meaculpitt commited on
Commit
926cbea
·
verified ·
1 Parent(s): c14513a

scorevision: push artifact

Browse files
Files changed (6) hide show
  1. README.md +25 -20
  2. __pycache__/miner.cpython-312.pyc +0 -0
  3. class_names.txt +79 -0
  4. miner.py +126 -102
  5. model_type.json +1 -1
  6. weights.onnx +2 -2
README.md CHANGED
@@ -1,14 +1,13 @@
1
  ---
2
  tags:
3
  - element_type:detect
4
- - model:yolov11-nano
5
- - object:person
6
  manako:
7
  description: >
8
- YOLOv11-nano fine-tuned for ground-level CCTV person detection on SN44.
9
- Trained on CrowdHuman (15k, dense crowds) + BDD100K street pedestrians.
10
- Conf threshold raised to 0.35 to minimise false positives.
11
- source: meaculpitt/Detect-Person
12
  prompt_hints: null
13
  input_payload:
14
  - name: frame
@@ -17,26 +16,32 @@ manako:
17
  output_payload:
18
  - name: detections
19
  type: detections
20
- description: Bounding boxes for detected persons
21
- evaluation_score: 0.5563
22
  last_benchmark:
23
- type: coco_val2017
24
- ran_at: '2026-03-25T02:58:57+00:00'
25
  result_path: null
26
  ---
27
 
28
- # Detect-Person — SN44
29
 
30
- YOLOv11-nano fine-tuned for ground-level CCTV person detection.
31
 
32
  | Metric | Value |
33
  |--------|-------|
34
- | mAP@50 (COCO val2017) | 55.63% |
35
- | Precision (conf=0.35) | 56.86% |
36
- | Recall | 50.67% |
37
- | Baseline to beat | 37.55% |
38
- | Model size | 5.6 MB |
39
- | Input size | 1280×1280 |
40
 
41
- **Training data**: CrowdHuman (15k) + BDD100K (3.2k pedestrians)
42
- **Validation**: COCO val2017 persons (2,693 images)
 
 
 
 
 
 
 
1
  ---
2
  tags:
3
  - element_type:detect
4
+ - model:yolov11-small
5
+ - object:vehicle
6
  manako:
7
  description: >
8
+ YOLO11s vehicle detector fine-tuned on COCO vehicles + BDD100K + VisDrone.
9
+ FP16 ONNX, 1280x1280 input. Trained R6: 59,870 images, 50 epochs.
10
+ source: meaculpitt/Detect-Vehicle
 
11
  prompt_hints: null
12
  input_payload:
13
  - name: frame
 
16
  output_payload:
17
  - name: detections
18
  type: detections
19
+ description: Bounding boxes for detected vehicles
20
+ evaluation_score: 0.7701
21
  last_benchmark:
22
+ type: visdrone_val
23
+ ran_at: 2026-03-25T17:34:00+00:00
24
  result_path: null
25
  ---
26
 
27
+ # Detect-Vehicle — SN44
28
 
29
+ YOLO11s fine-tuned for vehicle detection (car, bus, truck, motorcycle).
30
 
31
  | Metric | Value |
32
  |--------|-------|
33
+ | mAP@50 | 77.01% |
34
+ | Model | YOLO11s (FP16 ONNX) |
35
+ | Input size | 1280x1280 |
36
+ | Model size | 19.2 MB |
37
+ | Training data | COCO vehicles + BDD100K + VisDrone (59,870 images) |
38
+ | Baseline to beat | 40.72% |
39
 
40
+ ## Classes
41
+
42
+ | Output ID | Class |
43
+ |-----------|-------|
44
+ | 0 | car |
45
+ | 1 | bus |
46
+ | 2 | truck |
47
+ | 3 | motorcycle |
__pycache__/miner.cpython-312.pyc CHANGED
Binary files a/__pycache__/miner.cpython-312.pyc and b/__pycache__/miner.cpython-312.pyc differ
 
