""" Generate train/val/test splits for the SoloFace2 dataset. Uses the same stratified split logic as the training pipeline: - 80% train, 10% val, 10% test - Stratified by column 'p' - random_state = 42 Output: splits.csv (image, split) """ import pandas as pd from sklearn.model_selection import train_test_split from pathlib import Path LABELS_CSV = Path(r"C:\Users\Bidyut\Desktop\codebase\face-reg\fd-dataset\fd-dataset\labels.csv") OUT_DIR = Path(r"C:\Users\Bidyut\Desktop\codebase\soloface2") SEED = 42 TEST_SPLIT = 0.1 VAL_SPLIT = 0.1 print(f"Loading {LABELS_CSV}...") df = pd.read_csv(LABELS_CSV) print(f" Total: {len(df):,} images") print(f" Face (p=1): {df['p'].sum():,}") print(f" No-face (p=0): {(df['p'] == 0).sum():,}") # Stratified split: 80/10/10 train_val, test = train_test_split( df, test_size=TEST_SPLIT, random_state=SEED, stratify=df['p'], ) val_frac = VAL_SPLIT / (1.0 - TEST_SPLIT) train, val = train_test_split( train_val, test_size=val_frac, random_state=SEED, stratify=train_val['p'], ) # Assign split labels df['split'] = 'train' df.loc[val.index, 'split'] = 'val' df.loc[test.index, 'split'] = 'test' # Save splits.csv splits_path = OUT_DIR / "splits.csv" df[['image', 'split']].to_csv(splits_path, index=False) # Print stats print(f"\n{'='*50}") print(f"SPLIT DISTRIBUTION") print(f"{'='*50}") for split in ['train', 'val', 'test']: sdf = df[df['split'] == split] face = (sdf['p'] == 1).sum() noface = (sdf['p'] == 0).sum() print(f" {split:5s}: {len(sdf):>8,} face={face:>8,} no-face={noface:>8,} ({len(sdf)/len(df)*100:.1f}%)") print(f"\n Total: {len(df):>8,}") # Also by source print(f"\n{'='*50}") print(f"SOURCE DISTRIBUTION") print(f"{'='*50}") for src_prefix, src_name in [ ('vgg_', 'VGGFace2'), ('sf_train_', 'SoloFace train'), ('sf_test_', 'SoloFace test'), ('sf_val_', 'SoloFace val'), ('wf_train_', 'WIDER FACE train'), ('wf_val_', 'WIDER FACE val'), ('coco_', 'COCO'), ]: sdf = df[df['image'].str.startswith(src_prefix)] if len(sdf): face = (sdf['p'] == 1).sum() noface = (sdf['p'] == 0).sum() print(f" {src_name:<20s}: {len(sdf):>8,} face={face:>8,} no-face={noface:>8,}") print(f"\nSplits saved to: {splits_path}")