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11 Commits
| Author | SHA1 | Date | |
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| 64f2c8b5dc | |||
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| 852597ed51 | |||
| a78884f950 | |||
| 543ae0f643 | |||
| a12574f3c5 | |||
| 110dc87b08 | |||
| 2bb2cf63cc | |||
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| 1cc7881a51 | |||
| 74a332a2dd |
+217
@@ -0,0 +1,217 @@
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"""CLI validation harness per LineShapeMatcher.
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Usage:
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python -m pm2d.eval dataset.json [opzioni]
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Formato dataset (JSON):
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{
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"template": "path/to/template.png",
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"mask": "path/to/mask.png", # opzionale
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"params": { # opzionali, override su matcher init
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"use_polarity": true,
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"angle_step_deg": 5,
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...
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},
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"find_params": { # opzionali, passati a find()
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"min_score": 0.6,
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"use_soft_score": true,
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...
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},
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"scenes": [
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{
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"image": "path/to/scene1.png",
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"ground_truth": [
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{"cx": 320.0, "cy": 240.0, "angle_deg": 12.0,
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"scale": 1.0, "tolerance_px": 5.0,
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"tolerance_deg": 3.0}
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]
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}
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]
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}
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Output: report precision/recall/IoU/timing per ogni scena + aggregati.
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"""
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from __future__ import annotations
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import argparse
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import json
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import math
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import sys
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import time
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from pathlib import Path
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import cv2
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import numpy as np
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from pm2d.line_matcher import LineShapeMatcher, _poly_iou, _oriented_bbox_polygon
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def _load_image(path: str | Path) -> np.ndarray:
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img = cv2.imread(str(path), cv2.IMREAD_UNCHANGED)
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if img is None:
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raise FileNotFoundError(f"Immagine non trovata: {path}")
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if img.ndim == 2:
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img = cv2.cvtColor(img, cv2.COLOR_GRAY2BGR)
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return img
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def _gt_to_poly(gt: dict, tw: int, th: int) -> np.ndarray:
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"""Costruisce bbox poligonale per un ground truth."""
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s = float(gt.get("scale", 1.0))
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return _oriented_bbox_polygon(
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float(gt["cx"]), float(gt["cy"]),
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tw * s, th * s, float(gt["angle_deg"]),
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)
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def _match_to_gt(match, gt: dict, tw: int, th: int,
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iou_thr: float = 0.3) -> bool:
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"""True se il match corrisponde al ground truth.
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Criterio: distanza centro <= tolerance_px AND |angle_deg - gt| <= tolerance_deg
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OR IoU bbox >= iou_thr (fallback per pose con tolerance ampie).
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"""
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tol_px = float(gt.get("tolerance_px", 5.0))
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tol_deg = float(gt.get("tolerance_deg", 3.0))
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dx = match.cx - float(gt["cx"])
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dy = match.cy - float(gt["cy"])
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dist = math.hypot(dx, dy)
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da = abs((match.angle_deg - float(gt["angle_deg"]) + 180) % 360 - 180)
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if dist <= tol_px and da <= tol_deg:
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return True
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# Fallback IoU
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poly_gt = _gt_to_poly(gt, tw, th)
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poly_m = match.bbox_poly
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if _poly_iou(poly_m, poly_gt) >= iou_thr:
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return True
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return False
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def evaluate_scene(matcher: LineShapeMatcher, scene_bgr: np.ndarray,
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gt_list: list[dict], find_params: dict,
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tw: int, th: int) -> dict:
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"""Esegue match e calcola TP/FP/FN per una scena."""
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t0 = time.time()
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matches = matcher.find(scene_bgr, **find_params)
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elapsed = time.time() - t0
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gt_matched = [False] * len(gt_list)
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match_is_tp = [False] * len(matches)
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iou_per_match = [0.0] * len(matches)
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for i, m in enumerate(matches):
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for j, gt in enumerate(gt_list):
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if gt_matched[j]:
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continue
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if _match_to_gt(m, gt, tw, th):
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gt_matched[j] = True
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match_is_tp[i] = True
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# Calcolo IoU per metrica
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poly_gt = _gt_to_poly(gt, tw, th)
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iou_per_match[i] = _poly_iou(m.bbox_poly, poly_gt)
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break
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tp = sum(match_is_tp)
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fp = len(matches) - tp
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fn = len(gt_list) - sum(gt_matched)
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return {
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"n_matches": len(matches),
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"n_gt": len(gt_list),
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"tp": tp, "fp": fp, "fn": fn,
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"find_time_s": elapsed,
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"iou_mean": float(np.mean([i for i, t in zip(iou_per_match, match_is_tp) if t])
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if tp > 0 else 0.0),
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"diag": (matcher.get_last_diag()
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if hasattr(matcher, "get_last_diag") else None),
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}
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def run(dataset_path: str, scene_filter: str | None = None,
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verbose: bool = False) -> dict:
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"""Esegue eval su dataset, ritorna report aggregato."""