class_names.txt CHANGED
@@ -1 +1,80 @@
1
  person
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
1
  person
2
+ bicycle
3
+ car
4
+ motorcycle
5
+ airplane
6
+ bus
7
+ train
8
+ truck
9
+ boat
10
+ traffic light
11
+ fire hydrant
12
+ stop sign
13
+ parking meter
14
+ bench
15
+ bird
16
+ cat
17
+ dog
18
+ horse
19
+ sheep
20
+ cow
21
+ elephant
22
+ bear
23
+ zebra
24
+ giraffe
25
+ backpack
26
+ umbrella
27
+ handbag
28
+ tie
29
+ suitcase
30
+ frisbee
31
+ skis
32
+ snowboard
33
+ sports ball
34
+ kite
35
+ baseball bat
36
+ baseball glove
37
+ skateboard
38
+ surfboard
39
+ tennis racket
40
+ bottle
41
+ wine glass
42
+ cup
43
+ fork
44
+ knife
45
+ spoon
46
+ bowl
47
+ banana
48
+ apple
49
+ sandwich
50
+ orange
51
+ broccoli
52
+ carrot
53
+ hot dog
54
+ pizza
55
+ donut
56
+ cake
57
+ chair
58
+ couch
59
+ potted plant
60
+ bed
61
+ dining table
62
+ toilet
63
+ tv
64
+ laptop
65
+ mouse
66
+ remote
67
+ keyboard
68
+ cell phone
69
+ microwave
70
+ oven
71
+ toaster
72
+ sink
73
+ refrigerator
74
+ book
75
+ clock
76
+ vase
77
+ scissors
78
+ teddy bear
79
+ hair drier
80
+ toothbrush
miner.py CHANGED
@@ -1,7 +1,12 @@
1
  """
2
- Score Vision SN44 — DetectPerson miner v4 (2026-03-26).
3
- TTA (3-pass) + inline WBF. Stretch resize preprocessing.
4
- Single class: person (cls_id=0).
 
 
 
 
 
5
  """
6
 
7
  from pathlib import Path
@@ -13,7 +18,12 @@ import onnxruntime as ort
13
  from numpy import ndarray
14
  from pydantic import BaseModel
15
 
16
- CONF_THRESH = 0.50
 
 
 
 
 
17
  TTA_CONF_THRESH = 0.25
18
  IOU_THRESH = 0.45
19
  WBF_IOU_THR = 0.55
@@ -22,68 +32,80 @@ TTA_SCALE = 1.2
22
 
23
 
24
  def _wbf(boxes_list: list[np.ndarray], scores_list: list[np.ndarray],
25
- iou_thr: float = 0.55, skip_box_thr: float = 0.0001
26
- ) -> tuple[np.ndarray, np.ndarray]:
27
- """Weighted Boxes Fusion for single-class detection. Boxes in [0,1] normalized coords."""
28
  if not boxes_list:
29
- return np.empty((0, 4)), np.empty(0)
30
 
31
- all_boxes, all_scores = [], []
32
- for bx, sc in zip(boxes_list, scores_list):
 
33
  for i in range(len(bx)):
34
  if sc[i] < skip_box_thr:
35
  continue
36
  all_boxes.append(bx[i])
37
  all_scores.append(sc[i])
 
38
 
39
  if not all_boxes:
40
- return np.empty((0, 4)), np.empty(0)
41
 
42
  all_boxes = np.array(all_boxes)
43
  all_scores = np.array(all_scores)
44
- n_models = len(boxes_list)
45
 
46
- order = all_scores.argsort()[::-1]
47
- all_boxes = all_boxes[order]
48
- all_scores = all_scores[order]
49
-
50
- clusters: list[list[int]] = []
51
- cluster_boxes: list[np.ndarray] = []
52
-
53
- for i in range(len(all_boxes)):
54
- matched = -1
55
- best_iou = iou_thr
56
- for c_idx, c_box in enumerate(cluster_boxes):
57
- xx1 = max(all_boxes[i, 0], c_box[0])
58
- yy1 = max(all_boxes[i, 1], c_box[1])
59
- xx2 = min(all_boxes[i, 2], c_box[2])
60
- yy2 = min(all_boxes[i, 3], c_box[3])
61
- inter = max(0, xx2 - xx1) * max(0, yy2 - yy1)
62
- a1 = (all_boxes[i, 2] - all_boxes[i, 0]) * (all_boxes[i, 3] - all_boxes[i, 1])
63
- a2 = (c_box[2] - c_box[0]) * (c_box[3] - c_box[1])
64
- iou = inter / (a1 + a2 - inter + 1e-9)
65
- if iou > best_iou:
66
- best_iou = iou
67
- matched = c_idx
68
- if matched >= 0:
69
- clusters[matched].append(i)
70
- idxs = clusters[matched]
71
- weights = all_scores[idxs]
72
- w_sum = weights.sum()
73
- cluster_boxes[matched] = (all_boxes[idxs] * weights[:, None]).sum(0) / w_sum
74
- else:
75
- clusters.append([i])
76
- cluster_boxes.append(all_boxes[i].copy())
77
-
78
- fused_boxes, fused_scores = [], []
79
- for c_idx, idxs in enumerate(clusters):
80
- weights = all_scores[idxs]
81
- fused_boxes.append(cluster_boxes[c_idx])
82
- fused_scores.append(weights.sum() / n_models)
 
