, [], []

        for example in range(X.shape[0]):
            symbol = X[example]

            # append unmodified example
            newX.append(X[0])
            newY.append(symbol_name)

            # append differently transformed images
            for intermediate_height, intermediate_width in intermediate_shape:
                encoded = sl.encode_symbol(symbol,
                                           intermediate_height,
                                           intermediate_width,
                                           erode=True)
                decoded = sl.decode_symbol(encoded, INPUT_HEIGHT, INPUT_WIDTH)
                newX.append(decoded)
                newY.append(symbol_name)

            count += 1
            if count % 100 == 0:
                print("Transformed {} images for symbol {}".format(
                    count, symbol_name))

        newX = np.array(newX)
        newY = np.array(newY, dtype='|S6')  # data type: string
        save_dataset(newX, newY, pjoin(target_folder_path, filename))
示例#5
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    def get_symbols(self, frame):
        """Returns symbol boxes found in the camera frame"""

        gray_frame = cv2.cvtColor(frame, cv2.COLOR_BGR2GRAY)

        classification_image = cv2.adaptiveThreshold(gray_frame, 255, cv2.ADAPTIVE_THRESH_GAUSSIAN_C, \
                                                     cv2.THRESH_BINARY, 7, 2.5)
        localization_image = cv2.erode(classification_image,
                                       np.ones((2, 2), np.uint8),
                                       iterations=1)

        symbols_positions = self._get_symbols_candidates_location(
            localization_image)

        # get raw unprocessed symbol boxes
        symbols = (classification_image[top:bottom, left:right]
                   for (top, left, bottom, right) in symbols_positions)
        # encode them to filter only the most relevant features, do not rescale yet
        symbols = [
            encode_symbol(symbol, None, None, erode=False)
            for symbol in symbols
        ]
        # decode them to further bring out the most relevant features and rescale
        symbols = [
            decode_symbol(symbol, INPUT_HEIGHT, INPUT_WIDTH)
            for symbol in symbols
        ]
        # reshape to fit the classifier format
        symbols = np.array(symbols).reshape(len(symbols), INPUT_HEIGHT,
                                            INPUT_WIDTH)
        # make predictions on the symbols
        labels, probs = self.symbol_classifier.predict(symbols)

        symbol_boxes = [
            SymbolBox(classification_image, top, left, bottom, right, prob,
                      label.decode())
            for (top, left, bottom,
                 right), prob, label in zip(symbols_positions, probs, labels)
        ]
        return symbol_boxes
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 def test_decode_symbol(self):
     image = np.zeros((45,45))
     decoded = decode_symbol(image, 32, 32)
     self.assertEqual(decoded.shape, (32,32))