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dataset_path = Path(dataset_path)
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base = dataset_path.parent
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with open(dataset_path) as f:
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ds = json.load(f)
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template = _load_image(base / ds["template"])
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mask = None
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if ds.get("mask"):
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mask_img = cv2.imread(str(base / ds["mask"]), cv2.IMREAD_GRAYSCALE)
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if mask_img is not None:
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mask = (mask_img > 128).astype(np.uint8) * 255
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init_params = ds.get("params", {})
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find_params = ds.get("find_params", {})
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matcher = LineShapeMatcher(**init_params)
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n_var = matcher.train(template, mask=mask)
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tw, th = matcher.template_size
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print(f"Template: {ds['template']} ({tw}x{th}), {n_var} varianti")
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print(f"Param matcher: {init_params}")
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print(f"Param find: {find_params}")
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print()
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scenes = ds["scenes"]
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if scene_filter:
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scenes = [s for s in scenes if scene_filter in s["image"]]
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rows = []
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tot_tp = tot_fp = tot_fn = 0
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tot_time = 0.0
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for sc in scenes:
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scene = _load_image(base / sc["image"])
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gt = sc.get("ground_truth", [])
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result = evaluate_scene(matcher, scene, gt, find_params, tw, th)
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rows.append({"scene": sc["image"], **result})
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tot_tp += result["tp"]; tot_fp += result["fp"]; tot_fn += result["fn"]
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tot_time += result["find_time_s"]
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prec = result["tp"] / max(1, result["tp"] + result["fp"])
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rec = result["tp"] / max(1, result["tp"] + result["fn"])
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line = (f" {sc['image']:30s} "
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f"TP={result['tp']} FP={result['fp']} FN={result['fn']} "
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f"P={prec:.2f} R={rec:.2f} "
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f"IoU={result['iou_mean']:.2f} "
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f"t={result['find_time_s']*1000:.0f}ms")
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print(line)
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if verbose and result["diag"] and hasattr(matcher, "_format_diag"):
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print(f" diag: {matcher._format_diag(result['diag'])}")
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# Aggregati
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precision = tot_tp / max(1, tot_tp + tot_fp)
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recall = tot_tp / max(1, tot_tp + tot_fn)
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f1 = 2 * precision * recall / max(1e-9, precision + recall)
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print()
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print(f"AGGREGATO: precision={precision:.3f} recall={recall:.3f} "
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f"F1={f1:.3f} TP={tot_tp} FP={tot_fp} FN={tot_fn}")
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print(f"TIME: total={tot_time:.2f}s avg={tot_time / max(1, len(scenes)) * 1000:.0f}ms/scene")
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return {
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"precision": precision, "recall": recall, "f1": f1,
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"tp": tot_tp, "fp": tot_fp, "fn": tot_fn,
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"total_time_s": tot_time, "n_scenes": len(scenes),
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"per_scene": rows,
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}
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def main(argv: list[str] | None = None) -> int:
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p = argparse.ArgumentParser(
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description="pm2d-eval: validation harness per LineShapeMatcher"
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)
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p.add_argument("dataset", help="JSON dataset (template + scenes + GT)")
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p.add_argument("--scene-filter", default=None,
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help="Filtro substring sui nomi scena (debug)")
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p.add_argument("--verbose", "-v", action="store_true",
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help="Stampa diag dict per ogni scena")
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p.add_argument("--out", default=None,
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help="Salva report JSON su file")
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args = p.parse_args(argv)
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report = run(args.dataset, scene_filter=args.scene_filter,
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verbose=args.verbose)
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if args.out:
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with open(args.out, "w") as f:
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json.dump(report, f, indent=2)
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print(f"Report salvato: {args.out}")
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return 0 if report["f1"] > 0.5 else 1
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if __name__ == "__main__":
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sys.exit(main())
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+74
-6
@@ -512,8 +512,10 @@ class LineShapeMatcher:
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self.variants.clear()
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# Reset view list: template principale = view 0
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self._view_templates = [(gray.copy(), mask_full.copy())]
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# Invalida cache feature di refine: il template e cambiato.
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# Invalida cache: template/param cambiati → spread/feature obsoleti.
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self._refine_feat_cache = {}
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if hasattr(self, "_scene_cache"):
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self._scene_cache.clear()
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self._build_variants_for_view(gray, mask_full, view_idx=0)
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self._dedup_variants()
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return len(self.variants)
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@@ -669,6 +671,51 @@ class LineShapeMatcher:
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raw[b] = d.astype(np.float32)
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return raw
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# --- Scene precompute cache (II Halcon-style) -----------------------
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_SCENE_CACHE_SIZE = 4
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def _scene_cache_key(self, gray: np.ndarray) -> str | None:
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"""Hash compatto della scena + param che influenzano spread/density.
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Hash su prime 64KB della scena (sufficiente discriminante per
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scene fotografiche) + parametri matcher rilevanti. None se cache
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disabilitata (es. scene troppo piccole).
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"""
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if gray.size < 100:
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return None
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try:
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import hashlib
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h = hashlib.md5()
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sample = gray.tobytes()[:65536]
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h.update(sample)
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h.update(f"|{gray.shape}|{gray.dtype}".encode())
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h.update(
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f"|{self.weak_grad}|{self.strong_grad}"
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f"|{self.spread_radius}|{self._n_bins}"
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f"|{self.pyramid_levels}".encode()
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)
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return h.hexdigest()
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except Exception:
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return None
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def _scene_cache_get(self, key: str) -> tuple | None:
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cache = getattr(self, "_scene_cache", None)
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if cache is None:
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return None
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v = cache.get(key)
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if v is not None:
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cache.move_to_end(key)
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return v
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def _scene_cache_put(self, key: str, value: tuple) -> None:
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from collections import OrderedDict
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if not hasattr(self, "_scene_cache"):
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self._scene_cache = OrderedDict()
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self._scene_cache[key] = value
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self._scene_cache.move_to_end(key)
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while len(self._scene_cache) > self._SCENE_CACHE_SIZE:
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self._scene_cache.popitem(last=False)
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def _spread_bitmap(self, gray: np.ndarray) -> np.ndarray:
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"""Spread bitmap: bit b acceso dove bin b è presente nel raggio.
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@@ -1367,18 +1414,31 @@ class LineShapeMatcher:
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else:
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gray0 = gray_full
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roi_offset = (0, 0)
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# Cache pre-compute scena (II Halcon-style): hash bytes scene + param
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# gradient/spread → riusa spread piramide + density tra find()
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# consecutive con stessa scena (typical UI tuning: slider produce
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# 10+ find() su scena identica). Risparmia ~80% del costo non-kernel.
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cache_key = self._scene_cache_key(gray0)
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cached = self._scene_cache_get(cache_key) if cache_key else None
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if cached is not None:
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grays, spread_top, bit_active_top, density_top, spread0, \
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bit_active_full, density_full, top = cached
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else:
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grays = [gray0]
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for _ in range(self.pyramid_levels - 1):
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grays.append(cv2.pyrDown(grays[-1]))
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top = len(grays) - 1
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# Spread bitmap (uint8) al top level: 32× meno memoria della response
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# map float32 → MOLTO più cache-friendly per _score_by_shift.
