prometheis_benchmarks / metric_scripts /compute_brisque_debug.py
sumyyyyy's picture
Upload 661 files
d270087 verified
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)