import argparse from pathlib import Path from tqdm.auto import tqdm import numpy as np from PIL import Image import json from brisque import BRISQUE import ipdb st=ipdb.set_trace if __name__ == "__main__": input_dir = "/home/jiahao/workspace/LGM/outputs/director3d/prompt_single/A_sparkling_diamond_tiara" obj = BRISQUE(url=False) input_dir = Path(input_dir) dir_list = [input_dir] all_results = [] for video_dir in tqdm(dir_list): if video_dir.is_dir(): if 'gaussiandreamer' in str(video_dir): images_dir = video_dir / "save" / "it1200-test" method = 'gaussiandreamer' elif 'lgm' in str(video_dir): images_dir = video_dir / video_dir.name method = 'lgm' elif 'director3d' in str(video_dir): images_dir = video_dir / "0" / video_dir.name method = 'director3d' else: raise ValueError(f"Unknown video directory: {video_dir}") images_list = list(images_dir.glob('*')) results = [] for image_path in tqdm(images_list, desc=f"Processing {video_dir.name}"): try: image = np.array(Image.open(image_path)) except: continue metric = obj.score(image) if np.isnan(metric): print(f"NaN found in {image_path}") continue results.append(metric) all_results.append(np.mean(results)) average_niqe = np.mean(all_results) print(f"{method} Average BRISQUE: {average_niqe}") output_metrics = {'average_BRISQUE': average_niqe, 'all_results': all_results} with open(input_dir / 'BRISQUE.json', 'w') as f: json.dump(output_metrics, f, indent=4)