merge: pyramid_propagate (con coarse_stride preservato)

This commit is contained in:
2026-05-04 15:42:41 +02:00
+59 -5
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@@ -576,6 +576,8 @@ class LineShapeMatcher:
coarse_stride: int = 1,
scale_penalty: float = 0.0,
search_roi: tuple[int, int, int, int] | None = None,
pyramid_propagate: bool = True,
propagate_topk: int = 8,
) -> list[Match]:
"""
scale_penalty: se > 0, riduce lo score per match a scala diversa da 1.0:
@@ -666,9 +668,11 @@ class LineShapeMatcher:
end = min(n, i + half + 1)
neighbor_map[vi_c] = vi_sorted[start:end]
# Pruning varianti via top-level (parallelizzato) - solo coarse.
# coarse_stride > 1: valuta solo 1 pixel ogni stride, ~stride² speed-up.
# Pruning varianti via top-level (parallelizzato).
# coarse_stride > 1: valuta solo 1 pixel ogni stride, ~stride^2 speed-up.
# pyramid_propagate=True: ritorna top-K picchi per restringere full-res.
cs = max(1, int(coarse_stride))
peaks_by_vi: dict[int, list[tuple[int, int, float]]] = {}
def _top_score(vi: int) -> tuple[int, float]:
var = self.variants[vi]
@@ -677,7 +681,23 @@ class LineShapeMatcher:
spread_top, lvl.dx, lvl.dy, lvl.bin, bit_active_top,
bg_cache_top[var.scale], stride=cs,
)
return vi, float(score.max()) if score.size else -1.0
if score.size == 0:
return vi, -1.0
best = float(score.max())
if pyramid_propagate and best > 0:
# Top-K posizioni > top_thresh (max propagate_topk)
flat = score.ravel()
k = min(propagate_topk, flat.size)
idx = np.argpartition(-flat, k - 1)[:k]
peaks: list[tuple[int, int, float]] = []
for i in idx:
s = float(flat[i])
if s < top_thresh * 0.7:
continue
yt, xt = int(i // score.shape[1]), int(i % score.shape[1])
peaks.append((xt, yt, s))
peaks_by_vi[vi] = peaks
return vi, best
kept_coarse: list[tuple[int, float]] = []
all_top_scores: list[tuple[int, float]] = []
@@ -737,14 +757,48 @@ class LineShapeMatcher:
for sc in unique_scales:
bg_cache_full[sc] = _bg_for_scale(density_full, sc, 1)
# Margine in full-res attorno ad ogni peak top: copre incertezza
# downsampling (sf_top px) + spread_radius + slack per NMS.
propagate_margin = sf_top + self.spread_radius + max(8, nms_radius // 2)
H_full, W_full = spread0.shape
def _full_score(vi: int) -> tuple[int, np.ndarray]:
var = self.variants[vi]
lvl0 = var.levels[0]
score = _jit_score_bitmap_rescored(
if not pyramid_propagate or vi not in peaks_by_vi or not peaks_by_vi[vi]:
# Path legacy: scansiona intera scena
return vi, _jit_score_bitmap_rescored(
spread0, lvl0.dx, lvl0.dy, lvl0.bin, bit_active_full,
bg_cache_full[var.scale],
)
return vi, score
# Path piramide propagata: valuta solo crop locali attorno
# alle posizioni dei picchi top-level (riproiettati a full-res).
score_full = np.zeros((H_full, W_full), dtype=np.float32)
mark = np.zeros((H_full, W_full), dtype=bool)
bg = bg_cache_full[var.scale]
for xt, yt, _s in peaks_by_vi[vi]:
cx0 = xt * sf_top
cy0 = yt * sf_top
x_lo = max(0, cx0 - propagate_margin)
x_hi = min(W_full, cx0 + propagate_margin + 1)
y_lo = max(0, cy0 - propagate_margin)
y_hi = min(H_full, cy0 + propagate_margin + 1)
if x_hi <= x_lo or y_hi <= y_lo:
continue
if mark[y_lo:y_hi, x_lo:x_hi].all():
continue
# Crop spread + bg, valuta kernel sul crop
spread_crop = np.ascontiguousarray(spread0[y_lo:y_hi, x_lo:x_hi])
bg_crop = np.ascontiguousarray(bg[y_lo:y_hi, x_lo:x_hi])
score_crop = _jit_score_bitmap_rescored(
spread_crop, lvl0.dx, lvl0.dy, lvl0.bin,
bit_active_full, bg_crop,
)
score_full[y_lo:y_hi, x_lo:x_hi] = np.maximum(
score_full[y_lo:y_hi, x_lo:x_hi], score_crop,
)
mark[y_lo:y_hi, x_lo:x_hi] = True
return vi, score_full
candidates_per_var: list[tuple[int, np.ndarray]] = []
raw: list[tuple[float, int, int, int]] = []