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1 Commits
| Author | SHA1 | Date | |
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| 4419c237b2 |
@@ -110,6 +110,62 @@ if HAS_NUMBA:
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acc[y, x] *= inv
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acc[y, x] *= inv
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return acc
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return acc
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@nb.njit(cache=True, parallel=True, fastmath=True, boundscheck=False)
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def _jit_score_bitmap_greedy(
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spread: np.ndarray,
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dx: np.ndarray, dy: np.ndarray, bins: np.ndarray,
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bit_active: np.uint8,
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min_score: nb.float32,
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greediness: nb.float32,
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) -> np.ndarray:
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"""Score bitmap con early-exit greedy (no rescore background).
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Per ogni pixel iteriamo le N feature; abortiamo non appena diventa
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impossibile raggiungere `min_required` count anche aggiungendo
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tutte le feature rimanenti. min_required = greediness * min_score * N.
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greediness=0 → nessun early-exit (equivalente a kernel base).
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greediness=1 → exit non appena hits + remaining < min_score * N.
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Tipico: 0.7-0.9 → 2-4x speed-up senza perdere match.
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"""
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H, W = spread.shape
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N = dx.shape[0]
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acc = np.zeros((H, W), dtype=np.float32)
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if N == 0:
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return acc
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min_req = greediness * min_score * N
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inv_N = nb.float32(1.0 / N)
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for y in nb.prange(H):
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for x in range(W):
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hits = 0
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for i in range(N):
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b = bins[i]
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mask = np.uint8(1) << b
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if (bit_active & mask) == 0:
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# Nessun chance per questa feature
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if hits + (N - i - 1) < min_req:
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break
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continue
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ddy = dy[i]
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yy = y + ddy
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if yy < 0 or yy >= H:
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if hits + (N - i - 1) < min_req:
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break
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continue
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ddx = dx[i]
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xx = x + ddx
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if xx < 0 or xx >= W:
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if hits + (N - i - 1) < min_req:
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break
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continue
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if spread[yy, xx] & mask:
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hits += 1
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else:
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if hits + (N - i - 1) < min_req:
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break
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acc[y, x] = nb.float32(hits) * inv_N
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return acc
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@nb.njit(cache=True, parallel=True, fastmath=True, boundscheck=False)
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@nb.njit(cache=True, parallel=True, fastmath=True, boundscheck=False)
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def _jit_score_bitmap_rescored(
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def _jit_score_bitmap_rescored(
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spread: np.ndarray, # uint8 (H, W)
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spread: np.ndarray, # uint8 (H, W)
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@@ -185,6 +241,10 @@ if HAS_NUMBA:
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_jit_score_bitmap(spread, dx, dy, b, np.uint8(0xFF))
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_jit_score_bitmap(spread, dx, dy, b, np.uint8(0xFF))
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bg = np.zeros((32, 32), dtype=np.float32)
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bg = np.zeros((32, 32), dtype=np.float32)
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_jit_score_bitmap_rescored(spread, dx, dy, b, np.uint8(0xFF), bg)
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_jit_score_bitmap_rescored(spread, dx, dy, b, np.uint8(0xFF), bg)
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_jit_score_bitmap_greedy(
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spread, dx, dy, b, np.uint8(0xFF),
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np.float32(0.5), np.float32(0.8),
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)
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_jit_popcount_density(spread)
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_jit_popcount_density(spread)
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else: # pragma: no cover
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else: # pragma: no cover
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@@ -198,6 +258,9 @@ else: # pragma: no cover
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def _jit_score_bitmap_rescored(spread, dx, dy, bins, bit_active, bg):
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def _jit_score_bitmap_rescored(spread, dx, dy, bins, bit_active, bg):
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raise RuntimeError("numba non disponibile")
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raise RuntimeError("numba non disponibile")
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def _jit_score_bitmap_greedy(spread, dx, dy, bins, bit_active, min_score, greediness):
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raise RuntimeError("numba non disponibile")
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def _jit_popcount_density(spread):
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def _jit_popcount_density(spread):
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raise RuntimeError("numba non disponibile")
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raise RuntimeError("numba non disponibile")
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@@ -246,6 +309,28 @@ def score_bitmap_rescored(
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return np.maximum(0.0, out).astype(np.float32)
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return np.maximum(0.0, out).astype(np.float32)
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def score_bitmap_greedy(
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spread: np.ndarray, dx: np.ndarray, dy: np.ndarray, bins: np.ndarray,
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bit_active: int, min_score: float, greediness: float,
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) -> np.ndarray:
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"""Score bitmap con early-exit greedy. Per coarse-pass aggressivo.
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Non applica rescore background: usare quando la scena ha basso clutter
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o quando si vuole mass-prune varianti via top-level rapidamente.