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spread_top = self._spread_bitmap(grays[top])
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bit_active_top = int(
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sum(1 << b for b in range(self._n_bins)
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if (spread_top & (spread_top.dtype.type(1) << b)).any())
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)
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density_top = _jit_popcount(spread_top)
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# spread0 + density_full computati piu sotto, quindi salvo dopo.
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spread0 = None
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bit_active_full = None
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density_full = None
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if nms_radius is None:
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nms_radius = max(8, min(self.template_size) // 2)
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# Pruning adattivo allo step angolare: con step piccolo (<= 3 deg)
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@@ -1398,7 +1458,7 @@ class LineShapeMatcher:
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diag["top_thresh_used"] = float(top_thresh)
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tw, th = self.template_size
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density_top = _jit_popcount(spread_top)
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# density_top gia' computato sopra (cache o miss)
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sf_top = 2 ** top
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bg_cache_top: dict[float, np.ndarray] = {}
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bg_cache_full: dict[float, np.ndarray] = {}
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@@ -1548,13 +1608,21 @@ class LineShapeMatcher:
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diag["n_variants_top_passed"] = len(kept_coarse)
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diag["n_variants_full_evaluated"] = len(kept_variants)
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# Full-res (parallelizzato) con bitmap
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# Full-res (parallelizzato) con bitmap.
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# Riusa cache se disponibile, altrimenti computa e salva.
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if spread0 is None:
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spread0 = self._spread_bitmap(gray0)
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bit_active_full = int(
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sum(1 << b for b in range(self._n_bins)
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if (spread0 & (spread0.dtype.type(1) << b)).any())
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)
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density_full = _jit_popcount(spread0)
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# Salva cache scena complete
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if cache_key is not None:
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self._scene_cache_put(cache_key, (
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grays, spread_top, bit_active_top, density_top,
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spread0, bit_active_full, density_full, top,
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))
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for sc in unique_scales:
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bg_cache_full[sc] = _bg_for_scale(density_full, sc, 1)
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+177
-16
@@ -131,23 +131,64 @@ def _encode_png(img: np.ndarray) -> bytes:
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def _draw_matches(scene: np.ndarray, matches: list[Match],
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template_gray: np.ndarray | None) -> np.ndarray:
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template_gray: np.ndarray | None,
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matcher: "LineShapeMatcher | None" = None) -> np.ndarray:
|
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"""Disegna match annotati sulla scena.
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Se matcher e' passato, usa la stessa pipeline di edge filtering
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(hysteresis weak/strong_grad) e selezione feature usata in training,
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cosi' l'overlay nel match riflette ESATTAMENTE quello che l'utente
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ha visto nel preview "Anteprima edge". Inoltre disegna UCS
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(asse X rosso, Y verde) sul centro pose del match.
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Senza matcher: fallback Canny (legacy).
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"""
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out = scene.copy()
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H, W = scene.shape[:2]
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palette = [
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(0, 255, 0), (0, 200, 255), (255, 100, 100), (255, 200, 0),
|
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(200, 0, 255), (100, 255, 200), (255, 0, 0), (0, 255, 255),
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]
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bin_colors = [
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(255, 0, 0), (255, 128, 0), (255, 255, 0), (0, 255, 0),
|
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(0, 255, 255), (0, 128, 255), (0, 0, 255), (255, 0, 255),
|
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(255, 100, 100), (255, 180, 100), (255, 230, 100), (180, 255, 100),
|
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(100, 255, 200), (100, 180, 255), (180, 100, 255), (255, 100, 200),
|
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]
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for i, m in enumerate(matches):
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color = palette[i % len(palette)]
|
||||
if template_gray is not None:
|
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t = template_gray
|
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th, tw = t.shape
|
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edge = cv2.Canny(t, 50, 150)
|
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cx_t = (tw - 1) / 2.0; cy_t = (th - 1) / 2.0
|
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M = cv2.getRotationMatrix2D((cx_t, cy_t), m.angle_deg, m.scale)
|
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M[0, 2] += m.cx - cx_t
|
||||
M[1, 2] += m.cy - cy_t
|
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if matcher is not None:
|
||||
# Edge filtrati con stessi param matcher (hysteresis)
|
||||
warped_gray = cv2.warpAffine(
|
||||
t, M, (W, H), flags=cv2.INTER_LINEAR, borderValue=0)
|
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mag, bins = matcher._gradient(warped_gray)
|
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if matcher.weak_grad < matcher.strong_grad:
|
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edge_mask = matcher._hysteresis_mask(mag)
|
||||
else:
|
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edge_mask = mag >= matcher.strong_grad
|
||||
# Background edge filtrati: tinta scura colore match
|
||||
if edge_mask.any():
|
||||
bg_overlay = np.zeros_like(out)
|
||||
dark = tuple(int(c * 0.35) for c in color)
|
||||
bg_overlay[edge_mask] = dark
|
||||
out = cv2.addWeighted(out, 1.0, bg_overlay, 0.7, 0)
|
||||
# Feature scelte: estrazione alla pose, dot colorati per bin
|
||||
fx, fy, fb = matcher._extract_features(mag, bins, None)
|
||||
for k in range(len(fx)):
|
||||
px, py = int(fx[k]), int(fy[k])
|
||||
if 0 <= px < W and 0 <= py < H:
|
||||
bcol = bin_colors[int(fb[k]) % len(bin_colors)]
|
||||
cv2.circle(out, (px, py), 2, bcol, -1, cv2.LINE_AA)
|
||||
else:
|
||||
# Legacy Canny
|
||||
edge = cv2.Canny(t, 50, 150)
|
||||
warped = cv2.warpAffine(edge, M, (W, H),
|
||||
flags=cv2.INTER_NEAREST, borderValue=0)
|
||||
mask = warped > 0
|
||||
@@ -155,20 +196,35 @@ def _draw_matches(scene: np.ndarray, matches: list[Match],
|
||||
overlay = np.zeros_like(out)
|
||||
overlay[mask] = color
|
||||
out[mask] = (0.3 * out[mask] + 0.7 * overlay[mask]).astype(np.uint8)
|
||||
poly = m.bbox_poly.astype(np.int32).reshape(-1, 1, 2)
|
||||
cv2.polylines(out, [poly], True, color, 2, cv2.LINE_AA)
|
||||
p0 = tuple(m.bbox_poly[0].astype(int))
|
||||
p1 = tuple(m.bbox_poly[1].astype(int))
|
||||
cv2.line(out, p0, p1, color, 4, cv2.LINE_AA)
