# SPDX-FileCopyrightText: Copyright 2021-2023 Arm Limited and/or its affiliates # SPDX-License-Identifier: Apache-2.0 # # Licensed under the Apache License, Version 2.0 (the "License"); # you may not use this file except in compliance with the License. # You may obtain a copy of the License at # # http://www.apache.org/licenses/LICENSE-2.0 # # Unless required by applicable law or agreed to in writing, software # distributed under the License is distributed on an "AS IS" BASIS, # WITHOUT WARRANTIES OR CONDITIONS OF ANY KIND, either express or implied. # See the License for the specific language governing permissions and # limitations under the License. """ Utility script to convert a set of RGB images in a given location into corresponding cpp files and a single hpp file referencing the vectors from the cpp files. """ import glob import math import typing from argparse import ArgumentParser from dataclasses import dataclass from pathlib import Path import numpy as np from PIL import Image, UnidentifiedImageError from jinja2 import Environment, FileSystemLoader from gen_utils import GenUtils # pylint: disable=duplicate-code parser = ArgumentParser() parser.add_argument( "--image_path", type=str, help="path to images folder or image file to convert." ) parser.add_argument( "--source_folder_path", type=str, help="path to source folder to be generated." ) parser.add_argument( "--header_folder_path", type=str, help="path to header folder to be generated." ) parser.add_argument( "--image_size", type=int, nargs=2, help="Size (width and height) of the converted images." ) parser.add_argument( "--license_template", type=str, help="Header template file", default="header_template.txt" ) parsed_args = parser.parse_args() env = Environment(loader=FileSystemLoader(Path(__file__).parent / 'templates'), trim_blocks=True, lstrip_blocks=True) # pylint: enable=duplicate-code @dataclass class ImagesParams: """ Template params for Images.hpp and Images.cc """ num_images: int image_size: typing.Sequence image_array_names: typing.List[str] image_filenames: typing.List[str] def write_hpp_file( images_params: ImagesParams, header_file_path: Path, cc_file_path: Path, header_template_file: str, ): """ Write Images.hpp and Images.cc @param images_params: Template params @param header_file_path: Images.hpp path @param cc_file_path: Images.cc path @param header_template_file: Header template file name """ print(f"++ Generating {header_file_path}") hdr = GenUtils.gen_header(env, header_template_file) image_size = str(images_params.image_size[0] * images_params.image_size[1] * 3) env \ .get_template('Images.hpp.template') \ .stream(common_template_header=hdr, imgs_count=images_params.num_images, img_size=image_size, var_names=images_params.image_array_names) \ .dump(str(header_file_path)) env \ .get_template('Images.cc.template') \ .stream(common_template_header=hdr, var_names=images_params.image_array_names, img_names=images_params.image_filenames) \ .dump(str(cc_file_path)) def resize_crop_image( original_image: Image.Image, image_size: typing.Sequence ) -> np.ndarray: """ Resize and crop input image @param original_image: Image to resize and crop @param image_size: New image size @return: Resized and cropped image """ # IFM size ifm_width = image_size[0] ifm_height = image_size[1] # Aspect ratio resize scale_ratio = (float(max(ifm_width, ifm_height)) / float(min(original_image.size[0], original_image.size[1]))) resized_width = int(original_image.size[0] * scale_ratio) resized_height = int(original_image.size[1] * scale_ratio) resized_image = original_image.resize( size=(resized_width, resized_height), resample=Image.Resampling.BILINEAR ) # Crop the center of the image resized_image = resized_image.crop(( (resized_width - ifm_width) / 2, # left (resized_height - ifm_height) / 2, # top (resized_width + ifm_width) / 2, # right (resized_height + ifm_height) / 2 # bottom )) return np.array(resized_image, dtype=np.uint8).flatten() def write_individual_img_cc_file( rgb_data: np.ndarray, image_filename: str, cc_filename: Path, header_template_file: str, array_name: str ): """ Write image.cc @param rgb_data: Image data @param image_filename: Image file name @param cc_filename: image.cc path @param header_template_file: Header template file name @param array_name: C++ array name """ print(f"++ Converting {image_filename} to {cc_filename.name}") hdr = GenUtils.gen_header(env, header_template_file, image_filename) hex_line_generator = (', '.join(map(hex, sub_arr)) for sub_arr in np.array_split(rgb_data, math.ceil(len(rgb_data) / 20))) env \ .get_template('image.cc.template') \ .stream(common_template_header=hdr, var_name=array_name, img_data=hex_line_generator) \ .dump(str(cc_filename)) def main(args): """ Convert images @param args: Parsed args """ # Keep the count of the images converted image_idx = 0 image_filenames = [] image_array_names = [] if Path(args.image_path).is_dir(): filepaths = sorted(glob.glob(str(Path(args.image_path) / '**/*.*'), recursive=True)) elif Path(args.image_path).is_file(): filepaths = [args.image_path] else: raise OSError("Directory or file does not exist.") for filepath in filepaths: filename = Path(filepath).name try: original_image = Image.open(filepath).convert("RGB") except UnidentifiedImageError: print(f"-- Skipping file {filepath} due to unsupported image format.") continue image_filenames.append(filename) # Save the cc file cc_filename = (Path(args.source_folder_path) / (Path(filename).stem.replace(" ", "_") + ".cc")) array_name = "im" + str(image_idx) image_array_names.append(array_name) rgb_data = resize_crop_image(original_image, args.image_size) write_individual_img_cc_file( rgb_data, filename, cc_filename, args.license_template, array_name ) # Increment image index image_idx = image_idx + 1 header_filepath = Path(args.header_folder_path) / "InputFiles.hpp" common_cc_filepath = Path(args.source_folder_path) / "InputFiles.cc" images_params = ImagesParams(image_idx, args.image_size, image_array_names, image_filenames) if len(image_filenames) > 0: write_hpp_file(images_params, header_filepath, common_cc_filepath, args.license_template) else: raise FileNotFoundError("No valid images found.") if __name__ == '__main__': main(parsed_args)