 
 
 
 
 
 
 
 
 
83
 
84
  if not fused_boxes:
85
- return np.empty((0, 4)), np.empty(0)
86
- return np.array(fused_boxes), np.array(fused_scores)
87
 
88
 
89
  class BoundingBox(BaseModel):
@@ -104,112 +126,113 @@ class TVFrameResult(BaseModel):
104
  class Miner:
105
  def __init__(self, path_hf_repo: Path) -> None:
106
  self.path_hf_repo = path_hf_repo
107
- self.class_names = ['person']
108
  self.session = ort.InferenceSession(
109
  str(path_hf_repo / "weights.onnx"),
110
  providers=["CUDAExecutionProvider", "CPUExecutionProvider"],
111
  )
112
  self.input_name = self.session.get_inputs()[0].name
113
- input_shape = self.session.get_inputs()[0].shape
114
- self.input_h = int(input_shape[2])
115
- self.input_w = int(input_shape[3])
116
  self.conf_threshold = CONF_THRESH
117
  self.tta_conf_threshold = TTA_CONF_THRESH
118
  self.iou_threshold = IOU_THRESH
119
 
120
  def __repr__(self) -> str:
121
- return f"DetectPerson Miner v4 TTA+WBF session={type(self.session).__name__}"
122
-
123
- def _preprocess(self, image_bgr: ndarray) -> tuple[np.ndarray, tuple[int, int]]:
124
- h, w = image_bgr.shape[:2]
125
- rgb = cv2.cvtColor(image_bgr, cv2.COLOR_BGR2RGB)
126
- resized = cv2.resize(rgb, (self.input_w, self.input_h))
127
- x = resized.astype(np.float32) / 255.0
128
- x = np.transpose(x, (2, 0, 1))[None, ...]
129
- return x, (h, w)
130
-
131
- def _decode_raw(self, raw: np.ndarray, orig_h: int, orig_w: int,
132
- conf_thresh: float | None = None) -> tuple[np.ndarray, np.ndarray]:
 
 
 
 
 
 
 
 
 
 
 
 
 
133
  pred = raw[0]
134
- if pred.ndim != 2:
135
- return np.empty((0, 4)), np.empty(0)
136
  if pred.shape[0] < pred.shape[1]:
137
- pred = pred.transpose(1, 0)
138
- if pred.shape[1] < 5:
139
- return np.empty((0, 4)), np.empty(0)
140
-
141
- boxes = pred[:, :4]
142
  cls_scores = pred[:, 4:]
143
- if cls_scores.shape[1] == 0:
144
- return np.empty((0, 4)), np.empty(0)
145
-
146
  confs = np.max(cls_scores, axis=1)
147
  thresh = conf_thresh if conf_thresh is not None else self.conf_threshold
148
- keep = confs >= thresh
149
- boxes, confs = boxes[keep], confs[keep]
150
- if boxes.shape[0] == 0:
151
- return np.empty((0, 4)), np.empty(0)
152
-
153
- sx = orig_w / float(self.input_w)
154
- sy = orig_h / float(self.input_h)
155
- cx, cy, bw, bh = boxes[:, 0], boxes[:, 1], boxes[:, 2], boxes[:, 3]
156
- x1 = np.clip((cx - bw / 2) * sx, 0, orig_w)
157
- y1 = np.clip((cy - bh / 2) * sy, 0, orig_h)
158
- x2 = np.clip((cx + bw / 2) * sx, 0, orig_w)
159
- y2 = np.clip((cy + bh / 2) * sy, 0, orig_h)
160
- return np.stack([x1, y1, x2, y2], axis=1), confs
161
 
162
  def _run_single_pass(self, image_bgr: ndarray, conf_thresh: float | None = None
163
- ) -> tuple[np.ndarray, np.ndarray]:
164
  orig_h, orig_w = image_bgr.shape[:2]
165
- inp, _ = self._preprocess(image_bgr)
166
  raw = self.session.run(None, {self.input_name: inp})[0]
167
- return self._decode_raw(raw, orig_h, orig_w, conf_thresh)
168
 
