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Creates (input, conditioning, mask, target) tuples for ControlNet fine-tuning.
Pipeline: FFHQ image -> extract landmarks -> random FFD manipulation ->
generate conditioning + mask -> apply clinical augmentation to input.
Augmentations are applied to INPUT only, never to target (ground truth).
"""
from __future__ import annotations
from collections.abc import Iterator
from dataclasses import dataclass
from pathlib import Path
import cv2
import numpy as np
from landmarkdiff.conditioning import generate_conditioning
from landmarkdiff.landmarks import extract_landmarks, render_landmark_image
from landmarkdiff.manipulation import (
PROCEDURE_LANDMARKS,
apply_procedure_preset,
)
from landmarkdiff.masking import generate_surgical_mask
from landmarkdiff.synthetic.augmentation import apply_clinical_augmentation
from landmarkdiff.synthetic.tps_warp import warp_image_tps
@dataclass(frozen=True)
class TrainingPair:
"""A single training sample for ControlNet fine-tuning."""
input_image: np.ndarray # augmented input (512x512 BGR)
target_image: np.ndarray # clean target (512x512 BGR) — TPS-warped original
conditioning: np.ndarray # landmark rendering (512x512 BGR)
canny: np.ndarray # canny edge map (512x512 grayscale)
mask: np.ndarray # feathered surgical mask (512x512 float32)
procedure: str
intensity: float
PROCEDURES = list(PROCEDURE_LANDMARKS.keys())
def generate_pair(
image: np.ndarray,
procedure: str | None = None,
intensity: float | None = None,
target_size: int = 512,
rng: np.random.Generator | None = None,
) -> TrainingPair | None:
"""Generate a single training pair from a face image.
Args:
image: BGR input image (any size).
procedure: Procedure type (random if None).
intensity: Manipulation intensity 0-100 (random 30-90 if None).
target_size: Output resolution.
rng: Random number generator.
Returns:
TrainingPair or None if face detection fails.
"""
rng = rng or np.random.default_rng()
# Resize to target
resized = cv2.resize(image, (target_size, target_size))
# Extract landmarks
face = extract_landmarks(resized)
if face is None:
return None
# Random procedure and intensity if not specified
if procedure is None:
procedure = rng.choice(PROCEDURES)
if intensity is None:
intensity = float(rng.uniform(30, 90))
# Manipulate landmarks
manipulated = apply_procedure_preset(face, procedure, intensity, target_size)
# Generate conditioning from manipulated landmarks
landmark_img = render_landmark_image(manipulated, target_size, target_size)
_, canny, _ = generate_conditioning(manipulated, target_size, target_size)
# Generate mask
mask = generate_surgical_mask(face, procedure, target_size, target_size)
# Generate target: TPS warp the original image to match manipulated landmarks
src_px = face.pixel_coords
dst_px = manipulated.pixel_coords
target = warp_image_tps(resized, src_px, dst_px)
# Apply clinical augmentation to INPUT only (never target)
augmented_input = apply_clinical_augmentation(resized, rng=rng)
return TrainingPair(
input_image=augmented_input,
target_image=target,
conditioning=landmark_img,
canny=canny,
mask=mask,
procedure=procedure,
intensity=intensity,
)
def generate_pairs_from_directory(
image_dir: str | Path,
num_pairs: int = 1000,
target_size: int = 512,
seed: int = 42,
quality_check: bool = True,
min_quality: float = 45.0,
) -> Iterator[TrainingPair]:
"""Generate training pairs from a directory of face images.
Args:
image_dir: Directory containing face images.
num_pairs: Total number of pairs to generate.
target_size: Output resolution.
seed: Random seed.
quality_check: Run face verifier quality check on source images.
min_quality: Minimum quality score to use image (0-100).
Yields:
TrainingPair instances.
"""
rng = np.random.default_rng(seed)
image_dir = Path(image_dir)
extensions = {".jpg", ".jpeg", ".png", ".webp"}
image_files = sorted(
f for f in image_dir.iterdir()
if f.suffix.lower() in extensions
)
if not image_files:
raise FileNotFoundError(f"No images found in {image_dir}")
# Optional quality pre-filter
_quality_cache: dict[str, float] = {}
quality_rejects = 0
generated = 0
consecutive_failures = 0
idx = 0
while generated < num_pairs:
# Cycle through images
img_path = image_files[idx % len(image_files)]
idx += 1
image = cv2.imread(str(img_path))
if image is None:
consecutive_failures += 1
if consecutive_failures > len(image_files):
print(f"Warning: {consecutive_failures} consecutive failures, stopping early")
break
continue
# Quality gate: reject low-quality source images before pair generation
if quality_check:
cache_key = str(img_path)
if cache_key not in _quality_cache:
try:
from landmarkdiff.face_verifier import analyze_distortions
resized = cv2.resize(image, (target_size, target_size))
report = analyze_distortions(resized)
_quality_cache[cache_key] = report.quality_score
except Exception:
_quality_cache[cache_key] = 100.0 # Can't check — allow through
if _quality_cache[cache_key] < min_quality:
quality_rejects += 1
if quality_rejects % 100 == 0:
print(f" Quality filter: {quality_rejects} images rejected so far")
consecutive_failures += 1
if consecutive_failures > len(image_files):
break
continue
pair = generate_pair(image, target_size=target_size, rng=rng)
if pair is not None:
yield pair
generated += 1
consecutive_failures = 0
else:
consecutive_failures += 1
if consecutive_failures > len(image_files):
print(f"Warning: {consecutive_failures} consecutive failures, stopping early")
break
if quality_rejects > 0:
print(f"Quality filter: rejected {quality_rejects} low-quality source images")
def save_pair(pair: TrainingPair, output_dir: Path, index: int) -> None:
"""Save a training pair to disk."""
output_dir.mkdir(parents=True, exist_ok=True)
prefix = f"{index:06d}"
cv2.imwrite(str(output_dir / f"{prefix}_input.png"), pair.input_image)
cv2.imwrite(str(output_dir / f"{prefix}_target.png"), pair.target_image)
cv2.imwrite(str(output_dir / f"{prefix}_conditioning.png"), pair.conditioning)
cv2.imwrite(str(output_dir / f"{prefix}_canny.png"), pair.canny)
cv2.imwrite(str(output_dir / f"{prefix}_mask.png"), (pair.mask * 255).astype(np.uint8))
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