|
||||
# bbox poly e linea-marker rimossi (richiesta utente "togli la ROI"):
|
||||
# UCS + edge filtrati gia' identificano pose e orientamento,
|
||||
# il rettangolo aggiunto era ridondante e copriva il pezzo.
|
||||
cx, cy = int(round(m.cx)), int(round(m.cy))
|
||||
cv2.drawMarker(out, (cx, cy), color, cv2.MARKER_CROSS, 22, 2, cv2.LINE_AA)
|
||||
# UCS sul centro pose match (richiesta utente: come nell'anteprima
|
||||
# modello). Asse X rosso destra, Y verde basso (image y-down).
|
||||
# Lunghezza derivata dalla diagonale bbox per scala-invariante.
|
||||
L = int(np.linalg.norm(m.bbox_poly[1] - m.bbox_poly[0])) // 2
|
||||
a = np.deg2rad(m.angle_deg)
|
||||
cv2.arrowedLine(out, (cx, cy),
|
||||
(int(cx + L * np.cos(a)), int(cy - L * np.sin(a))),
|
||||
color, 2, cv2.LINE_AA, tipLength=0.2)
|
||||
if L < 10:
|
||||
L = 30 # fallback se bbox degenere
|
||||
ax = np.deg2rad(m.angle_deg)
|
||||
# X axis ruotato (rosso)
|
||||
x_end = (int(cx + L * np.cos(ax)), int(cy - L * np.sin(ax)))
|
||||
cv2.arrowedLine(out, (cx, cy), x_end,
|
||||
(0, 0, 255), 2, cv2.LINE_AA, tipLength=0.2)
|
||||
cv2.putText(out, "X", (x_end[0] + 4, x_end[1] + 5),
|
||||
cv2.FONT_HERSHEY_SIMPLEX, 0.5, (0, 0, 255), 1, cv2.LINE_AA)
|
||||
# Y axis perpendicolare (verde, +90° in image coords = giu' visivo)
|
||||
y_end = (int(cx + L * np.cos(ax + np.pi / 2)),
|
||||
int(cy - L * np.sin(ax + np.pi / 2)))
|
||||
cv2.arrowedLine(out, (cx, cy), y_end,
|
||||
(0, 255, 0), 2, cv2.LINE_AA, tipLength=0.2)
|
||||
cv2.putText(out, "Y", (y_end[0] + 4, y_end[1] + 12),
|
||||
cv2.FONT_HERSHEY_SIMPLEX, 0.5, (0, 255, 0), 1, cv2.LINE_AA)
|
||||
# Origine UCS: cerchio bianco con bordo nero
|
||||
cv2.circle(out, (cx, cy), 4, (0, 0, 0), -1, cv2.LINE_AA)
|
||||
cv2.circle(out, (cx, cy), 3, (255, 255, 255), -1, cv2.LINE_AA)
|
||||
label = f"#{i+1} {m.angle_deg:.0f}d s={m.scale:.2f} {m.score:.2f}"
|
||||
cv2.putText(out, label, (cx + 8, cy - 8),
|
||||
cv2.putText(out, label, (cx + 12, cy - 12),
|
||||
cv2.FONT_HERSHEY_SIMPLEX, 0.5, color, 2, cv2.LINE_AA)
|
||||
return out
|
||||
|
||||
@@ -217,6 +273,7 @@ class MatchResp(BaseModel):
|
||||
find_time: float
|
||||
num_variants: int
|
||||
annotated_id: str
|
||||
diag: dict | None = None # CC: diagnostica pipeline (drop reasons)
|
||||
|
||||
|
||||
class TuneParams(BaseModel):
|
||||
@@ -510,7 +567,7 @@ def match(p: MatchParams):
|
||||
|
||||
# Render annotated image
|
||||
tg = cv2.cvtColor(roi_img, cv2.COLOR_BGR2GRAY)
|
||||
annotated = _draw_matches(scene, matches, tg)
|
||||
annotated = _draw_matches(scene, matches, tg, matcher=m)
|
||||
ann_id = _store_image(annotated)
|
||||
|
||||
return MatchResp(
|
||||
@@ -521,6 +578,7 @@ def match(p: MatchParams):
|
||||
) for m_ in matches],
|
||||
train_time=t_train, find_time=t_find,
|
||||
num_variants=n, annotated_id=ann_id,
|
||||
diag=m.get_last_diag() if hasattr(m, "get_last_diag") else None,
|
||||
)
|
||||
|
||||
|
||||
@@ -586,7 +644,7 @@ def match_simple(p: SimpleMatchParams):
|
||||
t_find = time.time() - t0
|
||||
|
||||
tg = cv2.cvtColor(roi_img, cv2.COLOR_BGR2GRAY)
|
||||
annotated = _draw_matches(scene, matches, tg)
|
||||
annotated = _draw_matches(scene, matches, tg, matcher=m)
|
||||
ann_id = _store_image(annotated)
|
||||
|
||||
return MatchResp(
|
||||
@@ -596,6 +654,7 @@ def match_simple(p: SimpleMatchParams):
|
||||
) for mt in matches],
|
||||
train_time=t_train, find_time=t_find,
|
||||
num_variants=n, annotated_id=ann_id,
|
||||
diag=m.get_last_diag() if hasattr(m, "get_last_diag") else None,
|
||||
)
|
||||
|
||||
|
||||
@@ -628,6 +687,107 @@ class SaveRecipeParams(BaseModel):
|
||||
name: str # nome file ricetta (no path)
|
||||
|
||||
|
||||
class EdgePreviewParams(BaseModel):
|
||||
model_id: str
|
||||
roi: list[int]
|
||||
weak_grad: float = 30.0
|
||||
strong_grad: float = 60.0
|
||||
num_features: int = 96
|
||||
min_feature_spacing: int = 3
|
||||
use_polarity: bool = False
|
||||
|
||||
|
||||
@app.post("/preview_edges")
|
||||
def preview_edges(p: EdgePreviewParams):
|
||||
"""Estrae edge feature dalla ROI con i parametri dati e ritorna
|
||||
immagine annotata con i pixel selezionati come overlay.
