Initial upload: public_fundus (198k images, 42 shards) + manifest + captions + code
e2f75d1 verified | #!/usr/bin/env python3 | |
| """ | |
| DRIVE adapter — vessel segmentation public dataset. | |
| Inputs: | |
| {input_root}/DRIVE/training/images/NN_training.tif (20 files) | |
| {input_root}/DRIVE/training/1st_manual/NN_manual1.gif (vessel GT) | |
| {input_root}/DRIVE/training/mask/NN_training_mask.gif (FOV mask) | |
| Outputs (under {output_root}): | |
| extracted/public_drive_vessel/{hash[:2]}/{hash}/ | |
| fundus_color.jpg (re-encoded from .tif) | |
| vessel_mask.png (binary 0/255, from 1st_manual) | |
| fov_mask.png (binary 0/255, from mask/) | |
| meta.json | |
| manifest/public_drive_vessel_images.parquet | |
| captions/public_drive_vessel_captions.parquet | |
| Test split (also 20 images) intentionally skipped — it lacks vessel GT, only FOV mask. | |
| """ | |
| import argparse | |
| import json | |
| from pathlib import Path | |
| import numpy as np | |
| import pandas as pd | |
| from PIL import Image | |
| from public_common import ( | |
| IMAGE_SCHEMA_COLUMNS, CAPTION_SCHEMA_COLUMNS, | |
| study_hash_for, default_base_fields, | |
| caption_l1_public, caption_l3_public, | |
| study_dir_for, rel_file_path, write_meta, coerce_image_row, | |
| ) | |
| COHORT = "public_drive_vessel" | |
| COHORT_PHRASE = "DRIVE retinal vessel segmentation dataset" | |
| def _binarize(p: Path) -> np.ndarray: | |
| arr = np.array(Image.open(p).convert("L")) | |
| return ((arr > 127).astype(np.uint8) * 255) | |
| def process_one(image_path: Path, vessel_path: Path, fov_path: Path, | |
| out_root: Path, force: bool): | |
| basename = image_path.stem # "21_training" | |
| sh = study_hash_for(COHORT, basename) | |
| sdir = study_dir_for(out_root, COHORT, sh) | |
| sdir.mkdir(parents=True, exist_ok=True) | |
| meta_path = sdir / "meta.json" | |
| if meta_path.exists() and not force: | |
| try: | |
| meta = json.loads(meta_path.read_text()) | |
| if meta.get("status") == "ok": | |
| return _row_and_caps(meta) | |
| except Exception: | |
| pass | |
| img = Image.open(image_path).convert("RGB") | |
| w, h = img.size | |
| img.save(sdir / "fundus_color.jpg", "JPEG", quality=95) | |
| Image.fromarray(_binarize(vessel_path), mode="L").save( | |
| sdir / "vessel_mask.png", "PNG", optimize=True) | |
| Image.fromarray(_binarize(fov_path), mode="L").save( | |
| sdir / "fov_mask.png", "PNG", optimize=True) | |
| meta = { | |
| "status": "ok", | |
| "cohort": COHORT, | |
| "study_hash": sh, | |
| "source_basename": basename, | |
| "image_height_px": int(h), | |
| "image_width_px": int(w), | |
| "has_vessel_mask": True, | |
| "has_fov_mask": True, | |
| "eye": "unknown", | |
| } | |
| write_meta(sdir, meta) | |
| return _row_and_caps(meta) | |
| def _row_and_caps(meta: dict): | |
| sh = meta["study_hash"] | |
| image_id = f"{COHORT}_{sh}_fundus_color" | |
| row = default_base_fields(COHORT, sh, eye=meta["eye"]) | |
| row.update({ | |
| "image_id": image_id, | |
| "file_path": rel_file_path(COHORT, sh, "fundus_color.jpg"), | |
| "file_format": "jpg", | |
| "modality": "fundus_color", | |
| "anatomy": "macula", | |
| "device_technology": "fundus_camera", | |
| "scan_protocol": "single_shot", | |
| "image_height_px": int(meta["image_height_px"]), | |
| "image_width_px": int(meta["image_width_px"]), | |
| "has_segmentation": True, | |
| "n_layers_visible": 0, | |
| "is_valid": True, | |
| }) | |
| caps = caption_l1_public(image_id, COHORT_PHRASE, "fundus_color", meta["eye"]) | |
| l3 = ("A color fundus photograph from the DRIVE dataset, " | |
| "with manually annotated retinal vessel segmentation mask and field-of-view mask.") | |
| caps.append(caption_l3_public(image_id, l3, "manifest_fields+vessel_mask")) | |
| return row, caps | |
| def main(): | |
| ap = argparse.ArgumentParser() | |
| ap.add_argument("--input-root", required=True, | |
| help="Path to .../Generation/DRIVE (contains DRIVE/training/...)") | |
| ap.add_argument("--output-root", required=True, | |
| help="Public manifest root, e.g. .../c3/public_eye_pretrain") | |
| ap.add_argument("--force", action="store_true") | |
| args = ap.parse_args() | |
| in_root = Path(args.input_root) | |
| out_root = Path(args.output_root) | |
| train_dir = in_root / "DRIVE" / "training" | |
| img_dir = train_dir / "images" | |
| vessel_dir = train_dir / "1st_manual" | |
| fov_dir = train_dir / "mask" | |
| img_files = sorted(img_dir.glob("*_training.tif")) | |
| print(f"[{COHORT}] {len(img_files)} training images under {img_dir}") | |
| rows, caps = [], [] | |
| for ip in img_files: | |
| stem = ip.stem.replace("_training", "") | |
| vp = vessel_dir / f"{stem}_manual1.gif" | |
| fp = fov_dir / f"{stem}_training_mask.gif" | |
| if not (vp.exists() and fp.exists()): | |
| print(f" skip {ip.name}: vessel={vp.exists()}, fov={fp.exists()}") | |
| continue | |
| row, cap = process_one(ip, vp, fp, out_root, args.force) | |
| rows.append(row) | |
| caps.extend(cap) | |
| if not rows: | |
| print(f"[{COHORT}] no rows produced, aborting") | |
| return | |
| manifest_dir = out_root / "manifest" | |
| captions_dir = out_root / "captions" | |
| manifest_dir.mkdir(parents=True, exist_ok=True) | |
| captions_dir.mkdir(parents=True, exist_ok=True) | |
| imgs_df = pd.DataFrame([coerce_image_row(r) for r in rows])[IMAGE_SCHEMA_COLUMNS] | |
| imgs_df.to_parquet(manifest_dir / f"{COHORT}_images.parquet", index=False) | |
| caps_df = pd.DataFrame(caps)[CAPTION_SCHEMA_COLUMNS] | |
| caps_df.to_parquet(captions_dir / f"{COHORT}_captions.parquet", index=False) | |
| print(f"[{COHORT}] wrote {len(imgs_df)} image rows, {len(caps_df)} caption rows") | |
| if __name__ == "__main__": | |
| main() | |