169
  def _infer_single(self, image_bgr: ndarray) -> list[BoundingBox]:
170
  orig_h, orig_w = image_bgr.shape[:2]
171
 
172
- all_boxes, all_scores = [], []
173
 
174
- def _collect(boxes, confs):
175
  if len(boxes) == 0:
176
  return
 
177
  norm = boxes.copy()
178
  norm[:, [0, 2]] /= orig_w
179
  norm[:, [1, 3]] /= orig_h
180
  norm = np.clip(norm, 0, 1)
181
  all_boxes.append(norm)
182
  all_scores.append(confs)
 
183
 
184
  # Pass 1: original (low threshold for TTA)
185
  _collect(*self._run_single_pass(image_bgr, self.tta_conf_threshold))
186
 
187
  # Pass 2: horizontal flip
188
  flipped = cv2.flip(image_bgr, 1)
189
- boxes_f, confs_f = self._run_single_pass(flipped, self.tta_conf_threshold)
190
  if len(boxes_f):
191
  boxes_f[:, 0], boxes_f[:, 2] = orig_w - boxes_f[:, 2], orig_w - boxes_f[:, 0]
192
- _collect(boxes_f, confs_f)
193
 
194
  # Pass 3: 1.2x scale center crop
195
  sh, sw = int(orig_h * TTA_SCALE), int(orig_w * TTA_SCALE)
196
  scaled = cv2.resize(image_bgr, (sw, sh), interpolation=cv2.INTER_LINEAR)
197
  yo, xo = (sh - orig_h) // 2, (sw - orig_w) // 2
198
  cropped = scaled[yo:yo + orig_h, xo:xo + orig_w]
199
- boxes_s, confs_s = self._run_single_pass(cropped, self.tta_conf_threshold)
200
  if len(boxes_s):
201
  boxes_s[:, 0] = (boxes_s[:, 0] + xo) / TTA_SCALE
202
  boxes_s[:, 1] = (boxes_s[:, 1] + yo) / TTA_SCALE
203
  boxes_s[:, 2] = (boxes_s[:, 2] + xo) / TTA_SCALE
204
  boxes_s[:, 3] = (boxes_s[:, 3] + yo) / TTA_SCALE
205
  boxes_s = np.clip(boxes_s, 0, [[orig_w, orig_h, orig_w, orig_h]])
206
- _collect(boxes_s, confs_s)
207
 
208
  if not all_boxes:
209
  return []
210
 
211
- fused_boxes, fused_scores = _wbf(
212
- all_boxes, all_scores,
213
  iou_thr=WBF_IOU_THR, skip_box_thr=WBF_SKIP_THR,
214
  )
215
  if len(fused_boxes) == 0:
@@ -223,6 +246,7 @@ class Miner:
223
  keep = fused_scores >= self.conf_threshold
224
  fused_boxes = fused_boxes[keep]
225
  fused_scores = fused_scores[keep]
 
226
 
227
  out: list[BoundingBox] = []
228
  for i in range(len(fused_boxes)):
@@ -232,7 +256,7 @@ class Miner:
232
  y1=max(0, min(orig_h, math.floor(b[1]))),
233
  x2=max(0, min(orig_w, math.ceil(b[2]))),
234
  y2=max(0, min(orig_h, math.ceil(b[3]))),
235
- cls_id=0,
236
  conf=max(0.0, min(1.0, float(fused_scores[i]))),
237
  ))
238
  return out
 
1
  """
2
+ Score Vision SN44 — VehicleDetect miner v6 (2026-03-26).
3
+ TTA (3-pass) + inline WBF. Per-class NMS. Letterbox preprocessing.
4
+
5
+ Model: YOLO11s ONNX, 4 classes trained as:
6
+ 0 = car, 1 = bus, 2 = truck, 3 = motorcycle
7
+
8
+ Official submission order (remapped in MODEL_TO_OUT):
9
+ 0 = bus, 1 = car, 2 = truck, 3 = motorcycle
10
  """
11
 