|
||||
|
||||
Permette tuning interattivo delle soglie weak/strong_grad e
|
||||
num_features per "togliere le sporcizie" (rumore di sfondo,
|
||||
edge spuri) prima di trainare il matcher vero.
|
||||
"""
|
||||
model = _load_image(p.model_id)
|
||||
if model is None:
|
||||
raise HTTPException(404, "Modello non trovato")
|
||||
x, y, w, h = p.roi
|
||||
H_m, W_m = model.shape[:2]
|
||||
x = max(0, min(int(x), W_m - 1)); y = max(0, min(int(y), H_m - 1))
|
||||
w = max(1, min(int(w), W_m - x)); h = max(1, min(int(h), H_m - y))
|
||||
roi_img = model[y:y + h, x:x + w]
|
||||
# Matcher temporaneo solo per estrazione feature (no train completo)
|
||||
m = LineShapeMatcher(
|
||||
weak_grad=p.weak_grad,
|
||||
strong_grad=p.strong_grad,
|
||||
num_features=p.num_features,
|
||||
min_feature_spacing=p.min_feature_spacing,
|
||||
use_polarity=p.use_polarity,
|
||||
)
|
||||
gray = cv2.cvtColor(roi_img, cv2.COLOR_BGR2GRAY) if roi_img.ndim == 3 else roi_img
|
||||
mag, bins = m._gradient(gray)
|
||||
fx, fy, fb = m._extract_features(mag, bins, None)
|
||||
# Mostra anche i pixel "weak/strong" come heatmap di sfondo
|
||||
out = roi_img.copy() if roi_img.ndim == 3 else cv2.cvtColor(roi_img, cv2.COLOR_GRAY2BGR)
|
||||
# Overlay magnitude leggera
|
||||
mag_norm = np.clip(mag / max(1.0, mag.max()) * 255, 0, 255).astype(np.uint8)
|
||||
mag_color = cv2.applyColorMap(mag_norm, cv2.COLORMAP_BONE)
|
||||
out = cv2.addWeighted(out, 0.6, mag_color, 0.4, 0)
|
||||
# Pixel "strong" con hysteresis: contorno verde scuro tenue
|
||||
if m.weak_grad < m.strong_grad:
|
||||
edge_mask = m._hysteresis_mask(mag).astype(np.uint8) * 255
|
||||
else:
|
||||
edge_mask = (mag >= m.strong_grad).astype(np.uint8) * 255
|
||||
edge_overlay = np.zeros_like(out)
|
||||
edge_overlay[edge_mask > 0] = (0, 80, 0) # verde scuro
|
||||
out = cv2.addWeighted(out, 1.0, edge_overlay, 0.5, 0)
|
||||
# Feature scelte: cerchietti colorati per bin
|
||||
bin_colors = [
|
||||
(255, 0, 0), (255, 128, 0), (255, 255, 0), (0, 255, 0),
|
||||
(0, 255, 255), (0, 128, 255), (0, 0, 255), (255, 0, 255),
|
||||
(255, 100, 100), (255, 180, 100), (255, 230, 100), (180, 255, 100),
|
||||
(100, 255, 200), (100, 180, 255), (180, 100, 255), (255, 100, 200),
|
||||
]
|
||||
for i in range(len(fx)):
|
||||
b = int(fb[i])
|
||||
col = bin_colors[b % len(bin_colors)]
|
||||
cv2.circle(out, (int(fx[i]), int(fy[i])), 2, col, -1, cv2.LINE_AA)
|
||||
# UCS sul baricentro feature (richiesta utente): assi X rosso, Y verde
|
||||
bary_cx = bary_cy = None
|
||||
if len(fx) > 0:
|
||||
bary_cx = float(np.mean(fx))
|
||||
bary_cy = float(np.mean(fy))
|
||||
bx, by = int(round(bary_cx)), int(round(bary_cy))
|
||||
axis_len = max(20, int(0.15 * max(out.shape[:2])))
|
||||
# X axis (rosso, verso destra)
|
||||
cv2.arrowedLine(out, (bx, by), (bx + axis_len, by),
|
||||
(0, 0, 255), 2, cv2.LINE_AA, tipLength=0.2)
|
||||
cv2.putText(out, "X", (bx + axis_len + 4, by + 5),
|
||||
cv2.FONT_HERSHEY_SIMPLEX, 0.5, (0, 0, 255), 1, cv2.LINE_AA)
|
||||
# Y axis (verde, verso il basso = convenzione image y-down)
|
||||
cv2.arrowedLine(out, (bx, by), (bx, by + axis_len),
|
||||
(0, 255, 0), 2, cv2.LINE_AA, tipLength=0.2)
|
||||
cv2.putText(out, "Y", (bx + 4, by + axis_len + 12),
|
||||
cv2.FONT_HERSHEY_SIMPLEX, 0.5, (0, 255, 0), 1, cv2.LINE_AA)
|
||||
# Origine: cerchio bianco con bordo nero
|
||||
cv2.circle(out, (bx, by), 4, (0, 0, 0), -1, cv2.LINE_AA)
|
||||
cv2.circle(out, (bx, by), 3, (255, 255, 255), -1, cv2.LINE_AA)
|
||||
img_id = _store_image(out)
|
||||
n_edge_strong = int((mag >= m.strong_grad).sum())
|
||||
n_edge_total = int(edge_mask.sum() / 255)
|
||||
return {
|
||||
"preview_id": img_id,
|
||||
"n_features": len(fx),
|
||||
"n_edge_strong": n_edge_strong,
|
||||
"n_edge_after_hysteresis": n_edge_total,
|
||||
"mag_max": float(mag.max()),
|
||||
"mag_p50": float(np.percentile(mag, 50)),
|
||||
"mag_p85": float(np.percentile(mag, 85)),
|
||||
"ucs_baricentro": (
|
||||
{"cx": round(bary_cx, 2), "cy": round(bary_cy, 2)}
|
||||
if bary_cx is not None else None
|
||||
),
|
||||
}
|
||||
|
||||
|
||||
@app.post("/recipes")
|
||||
def save_recipe(p: SaveRecipeParams):
|
||||
"""Allena matcher e salva su disco come ricetta riutilizzabile."""
