import concurrent.futures import os.path import time from pathlib import Path import albumentations as A import cv2 import numpy as np from constants import (data_images_dir, data_labels_dir, processed_images_dir, processed_labels_dir) from dto.imageLabel import ImageLabel total_files_processed = 0 transform = A.Compose([ # Flips, rotations and brightness A.HorizontalFlip(), A.RandomBrightnessContrast(brightness_limit=(-0.05, 0.05), contrast_limit=(-0.05, 0.05)), A.Affine(p=0.7, scale=(0.8, 1.2), rotate=25, translate_percent=0.1), # Weather A.RandomFog(p=0.2, fog_coef_range=(0, 0.3)), A.RandomShadow(p=0.2), # Image Quality/Noise A.MotionBlur(p=0.2, blur_limit=(3, 5)), # Color Variations A.HueSaturationValue(p=0.3, hue_shift_limit=8, sat_shift_limit=8, val_shift_limit=8) ], bbox_params=A.BboxParams(format='yolo')) def correct_bboxes(labels): margin = 0.0005 min_size = 0.01 res = [] for bboxes in labels: x = bboxes[0] y = bboxes[1] half_width = 0.5*bboxes[2] half_height = 0.5*bboxes[3] # calc how much bboxes are outside borders ( +small margin ). # value should be negative. If it's positive, then put 0, as no correction w_diff = min((1 - margin) - (x + half_width), (x - half_width) - margin, 0) w = bboxes[2] + 2*w_diff if w < min_size: continue h_diff = min((1 - margin) - (y + half_height), ((y - half_height) - margin), 0) h = bboxes[3] + 2 * h_diff if h < min_size: continue res.append([x, y, w, h, bboxes[4]]) return res pass def image_processing(img_ann: ImageLabel) -> [ImageLabel]: results = [] labels = correct_bboxes(img_ann.labels) if len(labels) == 0 and len(img_ann.labels) != 0: print('no labels but was!!!') results.append(ImageLabel( image=img_ann.image, labels=img_ann.labels, image_path=os.path.join(processed_images_dir, Path(img_ann.image_path).name), labels_path=os.path.join(processed_labels_dir, Path(img_ann.labels_path).name) ) ) for i in range(7): try: res = transform(image=img_ann.image, bboxes=labels) path = Path(img_ann.image_path) name = f'{path.stem}_{i + 1}' img = ImageLabel( image=res['image'], labels=res['bboxes'], image_path=os.path.join(processed_images_dir, f'{name}{path.suffix}'), labels_path=os.path.join(processed_labels_dir, f'{name}.txt') ) results.append(img) except Exception as e: print(f'Error during transformation: {e}') return results def write_result(img_ann: ImageLabel): cv2.imencode('.jpg', img_ann.image)[1].tofile(img_ann.image_path) print(f'{img_ann.image_path} written') with open(img_ann.labels_path, 'w') as f: lines = [f'{ann[4]} {round(ann[0], 5)} {round(ann[1], 5)} {round(ann[2], 5)} {round(ann[3], 5)}\n' for ann in img_ann.labels] f.writelines(lines) f.close() global total_files_processed print(f'{total_files_processed}. {img_ann.labels_path} written') def read_labels(labels_path) -> [[]]: with open(labels_path, 'r') as f: rows = f.readlines() arr = [] for row in rows: str_coordinates = row.split(' ') class_num = str_coordinates.pop(0) coordinates = [float(n.replace(',', '.')) for n in str_coordinates] # noinspection PyTypeChecker coordinates.append(class_num) arr.append(coordinates) return arr def preprocess_annotations(): global total_files_processed # Indicate that we're using the global counter total_files_processed = 0 os.makedirs(processed_images_dir, exist_ok=True) os.makedirs(processed_labels_dir, exist_ok=True) processed_images = set(f.name for f in os.scandir(processed_images_dir)) images = [] with os.scandir(data_images_dir) as imd: for image_file in imd: if image_file.is_file() and image_file.name not in processed_images: images.append(image_file) with concurrent.futures.ThreadPoolExecutor() as executor: executor.map(process_image_file, images) def process_image_file(image_file): try: image_path = os.path.join(data_images_dir, image_file.name) labels_path = os.path.join(data_labels_dir, f'{Path(str(image_path)).stem}.txt') image = cv2.imdecode(np.fromfile(image_path, dtype=np.uint8), cv2.IMREAD_UNCHANGED) img_ann = ImageLabel( image_path=image_path, image=image, labels_path=labels_path, labels=read_labels(labels_path) ) try: results = image_processing(img_ann) for res_ann in results: write_result(res_ann) except Exception as e: print(e) global total_files_processed total_files_processed += 1 except Exception as e: print(f'Error appeared in thread for {image_file.name}: {e}') def main(): while True: preprocess_annotations() print('All processed, waiting for 2 minutes...') time.sleep(300) if __name__ == '__main__': main()