12
  from pathlib import Path
 
18
  from numpy import ndarray
19
  from pydantic import BaseModel
20
 
21
+ MODEL_TO_OUT: dict[int, int] = {0: 1, 1: 0, 2: 2, 3: 3}
22
+ OUT_NAMES = ["bus", "car", "truck", "motorcycle"]
23
+ NUM_CLASSES = 4
24
+
25
+ IMG_SIZE = 1280
26
+ CONF_THRESH = 0.35
27
  TTA_CONF_THRESH = 0.25
28
  IOU_THRESH = 0.45
29
  WBF_IOU_THR = 0.55
 
32
 
33
 
34
  def _wbf(boxes_list: list[np.ndarray], scores_list: list[np.ndarray],
35
+ labels_list: list[np.ndarray], iou_thr: float = 0.55,
36
+ skip_box_thr: float = 0.0001) -> tuple[np.ndarray, np.ndarray, np.ndarray]:
37
+ """Weighted Boxes Fusion (inline, no external dep). Boxes in [0,1] normalized coords."""
38
  if not boxes_list:
39
+ return np.empty((0, 4)), np.empty(0), np.empty(0)
40
 
41
+ # Collect all boxes with model index
42
+ all_boxes, all_scores, all_labels = [], [], []
43
+ for model_idx, (bx, sc, lb) in enumerate(zip(boxes_list, scores_list, labels_list)):
44
  for i in range(len(bx)):
45
  if sc[i] < skip_box_thr:
46
  continue
47
  all_boxes.append(bx[i])
48
  all_scores.append(sc[i])
49
+ all_labels.append(int(lb[i]))
50
 
51
  if not all_boxes:
52
+ return np.empty((0, 4)), np.empty(0), np.empty(0)
53
 
54
  all_boxes = np.array(all_boxes)
55
  all_scores = np.array(all_scores)
56
+ all_labels = np.array(all_labels, dtype=int)
57
 
58
+ n_models = len(boxes_list)
59
+ fused_boxes, fused_scores, fused_labels = [], [], []
60
+
61
+ for cls in np.unique(all_labels):
62
+ cls_mask = all_labels == cls
63
+ cls_boxes = all_boxes[cls_mask]
64
+ cls_scores = all_scores[cls_mask]
65
+
66
+ order = cls_scores.argsort()[::-1]
67
+ cls_boxes = cls_boxes[order]
68
+ cls_scores = cls_scores[order]
69
+
70
+ clusters: list[list[int]] = []
71
+ cluster_boxes: list[np.ndarray] = []
72
+
73
+ for i in range(len(cls_boxes)):
74
+ matched = -1
75
+ best_iou = iou_thr
76
+ for c_idx, c_box in enumerate(cluster_boxes):
77
+ xx1 = max(cls_boxes[i, 0], c_box[0])
78
+ yy1 = max(cls_boxes[i, 1], c_box[1])
79
+ xx2 = min(cls_boxes[i, 2], c_box[2])
80
+ yy2 = min(cls_boxes[i, 3], c_box[3])
81
+ inter = max(0, xx2 - xx1) * max(0, yy2 - yy1)
82
+ a1 = (cls_boxes[i, 2] - cls_boxes[i, 0]) * (cls_boxes[i, 3] - cls_boxes[i, 1])
83
+ a2 = (c_box[2] - c_box[0]) * (c_box[3] - c_box[1])
84
+ iou = inter / (a1 + a2 - inter + 1e-9)
85
+ if iou > best_iou:
86
+ best_iou = iou
87
+ matched = c_idx
88
+ if matched >= 0:
89
+ clusters[matched].append(i)
90
+ # Update cluster box as weighted average
91
+ idxs = clusters[matched]
92
+ weights = cls_scores[idxs]
93
+ w_sum = weights.sum()
94
+ cluster_boxes[matched] = (cls_boxes[idxs] * weights[:, None]).sum(0) / w_sum
95
+ else:
96
+ clusters.append([i])
97
+ cluster_boxes.append(cls_boxes[i].copy())
98
+
99
+ for c_idx, idxs in enumerate(clusters):
100
+ weights = cls_scores[idxs]
101
+ score = weights.mean() # avg of contributing passes, not all n_models
102
+ fused_boxes.append(cluster_boxes[c_idx])
103
+ fused_scores.append(score)
104
+ fused_labels.append(cls)
105
 
106
  if not fused_boxes:
107
+ return np.empty((0, 4)), np.empty(0), np.empty(0)
108
+ return np.array(fused_boxes), np.array(fused_scores), np.array(fused_labels)
109
 
110
 
111
  class BoundingBox(BaseModel):
 