|
||||
@@ -760,7 +920,7 @@ def match_recipe(p: RecipeMatchParams):
|
||||
)
|
||||
t_find = time.time() - t0
|
||||
tg = m.template_gray if m.template_gray is not None else np.zeros((1, 1), np.uint8)
|
||||
annotated = _draw_matches(scene, matches, tg)
|
||||
annotated = _draw_matches(scene, matches, tg, matcher=m)
|
||||
ann_id = _store_image(annotated)
|
||||
return MatchResp(
|
||||
matches=[MatchResult(
|
||||
@@ -769,6 +929,7 @@ def match_recipe(p: RecipeMatchParams):
|
||||
) for mt in matches],
|
||||
train_time=0.0, find_time=t_find,
|
||||
num_variants=len(m.variants), annotated_id=ann_id,
|
||||
diag=m.get_last_diag() if hasattr(m, "get_last_diag") else None,
|
||||
)
|
||||
|
||||
|
||||
|
||||
@@ -336,6 +336,7 @@ async function doMatchRecipe() {
|
||||
document.getElementById("t-find").textContent = `${data.find_time.toFixed(2)}s`;
|
||||
document.getElementById("t-var").textContent = data.num_variants;
|
||||
document.getElementById("t-match").textContent = data.matches.length;
|
||||
renderDiag(data.diag, data.matches.length);
|
||||
setStatus(`${data.matches.length} match trovati (ricetta ${state.active_recipe})`);
|
||||
}
|
||||
|
||||
@@ -409,6 +410,7 @@ async function doMatch() {
|
||||
document.getElementById("t-find").textContent = `${data.find_time.toFixed(2)}s`;
|
||||
document.getElementById("t-var").textContent = data.num_variants;
|
||||
document.getElementById("t-match").textContent = data.matches.length;
|
||||
renderDiag(data.diag, data.matches.length);
|
||||
setStatus(`${data.matches.length} match trovati${hasAdv ? " (avanzato)" : ""}`);
|
||||
}
|
||||
|
||||
@@ -436,6 +438,164 @@ function setStatus(s) {
|
||||
}
|
||||
|
||||
// ---------- Init ----------
|
||||
// ---------- Edge preview (clean rumore) ----------
|
||||
let _epDebounce = null;
|
||||
let _epLastImg = null;
|
||||
|
||||
async function fetchEdgePreview() {
|
||||
if (!state.model || !state.roi) {
|
||||
document.getElementById("edge-preview-info").textContent =
|
||||
"Disegna prima la ROI sul modello";
|
||||
return;
|
||||
}
|
||||
const body = {
|
||||
model_id: state.model.id,
|
||||
roi: state.roi,
|
||||
weak_grad: parseFloat(document.getElementById("ep-weak").value),
|
||||
strong_grad: parseFloat(document.getElementById("ep-strong").value),
|
||||
num_features: parseInt(document.getElementById("ep-nf").value, 10),
|
||||
min_feature_spacing: parseInt(document.getElementById("ep-sp").value, 10),
|
||||
use_polarity: document.getElementById("ep-pol").checked,
|
||||
};
|
||||
try {
|
||||
const r = await fetch("/preview_edges", {
|
||||
method: "POST",
|
||||
headers: { "Content-Type": "application/json" },
|
||||
body: JSON.stringify(body),
|
||||
});
|
||||
if (!r.ok) throw new Error(await r.text());
|
||||
const j = await r.json();
|
||||
_epLastImg = await loadImage(`/image/${j.preview_id}/raw?t=${Date.now()}`);
|
||||
drawEdgePreview();
|
||||
const ucs = j.ucs_baricentro
|
||||
? ` | UCS=(${j.ucs_baricentro.cx},${j.ucs_baricentro.cy})`
|
||||
: "";
|
||||
document.getElementById("edge-preview-info").innerHTML =
|
||||
`<b>${j.n_features}</b> feature scelte (di ${j.n_edge_after_hysteresis} edge totali)<br>` +
|
||||
`mag: max=${j.mag_max.toFixed(0)} p50=${j.mag_p50.toFixed(0)} ` +
|
||||
`p85=${j.mag_p85.toFixed(0)}${ucs}`;
|
||||
} catch (e) {
|
||||
document.getElementById("edge-preview-info").textContent =
|
||||
`Errore preview: ${e.message}`;
|
||||
}
|
||||
}
|
||||
|
||||
function drawEdgePreview() {
|
||||
const cnv = document.getElementById("c-edge-preview");
|
||||
if (!_epLastImg) return;
|
||||
const ctx = cnv.getContext("2d");
|
||||
// Fit-contain
|
||||
const r = Math.min(cnv.width / _epLastImg.width,
|
||||
cnv.height / _epLastImg.height);
|
||||
const w = _epLastImg.width * r;
|
||||
const h = _epLastImg.height * r;
|
