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""" |
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데이터셋 분할 - Windows 대소문자 문제 해결 |
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각 파일에 고유한 번호를 부여하여 충돌 방지 |
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""" |
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import os |
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import shutil |
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from pathlib import Path |
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import random |
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random.seed(42) |
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print("Finding all image-label pairs...") |
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pairs = [] |
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for batch_num in range(1, 18): |
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batch_name = f'batch_{batch_num}' |
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img_dir = Path(f'data/{batch_name}') |
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lbl_dir = Path(f'labels/{batch_name}') |
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if not img_dir.exists(): |
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continue |
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for lbl_file in lbl_dir.glob('*.txt'): |
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if lbl_file.name == 'classes.txt': |
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continue |
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stem = lbl_file.stem |
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img_file_jpg = img_dir / f'{stem}.jpg' |
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img_file_JPG = img_dir / f'{stem}.JPG' |
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img_file = None |
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if img_file_jpg.exists(): |
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img_file = img_file_jpg |
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elif img_file_JPG.exists(): |
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img_file = img_file_JPG |
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if img_file and img_file.exists(): |
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pairs.append({ |
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'image': str(img_file), |
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'label': str(lbl_file), |
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'stem': stem, |
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'ext': img_file.suffix |
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}) |
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print(f"Found {len(pairs)} valid pairs") |
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random.shuffle(pairs) |
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total = len(pairs) |
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train_size = int(total * 0.8) |
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val_size = int(total * 0.1) |
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train_pairs = pairs[:train_size] |
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val_pairs = pairs[train_size:train_size + val_size] |
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test_pairs = pairs[train_size + val_size:] |
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print(f"Train: {len(train_pairs)}, Val: {len(val_pairs)}, Test: {len(test_pairs)}") |
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os.makedirs('dataset/images/train', exist_ok=True) |
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os.makedirs('dataset/images/val', exist_ok=True) |
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os.makedirs('dataset/images/test', exist_ok=True) |
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os.makedirs('dataset/labels/train', exist_ok=True) |
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os.makedirs('dataset/labels/val', exist_ok=True) |
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os.makedirs('dataset/labels/test', exist_ok=True) |
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def copy_files(pairs, split): |
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print(f"\nCopying {split}...") |
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for idx, pair in enumerate(pairs): |
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if (idx + 1) % 200 == 0: |
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print(f" {idx+1}/{len(pairs)}...") |
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img_dst = f"dataset/images/{split}/{idx:05d}_{pair['stem']}{pair['ext']}" |
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lbl_dst = f"dataset/labels/{split}/{idx:05d}_{pair['stem']}.txt" |
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shutil.copy2(pair['image'], img_dst) |
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shutil.copy2(pair['label'], lbl_dst) |
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print(f" Done! {len(pairs)} files copied") |
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actual_count = len(os.listdir(f"dataset/images/{split}")) |
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print(f" Verified: {actual_count} files in directory") |
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if actual_count != len(pairs): |
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print(f" WARNING: Expected {len(pairs)} but found {actual_count}") |
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copy_files(train_pairs, 'train') |
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copy_files(val_pairs, 'val') |
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copy_files(test_pairs, 'test') |
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with open('dataset/data.yaml', 'w') as f: |
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f.write(f"""# TACO Waste Classification Dataset |
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path: {Path('dataset').absolute()} |
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train: images/train |
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val: images/val |
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test: images/test |
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nc: 5 |
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names: ['Plastic', 'Vinyl', 'Can', 'Glass', 'Paper'] |
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""") |
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print("\ndata.yaml created") |
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print("\n=== DONE ===") |
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print(f"\nFinal verification:") |
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print(f" Train: {len(os.listdir('dataset/images/train'))} images, {len(os.listdir('dataset/labels/train'))} labels") |
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print(f" Val: {len(os.listdir('dataset/images/val'))} images, {len(os.listdir('dataset/labels/val'))} labels") |
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print(f" Test: {len(os.listdir('dataset/images/test'))} images, {len(os.listdir('dataset/labels/test'))} labels") |
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