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"""
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if HAS_NUMBA and len(dx) > 0:
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return _jit_score_bitmap_greedy(
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np.ascontiguousarray(spread, dtype=np.uint8),
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np.ascontiguousarray(dx, dtype=np.int32),
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np.ascontiguousarray(dy, dtype=np.int32),
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np.ascontiguousarray(bins, dtype=np.int8),
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np.uint8(bit_active),
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np.float32(min_score), np.float32(greediness),
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)
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# Fallback: kernel base senza early-exit
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return score_bitmap(spread, dx, dy, bins, bit_active)
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def popcount_density(spread: np.ndarray) -> np.ndarray:
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def popcount_density(spread: np.ndarray) -> np.ndarray:
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if HAS_NUMBA:
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if HAS_NUMBA:
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return _jit_popcount_density(np.ascontiguousarray(spread, dtype=np.uint8))
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return _jit_popcount_density(np.ascontiguousarray(spread, dtype=np.uint8))
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+17
-39
@@ -40,6 +40,7 @@ from pm2d._jit_kernels import (
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score_by_shift as _jit_score_by_shift,
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score_by_shift as _jit_score_by_shift,
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score_bitmap as _jit_score_bitmap,
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score_bitmap as _jit_score_bitmap,
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score_bitmap_rescored as _jit_score_bitmap_rescored,
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score_bitmap_rescored as _jit_score_bitmap_rescored,
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score_bitmap_greedy as _jit_score_bitmap_greedy,
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popcount_density as _jit_popcount,
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popcount_density as _jit_popcount,
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HAS_NUMBA,
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HAS_NUMBA,
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)
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)
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@@ -293,42 +294,8 @@ class LineShapeMatcher:
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kh=kh, kw=kw,
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kh=kh, kw=kw,
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cx_local=float(cx_local), cy_local=float(cy_local),
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cx_local=float(cx_local), cy_local=float(cy_local),
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))
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))
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self._dedup_variants()
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return len(self.variants)
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return len(self.variants)
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def _dedup_variants(self) -> int:
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"""Rimuove varianti con feature-set identico (post-quantizzazione).
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Halcon-style: con angle range = (0, 360) e simmetrie del template,
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molte rotazioni producono lo stesso set quantizzato di feature.
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Es: quadrato a 0/90/180/270 deg → stesse features (modulo permutazione).
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Hash su feature ordinate (livello 0, full-res) elimina i duplicati.
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Vantaggio: meno varianti = meno chiamate kernel JIT al top-level
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senza perdere copertura angolare effettiva. Per template asimmetrici
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non rimuove nulla.
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"""
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seen: dict[bytes, int] = {}
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kept: list[_Variant] = []
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removed = 0
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for var in self.variants:
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lvl0 = var.levels[0]
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order = np.lexsort((lvl0.bin, lvl0.dy, lvl0.dx))
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key = (
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lvl0.dx[order].tobytes()
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+ b"|" + lvl0.dy[order].tobytes()
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+ b"|" + lvl0.bin[order].tobytes()
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+ b"|" + str(round(var.scale, 4)).encode()
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)
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h = key # diretto, senza hash crypto (collision ok solo se identici)
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if h in seen:
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removed += 1
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continue
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seen[h] = len(kept)
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kept.append(var)
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self.variants = kept
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return removed
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# --- Matching ------------------------------------------------------
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# --- Matching ------------------------------------------------------
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def _response_map(self, gray: np.ndarray) -> np.ndarray:
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def _response_map(self, gray: np.ndarray) -> np.ndarray:
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@@ -608,6 +575,7 @@ class LineShapeMatcher:
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verify_threshold: float = 0.4,
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verify_threshold: float = 0.4,
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coarse_angle_factor: int = 2,
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coarse_angle_factor: int = 2,
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scale_penalty: float = 0.0,
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scale_penalty: float = 0.0,
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greediness: float = 0.0,
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) -> list[Match]:
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) -> list[Match]:
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"""
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"""
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scale_penalty: se > 0, riduce lo score per match a scala diversa da 1.0:
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scale_penalty: se > 0, riduce lo score per match a scala diversa da 1.0:
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@@ -679,14 +647,24 @@ class LineShapeMatcher:
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end = min(n, i + half + 1)
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end = min(n, i + half + 1)
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neighbor_map[vi_c] = vi_sorted[start:end]
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neighbor_map[vi_c] = vi_sorted[start:end]
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# Pruning varianti via top-level (parallelizzato) - solo coarse
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# Pruning varianti via top-level (parallelizzato) - solo coarse.
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# greediness > 0: usa kernel greedy con early-exit (no rescore bg)
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# per il pruning. ~2-4x speed-up sul top con greediness=0.8.
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use_greedy_top = greediness > 0.0
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def _top_score(vi: int) -> tuple[int, float]:
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def _top_score(vi: int) -> tuple[int, float]:
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var = self.variants[vi]
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var = self.variants[vi]
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lvl = var.levels[min(top, len(var.levels) - 1)]
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lvl = var.levels[min(top, len(var.levels) - 1)]
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score = _jit_score_bitmap_rescored(
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if use_greedy_top:
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spread_top, lvl.dx, lvl.dy, lvl.bin, bit_active_top,
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score = _jit_score_bitmap_greedy(
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bg_cache_top[var.scale],
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spread_top, lvl.dx, lvl.dy, lvl.bin, bit_active_top,
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)
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top_thresh, greediness,
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)
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else:
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score = _jit_score_bitmap_rescored(
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spread_top, lvl.dx, lvl.dy, lvl.bin, bit_active_top,
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bg_cache_top[var.scale],
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)
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return vi, float(score.max()) if score.size else -1.0
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return vi, float(score.max()) if score.size else -1.0
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kept_coarse: list[tuple[int, float]] = []
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kept_coarse: list[tuple[int, float]] = []
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Reference in New Issue
Block a user