||||
const ox = (cnv.width - w) / 2;
|
||||
const oy = (cnv.height - h) / 2;
|
||||
ctx.fillStyle = "#000"; ctx.fillRect(0, 0, cnv.width, cnv.height);
|
||||
ctx.imageSmoothingEnabled = false;
|
||||
ctx.drawImage(_epLastImg, ox, oy, w, h);
|
||||
}
|
||||
|
||||
function scheduleEdgePreview() {
|
||||
if (_epDebounce) clearTimeout(_epDebounce);
|
||||
_epDebounce = setTimeout(fetchEdgePreview, 200);
|
||||
}
|
||||
|
||||
function bindEdgePreviewControls() {
|
||||
const slid = (id, valEl) => {
|
||||
const el = document.getElementById(id);
|
||||
const v = document.getElementById(valEl);
|
||||
el.addEventListener("input", () => {
|
||||
v.textContent = el.value;
|
||||
scheduleEdgePreview();
|
||||
});
|
||||
};
|
||||
slid("ep-weak", "ep-weak-v");
|
||||
slid("ep-strong", "ep-strong-v");
|
||||
slid("ep-nf", "ep-nf-v");
|
||||
slid("ep-sp", "ep-sp-v");
|
||||
document.getElementById("ep-pol").addEventListener("change",
|
||||
scheduleEdgePreview);
|
||||
// Auto-refresh quando il pannello viene aperto
|
||||
document.getElementById("edge-preview-panel").addEventListener("toggle",
|
||||
(e) => { if (e.target.open) fetchEdgePreview(); });
|
||||
document.getElementById("btn-edge-apply").addEventListener("click", () => {
|
||||
// Copia i valori correnti nei campi avanzati
|
||||
const map = {
|
||||
"ep-weak": "adv-weak_grad",
|
||||
"ep-strong": "adv-strong_grad",
|
||||
"ep-nf": "adv-num_features",
|
||||
"ep-sp": "adv-min_feature_spacing",
|
||||
};
|
||||
for (const [src, dst] of Object.entries(map)) {
|
||||
const dstEl = document.getElementById(dst);
|
||||
if (dstEl) dstEl.value = document.getElementById(src).value;
|
||||
}
|
||||
// use_polarity: alla checkbox della modalita Halcon
|
||||
const polCb = document.getElementById("hc-use-polarity");
|
||||
if (polCb) polCb.checked = document.getElementById("ep-pol").checked;
|
||||
// Apri pannello Avanzate per feedback
|
||||
const advDetails = document.querySelectorAll("#col-params details");
|
||||
advDetails.forEach((d) => { d.open = true; });
|
||||
alert("Parametri edge applicati. Esegui MATCH per usare i valori scelti.");
|
||||
});
|
||||
}
|
||||
|
||||
// ---------- CC: Diagnostica match ----------
|
||||
function renderDiag(diag, n_matches) {
|
||||
const el = document.getElementById("diag-content");
|
||||
if (!diag) {
|
||||
el.innerHTML = '<em style="color:#888">Diagnostica non disponibile</em>';
|
||||
return;
|
||||
}
|
||||
const dropTotal = (diag.drop_ncc_low || 0) + (diag.drop_min_score_post_avg || 0)
|
||||
+ (diag.drop_recall_low || 0) + (diag.drop_bbox_out_of_scene || 0)
|
||||
+ (diag.drop_nms_iou || 0);
|
||||
// Hint contestuali se 0 match
|
||||
let hint = "";
|
||||
if (n_matches === 0) {
|
||||
if (diag.n_after_pre_nms === 0) {
|
||||
hint = `<div style="color:#f88; margin-top:6px">⚠ Nessun candidato sopra soglia.
|
||||
Prova: ↓ <b>min_score</b> o ↓ <b>top_thresh</b> (currently ${diag.top_thresh_used.toFixed(2)})</div>`;
|
||||
} else if (diag.drop_ncc_low > 0 && dropTotal === diag.drop_ncc_low) {
|
||||
hint = `<div style="color:#f88; margin-top:6px">⚠ ${diag.drop_ncc_low} candidati droppati da NCC.
|
||||
Prova: ↓ <b>verify_threshold</b> (filtro_fp più leggero)</div>`;
|
||||
} else if (diag.drop_min_score_post_avg > 0) {
|
||||
hint = `<div style="color:#f88; margin-top:6px">⚠ ${diag.drop_min_score_post_avg} match sotto min_score post-NCC.
|
||||
Prova: ↓ <b>min_score</b></div>`;
|
||||
} else if (diag.drop_recall_low > 0) {
|
||||
hint = `<div style="color:#f88; margin-top:6px">⚠ ${diag.drop_recall_low} match con recall < ${diag.min_recall_used}.
|
||||
Prova: ↓ <b>min_recall</b></div>`;
|
||||
} else if (diag.drop_bbox_out_of_scene > 0) {
|
||||
hint = `<div style="color:#f88; margin-top:6px">⚠ ${diag.drop_bbox_out_of_scene} match con bbox fuori scena.
