fix: use gradient score instead of variance for iterative deskew
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Variance is insensitive to 0.5° differences. Gradient score (L2 norm of
first derivative) detects sharp text-line transitions much better.
Also: use horizontal profile in both phases, finer coarse step (0.1°).

Co-Authored-By: Claude Opus 4.6 <noreply@anthropic.com>
This commit is contained in:
Benjamin Admin
2026-03-05 14:11:19 +01:00
parent af1b12c97d
commit 68a6b97654

View File

@@ -401,18 +401,32 @@ def deskew_image_by_word_alignment(
return png_buf.tobytes(), angle_deg
def _projection_gradient_score(profile: np.ndarray) -> float:
"""Score a projection profile by the L2-norm of its first derivative.
Higher score = sharper transitions between text-lines and gaps,
i.e. better row/column alignment. Much more sensitive to small
angular differences than plain variance.
"""
diff = np.diff(profile)
return float(np.sum(diff * diff))
def deskew_image_iterative(
img: np.ndarray,
coarse_range: float = 2.0,
coarse_step: float = 0.2,
fine_range: float = 0.5,
fine_step: float = 0.1,
coarse_step: float = 0.1,
fine_range: float = 0.15,
fine_step: float = 0.02,
) -> Tuple[np.ndarray, float, Dict[str, Any]]:
"""Iterative deskew using projection-profile variance optimisation.
"""Iterative deskew using projection-profile gradient optimisation.
Two-phase search:
Phase 1 (coarse): maximise horizontal projection variance (row alignment)
Phase 2 (fine): maximise vertical projection variance (column alignment)
Two-phase search using *horizontal* projection profiles (row sums)
in both phases. The gradient score (sum of squared first-differences)
is far more sensitive to small rotations than plain variance.
Phase 1 (coarse): -2.0° … +2.0° in 0.1° steps (41 angles)
Phase 2 (fine): ±0.15° around coarse winner in 0.02° steps (≤16 angles)
Args:
img: BGR image (full resolution).
@@ -438,59 +452,44 @@ def deskew_image_iterative(
crop_h, crop_w = crop.shape[:2]
crop_center = (crop_w // 2, crop_h // 2)
# --- Phase 1: coarse sweep (horizontal projection → row alignment) ---
coarse_angles = np.arange(-coarse_range, coarse_range + coarse_step * 0.5, coarse_step)
best_coarse_angle = 0.0
best_coarse_score = -1.0
coarse_scores = []
def _sweep(angles: np.ndarray) -> list:
"""Return [(angle, score), ...] for horizontal projection gradient."""
results = []
for angle in angles:
if abs(angle) < 1e-6:
rotated_crop = crop
else:
M = cv2.getRotationMatrix2D(crop_center, angle, 1.0)
rotated_crop = cv2.warpAffine(crop, M, (crop_w, crop_h),
flags=cv2.INTER_NEAREST,
borderMode=cv2.BORDER_CONSTANT,
borderValue=0)
h_profile = np.sum(rotated_crop, axis=1, dtype=np.float64)
score = _projection_gradient_score(h_profile)
results.append((float(angle), score))
return results
for angle in coarse_angles:
if abs(angle) < 1e-6:
rotated_crop = crop
else:
M = cv2.getRotationMatrix2D(crop_center, angle, 1.0)
rotated_crop = cv2.warpAffine(crop, M, (crop_w, crop_h),
flags=cv2.INTER_NEAREST,
borderMode=cv2.BORDER_CONSTANT,
borderValue=0)
h_profile = np.sum(rotated_crop, axis=1, dtype=np.float64)
score = float(np.var(h_profile))
coarse_scores.append((round(float(angle), 2), round(score, 1)))
if score > best_coarse_score:
best_coarse_score = score
best_coarse_angle = float(angle)
# --- Phase 1: coarse sweep ---
coarse_angles = np.arange(-coarse_range, coarse_range + coarse_step * 0.5, coarse_step)
coarse_results = _sweep(coarse_angles)
best_coarse = max(coarse_results, key=lambda x: x[1])
best_coarse_angle, best_coarse_score = best_coarse
debug["coarse_best_angle"] = round(best_coarse_angle, 2)
debug["coarse_best_score"] = round(best_coarse_score, 1)
debug["coarse_scores"] = coarse_scores
debug["coarse_scores"] = [(round(a, 2), round(s, 1)) for a, s in coarse_results]
# --- Phase 2: fine sweep (vertical projection → column alignment) ---
# --- Phase 2: fine sweep around coarse winner ---
fine_lo = best_coarse_angle - fine_range
fine_hi = best_coarse_angle + fine_range
fine_angles = np.arange(fine_lo, fine_hi + fine_step * 0.5, fine_step)
best_fine_angle = best_coarse_angle
best_fine_score = -1.0
fine_scores = []
for angle in fine_angles:
if abs(angle) < 1e-6:
rotated_crop = crop
else:
M = cv2.getRotationMatrix2D(crop_center, angle, 1.0)
rotated_crop = cv2.warpAffine(crop, M, (crop_w, crop_h),
flags=cv2.INTER_NEAREST,
borderMode=cv2.BORDER_CONSTANT,
borderValue=0)
v_profile = np.sum(rotated_crop, axis=0, dtype=np.float64)
score = float(np.var(v_profile))
fine_scores.append((round(float(angle), 2), round(score, 1)))
if score > best_fine_score:
best_fine_score = score
best_fine_angle = float(angle)
fine_results = _sweep(fine_angles)
best_fine = max(fine_results, key=lambda x: x[1])
best_fine_angle, best_fine_score = best_fine
debug["fine_best_angle"] = round(best_fine_angle, 2)
debug["fine_best_score"] = round(best_fine_score, 1)
debug["fine_scores"] = fine_scores
debug["fine_scores"] = [(round(a, 2), round(s, 1)) for a, s in fine_results]
final_angle = best_fine_angle