Compare commits
1 Commits
| Author | SHA1 | Date | |
|---|---|---|---|
| 4b7271094b |
+9
-82
@@ -110,63 +110,6 @@ 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_rescored_strided(
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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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bg: np.ndarray,
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stride: nb.int32,
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) -> np.ndarray:
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"""Variante con sub-sampling: valuta solo pixel su griglia stride×stride.
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Score restituito ha stessa shape (H, W); celle non valutate = 0.
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4× speed-up con stride=2 (NMS recupera precisione in full-res).
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Numba prange richiede step costante: itero su indici griglia e
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moltiplico per stride dentro il body.
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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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ny = (H + stride - 1) // stride
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nx = (W + stride - 1) // stride
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for yi in nb.prange(ny):
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y = yi * stride
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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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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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continue
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ddx = dx[i]
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x_lo = 0 if ddx >= 0 else -ddx
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x_hi = W if ddx <= 0 else W - ddx
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rem = x_lo % stride
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if rem != 0:
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x_lo += stride - rem
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x = x_lo
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while x < x_hi:
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if spread[yy, x + ddx] & mask:
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acc[y, x] += 1.0
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x += stride
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if N > 0:
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inv = 1.0 / N
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for yi in nb.prange(ny):
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y = yi * stride
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for xi in range(nx):
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x = xi * stride
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v = acc[y, x] * inv
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bgv = bg[y, x]
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if bgv < 1.0:
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r = (v - bgv) / (1.0 - bgv + 1e-6)
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acc[y, x] = r if r > 0.0 else 0.0
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else:
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acc[y, x] = 0.0
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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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@@ -242,9 +185,6 @@ 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_rescored_strided(
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spread, dx, dy, b, np.uint8(0xFF), bg, np.int32(2),
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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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@@ -258,9 +198,6 @@ 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_rescored_strided(spread, dx, dy, bins, bit_active, bg, stride):
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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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@@ -291,29 +228,19 @@ def score_bitmap(
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def score_bitmap_rescored(
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def score_bitmap_rescored(
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spread: np.ndarray, dx: np.ndarray, dy: np.ndarray, bins: np.ndarray,
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spread: np.ndarray, dx: np.ndarray, dy: np.ndarray, bins: np.ndarray,
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bit_active: int, bg: np.ndarray, stride: int = 1,
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bit_active: int, bg: np.ndarray,
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) -> np.ndarray:
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) -> np.ndarray:
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"""Score bitmap + rescore fusi in un solo pass (JIT).
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"""Score bitmap + rescore fusi in un solo pass (JIT)."""
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stride > 1: valuta solo pixel su griglia stride×stride. Le celle non
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valutate restano 0 nello score map. Pensato per coarse-pass al top
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della piramide; il refinement full-res poi recupera precisione.
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"""
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if HAS_NUMBA and len(dx) > 0:
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if HAS_NUMBA and len(dx) > 0:
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spread_c = np.ascontiguousarray(spread, dtype=np.uint8)
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dx_c = np.ascontiguousarray(dx, dtype=np.int32)
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dy_c = np.ascontiguousarray(dy, dtype=np.int32)
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bins_c = np.ascontiguousarray(bins, dtype=np.int8)
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bg_c = np.ascontiguousarray(bg, dtype=np.float32)
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if stride > 1:
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return _jit_score_bitmap_rescored_strided(
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spread_c, dx_c, dy_c, bins_c, np.uint8(bit_active), bg_c,
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np.int32(stride),
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)
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return _jit_score_bitmap_rescored(
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return _jit_score_bitmap_rescored(
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spread_c, dx_c, dy_c, bins_c, np.uint8(bit_active), bg_c,
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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.ascontiguousarray(bg, dtype=np.float32),
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)
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)
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# Fallback: chiamate separate (stride ignorato in fallback)
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# Fallback: chiamate separate
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score = score_bitmap(spread, dx, dy, bins, bit_active)
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score = score_bitmap(spread, dx, dy, bins, bit_active)
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out = (score - bg) / (1.0 - bg + 1e-6)
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out = (score - bg) / (1.0 - bg + 1e-6)
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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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+111
-7
@@ -393,6 +393,108 @@ class LineShapeMatcher:
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oy = float(np.clip(oy, -0.5, 0.5))
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oy = float(np.clip(oy, -0.5, 0.5))
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return x + ox, y + oy
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return x + ox, y + oy
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def _refine_pose_joint(
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self,
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spread0: np.ndarray,
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template_gray: np.ndarray,
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cx: float, cy: float,
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angle_deg: float, scale: float,
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mask_full: np.ndarray,
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max_iter: int = 24,
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tol: float = 1e-3,
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) -> tuple[float, float, float, float]:
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"""Refine congiunto (cx, cy, angle) via Nelder-Mead 3D.
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Ottimizza simultaneamente posizione e angolo (vs golden search 1D
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sull'angolo poi quadratico 2D su xy che alterna assi). Halcon-style:
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un singolo iter LM stila il match a precisione sub-pixel + sub-step.
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Ritorna (angle, score, cx, cy) dove score e quello calcolato sulla
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scena spread (no template gray).