126
  class Miner:
127
  def __init__(self, path_hf_repo: Path) -> None:
128
  self.path_hf_repo = path_hf_repo
 
129
  self.session = ort.InferenceSession(
130
  str(path_hf_repo / "weights.onnx"),
131
  providers=["CUDAExecutionProvider", "CPUExecutionProvider"],
132
  )
133
  self.input_name = self.session.get_inputs()[0].name
 
 
 
134
  self.conf_threshold = CONF_THRESH
135
  self.tta_conf_threshold = TTA_CONF_THRESH
136
  self.iou_threshold = IOU_THRESH
137
 
138
  def __repr__(self) -> str:
139
+ return f"VehicleDetect Miner v5 TTA+WBF session={type(self.session).__name__}"
140
+
141
+ def _letterbox(self, img: ndarray) -> tuple[np.ndarray, float, int, int]:
142
+ h, w = img.shape[:2]
143
+ r = min(IMG_SIZE / h, IMG_SIZE / w)
144
+ new_w, new_h = int(round(w * r)), int(round(h * r))
145
+ img_r = cv2.resize(img, (new_w, new_h), interpolation=cv2.INTER_LINEAR)
146
+ dw, dh = IMG_SIZE - new_w, IMG_SIZE - new_h
147
+ pad_l, pad_t = dw // 2, dh // 2
148
+ img_p = cv2.copyMakeBorder(
149
+ img_r, pad_t, dh - pad_t, pad_l, dw - pad_l,
150
+ cv2.BORDER_CONSTANT, value=(114, 114, 114),
151
+ )
152
+ return img_p, r, pad_l, pad_t
153
+
154
+ def _preprocess(self, image_bgr: ndarray) -> tuple[np.ndarray, float, int, int]:
155
+ img_p, ratio, pad_l, pad_t = self._letterbox(image_bgr)
156
+ img_rgb = cv2.cvtColor(img_p, cv2.COLOR_BGR2RGB)
157
+ inp = img_rgb.astype(np.float32) / 255.0
158
+ inp = np.ascontiguousarray(inp.transpose(2, 0, 1)[np.newaxis])
159
+ return inp, ratio, pad_l, pad_t
160
+
161
+ def _decode_raw(self, raw: np.ndarray, ratio: float, pad_l: int, pad_t: int,
162
+ orig_w: int, orig_h: int, conf_thresh: float | None = None
163
+ ) -> tuple[np.ndarray, np.ndarray, np.ndarray]:
164
  pred = raw[0]
 
 
165
  if pred.shape[0] < pred.shape[1]:
166
+ pred = pred.T
167
+ bboxes_cx = pred[:, :4]
 
 
 
168
  cls_scores = pred[:, 4:]
169
+ cls_ids = np.argmax(cls_scores, axis=1)
 
 
170
  confs = np.max(cls_scores, axis=1)
171
  thresh = conf_thresh if conf_thresh is not None else self.conf_threshold
172
+ mask = confs >= thresh
173
+ if not mask.any():
174
+ return np.empty((0, 4)), np.empty(0), np.empty(0, dtype=int)
175
+ bboxes_cx, confs, cls_ids = bboxes_cx[mask], confs[mask], cls_ids[mask]
176
+ cx, cy, bw, bh = bboxes_cx[:, 0], bboxes_cx[:, 1], bboxes_cx[:, 2], bboxes_cx[:, 3]
177
+ x1 = np.clip((cx - bw / 2 - pad_l) / ratio, 0, orig_w)
178
+ y1 = np.clip((cy - bh / 2 - pad_t) / ratio, 0, orig_h)
179
+ x2 = np.clip((cx + bw / 2 - pad_l) / ratio, 0, orig_w)
180
+ y2 = np.clip((cy + bh / 2 - pad_t) / ratio, 0, orig_h)
181
+ return np.stack([x1, y1, x2, y2], axis=1), confs, cls_ids
 
 
 
182
 
183
  def _run_single_pass(self, image_bgr: ndarray, conf_thresh: float | None = None
184
+ ) -> tuple[np.ndarray, np.ndarray, np.ndarray]:
185
  orig_h, orig_w = image_bgr.shape[:2]
186
+ inp, ratio, pad_l, pad_t = self._preprocess(image_bgr)
187
  raw = self.session.run(None, {self.input_name: inp})[0]
188
+ return self._decode_raw(raw, ratio, pad_l, pad_t, orig_w, orig_h, conf_thresh)
189
 