|
||||
Centro derivato male: aumenta <b>min_score</b> o restringi <b>search_roi</b></div>`;
|
||||
}
|
||||
}
|
||||
const flags = [];
|
||||
if (diag.use_polarity) flags.push("polarity");
|
||||
if (diag.use_soft_score) flags.push("soft");
|
||||
if (diag.subpixel_lm) flags.push("subpix-LM");
|
||||
el.innerHTML = `
|
||||
<div><b>Pipeline pruning:</b></div>
|
||||
<div>varianti: ${diag.n_variants_total} → top_eval=${diag.n_variants_top_evaluated}
|
||||
→ top_pass=${diag.n_variants_top_passed} → full_eval=${diag.n_variants_full_evaluated}</div>
|
||||
<div><b>Candidati:</b> raw=${diag.n_raw_candidates}
|
||||
→ pre_nms=${diag.n_after_pre_nms} → final=${diag.n_final}</div>
|
||||
<div><b>Drop reasons:</b> NCC=${diag.drop_ncc_low}, score=${diag.drop_min_score_post_avg},
|
||||
recall=${diag.drop_recall_low}, bbox=${diag.drop_bbox_out_of_scene}, NMS=${diag.drop_nms_iou}</div>
|
||||
<div><b>Soglie:</b> top=${diag.top_thresh_used.toFixed(2)},
|
||||
min_score=${diag.min_score_used.toFixed(2)},
|
||||
NCC=${diag.verify_threshold_used.toFixed(2)},
|
||||
recall=${diag.min_recall_used.toFixed(2)}</div>
|
||||
${flags.length ? `<div><b>Flag attivi:</b> ${flags.join(", ")}</div>` : ""}
|
||||
${hint}
|
||||
`;
|
||||
// Auto-apri pannello se 0 match (segnala problema)
|
||||
if (n_matches === 0) {
|
||||
document.getElementById("diag-panel").open = true;
|
||||
}
|
||||
}
|
||||
|
||||
// ---------- Auto-tune (Halcon-style) ----------
|
||||
async function doAutoTune() {
|
||||
if (!state.model || !state.roi) {
|
||||
@@ -608,6 +768,7 @@ window.addEventListener("DOMContentLoaded", async () => {
|
||||
document.getElementById("btn-unload-recipe").addEventListener("click",
|
||||
unloadRecipe);
|
||||
refreshRecipeList();
|
||||
bindEdgePreviewControls();
|
||||
const slider = document.getElementById("p-min-score");
|
||||
slider.addEventListener("input", (e) => {
|
||||
document.getElementById("v-score").textContent =
|
||||
|
||||
@@ -45,6 +45,40 @@
|
||||
<canvas id="c-model" width="380" height="420"></canvas>
|
||||
</div>
|
||||
<div id="roi-info">ROI: (nessuna)</div>
|
||||
<details id="edge-preview-panel" style="margin-top:10px">
|
||||
<summary>🔬 Anteprima edge / pulizia rumore</summary>
|
||||
<div style="font-size:11px; color:#aaa; margin:4px 0">
|
||||
Regola le soglie per togliere edge spuri (sporcizie). UCS rosso/verde
|
||||
sul baricentro feature.
|
||||
</div>
|
||||
<div class="ep-grid">
|
||||
<label class="ep-row">weak_grad <span id="ep-weak-v">30</span>
|
||||
<input type="range" id="ep-weak" min="5" max="200" value="30" step="1">
|
||||
</label>
|
||||
<label class="ep-row">strong_grad <span id="ep-strong-v">60</span>
|
||||
<input type="range" id="ep-strong" min="10" max="400" value="60" step="1">
|
||||
</label>
|
||||
<label class="ep-row">num_features <span id="ep-nf-v">96</span>
|
||||
<input type="range" id="ep-nf" min="16" max="300" value="96" step="1">
|
||||
</label>
|
||||
<label class="ep-row">spacing <span id="ep-sp-v">3</span>
|
||||
<input type="range" id="ep-sp" min="1" max="15" value="3" step="1">
|
||||
</label>
|
||||
<label class="ep-row" style="flex-direction:row; gap:6px">
|
||||
<input type="checkbox" id="ep-pol"> polarity
|
||||
</label>
|
||||
<button class="btn" id="btn-edge-apply" type="button"
|
||||
style="grid-column:1/-1">
|
||||
✓ Applica ai parametri Avanzate
|
||||
</button>
|
||||
</div>
|
||||
<div class="canvas-wrap" style="margin-top:6px">
|
||||
<canvas id="c-edge-preview" width="380" height="380"></canvas>
|
||||
</div>
|
||||
<div id="edge-preview-info" style="font-size:11px; color:#888; margin-top:4px">
|
||||
Disegna ROI e apri questo pannello per generare anteprima
|
||||
</div>
|
||||
</details>
|
||||
</section>
|
||||
|
||||
<section class="col" id="col-scene">
|
||||
@@ -214,6 +248,16 @@
|
||||
<div class="kv"><span>find:</span><span id="t-find">-</span></div>
|
||||
<div class="kv"><span>varianti:</span><span id="t-var">-</span></div>
|
||||
<div class="kv"><span>match:</span><span id="t-match">-</span></div>
|
||||
|
||||
<details id="diag-panel" style="margin-top:10px">
|
||||
<summary>🔍 Diagnostica (CC)</summary>
|
||||
<div id="diag-content" style="font-family:monospace; font-size:11px;
|
||||
background:#1a1a1a; padding:8px;
|
||||
border-radius:3px; margin-top:6px;
|
||||
line-height:1.5">
|
||||
<em style="color:#888">Esegui un MATCH per vedere la diagnostica</em>
|
||||
</div>
|
||||
</details>
|
||||
</section>
|
||||
</main>
|
||||
|
||||
|
||||
@@ -173,3 +173,18 @@ footer h2 {
|
||||
}
|
||||
.hc-row.hc-num label { font-size: 11px; color: #aaa; }
|
||||
.hc-row.hc-num input { width: 100%; }
|
||||
|
||||
/* Edge preview panel */
|
||||
.ep-grid {
|
||||
display: grid;
|
||||
grid-template-columns: 1fr 1fr;
|
||||
gap: 6px 12px;
|
||||
margin-top: 6px;
|
||||
font-size: 12px;
|
||||
}
|
||||
.ep-row {
|
||||
display: flex; flex-direction: column; gap: 2px;
|
||||
font-size: 11px; color: #aaa;
|
||||
}
|
||||
.ep-row input[type="range"] { width: 100%; }
|
||||
.ep-row span { color: #fff; font-weight: bold; font-family: monospace; }
|
||||
|
||||
@@ -12,6 +12,9 @@ dependencies = [
|
||||
"uvicorn[standard]>=0.34",
|
||||
]
|
||||
|
||||
[project.scripts]
|
||||
pm2d-eval = "pm2d.eval:main"
|
||||
|
||||
[dependency-groups]
|
||||
dev = [
|
||||
"httpx>=0.28.1",
|
||||
|
||||
Reference in New Issue
Block a user