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"""
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h, w = template_gray.shape
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sw = max(16, int(round(w * scale)))
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sh = max(16, int(round(h * scale)))
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gray_s = cv2.resize(template_gray, (sw, sh), interpolation=cv2.INTER_LINEAR)
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mask_s = cv2.resize(mask_full, (sw, sh), interpolation=cv2.INTER_NEAREST)
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diag = int(np.ceil(np.hypot(sh, sw))) + 6
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py = (diag - sh) // 2; px = (diag - sw) // 2
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gray_p = cv2.copyMakeBorder(gray_s, py, diag - sh - py, px, diag - sw - px,
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cv2.BORDER_REPLICATE)
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mask_p = cv2.copyMakeBorder(mask_s, py, diag - sh - py, px, diag - sw - px,
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cv2.BORDER_CONSTANT, value=0)
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center = (diag / 2.0, diag / 2.0)
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H, W = spread0.shape
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def _score(params: tuple[float, float, float]) -> float:
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ddx, ddy, dang = params
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ang = angle_deg + dang
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M = cv2.getRotationMatrix2D(center, ang, 1.0)
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gray_r = cv2.warpAffine(gray_p, M, (diag, diag),
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flags=cv2.INTER_LINEAR,
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borderMode=cv2.BORDER_REPLICATE)
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mask_r = cv2.warpAffine(mask_p, M, (diag, diag),
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flags=cv2.INTER_NEAREST, borderValue=0)
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mag, bins = self._gradient(gray_r)
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fx, fy, fb = self._extract_features(mag, bins, mask_r)
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if len(fx) < 8:
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return 0.0
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cxe = cx + ddx; cye = cy + ddy
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ix = int(round(cxe)); iy = int(round(cye))
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tot = 0
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valid = 0
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for i in range(len(fx)):
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xs = ix + int(fx[i] - center[0])
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ys = iy + int(fy[i] - center[1])
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if 0 <= xs < W and 0 <= ys < H:
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bit = np.uint8(1 << int(fb[i]))
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if spread0[ys, xs] & bit:
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tot += 1
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valid += 1
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return -float(tot) / max(1, valid) # minimize -score
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# Nelder-Mead 3D inline (no scipy). Simplex iniziale: vertice + offset
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# dx=±0.5px, dy=±0.5px, dθ=±step/2.
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step_a = self.angle_step_deg / 2.0 if self.angle_step_deg > 0 else 1.0
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x0 = np.array([0.0, 0.0, 0.0])
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simplex = np.array([
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x0,
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x0 + [0.5, 0.0, 0.0],
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x0 + [0.0, 0.5, 0.0],
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x0 + [0.0, 0.0, step_a],
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])
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fvals = np.array([_score(tuple(s)) for s in simplex])
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for _ in range(max_iter):
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order = np.argsort(fvals)
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simplex = simplex[order]; fvals = fvals[order]
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if abs(fvals[-1] - fvals[0]) < tol:
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break
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centroid = simplex[:-1].mean(axis=0)
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xr = centroid + 1.0 * (centroid - simplex[-1])
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fr = _score(tuple(xr))
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if fvals[0] <= fr < fvals[-2]:
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simplex[-1] = xr; fvals[-1] = fr
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continue
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if fr < fvals[0]:
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xe = centroid + 2.0 * (centroid - simplex[-1])
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fe = _score(tuple(xe))
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if fe < fr:
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simplex[-1] = xe; fvals[-1] = fe
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else:
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simplex[-1] = xr; fvals[-1] = fr
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continue
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xc = centroid + 0.5 * (simplex[-1] - centroid)
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fc = _score(tuple(xc))
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if fc < fvals[-1]:
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simplex[-1] = xc; fvals[-1] = fc
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continue
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for k in range(1, 4):
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simplex[k] = simplex[0] + 0.5 * (simplex[k] - simplex[0])
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fvals[k] = _score(tuple(simplex[k]))
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best_i = int(np.argmin(fvals))
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ddx, ddy, dang = simplex[best_i]
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return (angle_deg + float(dang), -float(fvals[best_i]),
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cx + float(ddx), cy + float(ddy))
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def _refine_angle(
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def _refine_angle(
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self,
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self,
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spread0: np.ndarray, # bitmap uint8 (H, W)
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spread0: np.ndarray, # bitmap uint8 (H, W)
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@@ -573,8 +675,8 @@ class LineShapeMatcher:
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verify_ncc: bool = True,
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verify_ncc: bool = True,
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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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coarse_stride: int = 1,
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scale_penalty: float = 0.0,
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scale_penalty: float = 0.0,
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refine_pose_joint: bool = False,
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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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@@ -646,16 +748,13 @@ 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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# coarse_stride > 1: valuta solo 1 pixel ogni stride, ~stride² speed-up.
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cs = max(1, int(coarse_stride))
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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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score = _jit_score_bitmap_rescored(
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spread_top, lvl.dx, lvl.dy, lvl.bin, bit_active_top,
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spread_top, lvl.dx, lvl.dy, lvl.bin, bit_active_top,
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bg_cache_top[var.scale], stride=cs,
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bg_cache_top[var.scale],
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)
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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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@@ -802,7 +901,12 @@ class LineShapeMatcher:
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var = self.variants[vi]
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var = self.variants[vi]
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ang_f = var.angle_deg
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ang_f = var.angle_deg
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score_f = score
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score_f = score
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if refine_angle and self.template_gray is not None:
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if refine_pose_joint and self.template_gray is not None:
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ang_f, score_f, cx_f, cy_f = self._refine_pose_joint(
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spread0, self.template_gray, cx_f, cy_f,
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var.angle_deg, var.scale, mask_full,
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)
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elif refine_angle and self.template_gray is not None:
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ang_f, score_f, cx_f, cy_f = self._refine_angle(
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ang_f, score_f, cx_f, cy_f = self._refine_angle(
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spread0, bit_active_full, self.template_gray, cx_f, cy_f,
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spread0, bit_active_full, self.template_gray, cx_f, cy_f,
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var.angle_deg, var.scale, mask_full,
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var.angle_deg, var.scale, mask_full,
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