190
  def _infer_single(self, image_bgr: ndarray) -> list[BoundingBox]:
191
  orig_h, orig_w = image_bgr.shape[:2]
192
 
193
+ all_boxes, all_scores, all_labels = [], [], []
194
 
195
+ def _collect(boxes, confs, cls_ids):
196
  if len(boxes) == 0:
197
  return
198
+ out_cls = np.array([MODEL_TO_OUT[int(c)] for c in cls_ids])
199
  norm = boxes.copy()
200
  norm[:, [0, 2]] /= orig_w
201
  norm[:, [1, 3]] /= orig_h
202
  norm = np.clip(norm, 0, 1)
203
  all_boxes.append(norm)
204
  all_scores.append(confs)
205
+ all_labels.append(out_cls)
206
 
207
  # Pass 1: original (low threshold for TTA)
208
  _collect(*self._run_single_pass(image_bgr, self.tta_conf_threshold))
209
 
210
  # Pass 2: horizontal flip
211
  flipped = cv2.flip(image_bgr, 1)
212
+ boxes_f, confs_f, cls_f = self._run_single_pass(flipped, self.tta_conf_threshold)
213
  if len(boxes_f):
214
  boxes_f[:, 0], boxes_f[:, 2] = orig_w - boxes_f[:, 2], orig_w - boxes_f[:, 0]
215
+ _collect(boxes_f, confs_f, cls_f)
216
 
217
  # Pass 3: 1.2x scale center crop
218
  sh, sw = int(orig_h * TTA_SCALE), int(orig_w * TTA_SCALE)
219
  scaled = cv2.resize(image_bgr, (sw, sh), interpolation=cv2.INTER_LINEAR)
220
  yo, xo = (sh - orig_h) // 2, (sw - orig_w) // 2
221
  cropped = scaled[yo:yo + orig_h, xo:xo + orig_w]
222
+ boxes_s, confs_s, cls_s = self._run_single_pass(cropped, self.tta_conf_threshold)
223
  if len(boxes_s):
224
  boxes_s[:, 0] = (boxes_s[:, 0] + xo) / TTA_SCALE
225
  boxes_s[:, 1] = (boxes_s[:, 1] + yo) / TTA_SCALE
226
  boxes_s[:, 2] = (boxes_s[:, 2] + xo) / TTA_SCALE
227
  boxes_s[:, 3] = (boxes_s[:, 3] + yo) / TTA_SCALE
228
  boxes_s = np.clip(boxes_s, 0, [[orig_w, orig_h, orig_w, orig_h]])
229
+ _collect(boxes_s, confs_s, cls_s)
230
 
231
  if not all_boxes:
232
  return []
233
 
234
+ fused_boxes, fused_scores, fused_labels = _wbf(
235
+ all_boxes, all_scores, all_labels,
236
  iou_thr=WBF_IOU_THR, skip_box_thr=WBF_SKIP_THR,
237
  )
238
  if len(fused_boxes) == 0:
 
246
  keep = fused_scores >= self.conf_threshold
247
  fused_boxes = fused_boxes[keep]
248
  fused_scores = fused_scores[keep]
249
+ fused_labels = fused_labels[keep]
250
 
251
  out: list[BoundingBox] = []
252
  for i in range(len(fused_boxes)):
 
256
  y1=max(0, min(orig_h, math.floor(b[1]))),
257
  x2=max(0, min(orig_w, math.ceil(b[2]))),
258
  y2=max(0, min(orig_h, math.ceil(b[3]))),
259
+ cls_id=int(fused_labels[i]),
260
  conf=max(0.0, min(1.0, float(fused_scores[i]))),
261
  ))
262
  return out
model_type.json CHANGED
@@ -1 +1 @@
1
- {"task_type": "object-detection", "model_type": "yolov11-nano", "deploy": "2026-03-26T07:46Z"}
 
1
+ {"task_type": "object-detection", "model_type": "yolov11-small", "deploy": "2026-03-26T07:43Z"}
weights.onnx CHANGED
@@ -1,3 +1,3 @@
1
  version https://git-lfs.github.com/spec/v1
2
- oid sha256:f32ed65b9024a69693f675d494c7fc813a964766c54b241464a463377342da60
3
- size 5607862
 
1
  version https://git-lfs.github.com/spec/v1
2
+ oid sha256:e3916408ec21f8c94358c18914f922814770b78557e52fe17ff7a9ee74339a5a
3
+ size 19272252