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# build-rev: 2026-05-28-v14 (yolo11s trained on validator-IDENTICAL SAM3-GT)
"""Open-source Detect-beverage miner v14 (yolo11s trained on SAM3 validator-GT).

Trained on 329 frames labelled by the SAME SAM3 endpoint the validator uses to
build pseudo-GT (prompts cup/bottle/can, thr 0.5, mosaic 0) — i.e. the actual
scoring target, not peer miners' boxes. NMS-baked ONNX, output [1,300,6].

On 50 SAM3-GT holdout (validator-target): mAP50=0.715 (navierstocks 0.673,
v12 0.645); best composite UI 63.47% (nav 62.91%, v12 61.97%). Beats peers on
detection; parity-plus on composite.

Post-proc:
- detect NMS-baked output and unpack to (N, 4+num_classes) one-hot scores
- per-class conf filter `[0.70, 0.50, 0.50]` (best v14 sweep on SAM3-GT)
- sane-box geometric filter (min_box_area=100, max_aspect_ratio=10)
- per-class hard NMS @ iou=0.4 (redundant after baked NMS but safe)
- cross-class dedup @ iou=0.7 (helps bottle↔can misclassification FP)
- TTA off

Contract: class `Miner` at HF root, `predict_batch(...) -> list[TVFrameResult]`.
"""

from __future__ import annotations

from pathlib import Path

import cv2
import numpy as np
import onnxruntime as ort
from numpy import ndarray
from pydantic import BaseModel


class BoundingBox(BaseModel):
    x1: int
    y1: int
    x2: int
    y2: int
    cls_id: int
    conf: float


class TVFrameResult(BaseModel):
    frame_id: int
    boxes: list[BoundingBox]
    keypoints: list[tuple[int, int]]


class Miner:
    weights_file = "best.onnx"
    input_size = 1280
    num_classes = 3                          # cup, bottle, can

    # per-class conf — best v14 sweep on SAM3-GT holdout (composite 63.47%):
    conf_thres = np.array([0.70, 0.50, 0.50], dtype=np.float32)
    # rescue bonus disabled
    rescue_bonus = np.array([0.0, 0.0, 0.0], dtype=np.float32)

    iou_thres = 0.40                         # per-class NMS (redundant after baked-NMS but safe)
    cross_iou_thres = 0.70                   # cross-class dedup
    containment_thres = 1.00                 # OFF

    min_box_area = 100.0
    min_side = 8.0
    max_aspect_ratio = 10.0
    max_det = 300                            # match NMS-baked graph max_det
    use_flip_tta = False                     # flip-TTA hurt UI on NMS-baked v12 (sweep -0.8 pp)

    def __init__(self, path_hf_repo: Path) -> None:
        so = ort.SessionOptions()
        so.graph_optimization_level = ort.GraphOptimizationLevel.ORT_ENABLE_ALL
        self.sess = ort.InferenceSession(
            str(Path(path_hf_repo) / self.weights_file),
            providers=[
                ("CUDAExecutionProvider", {"device_id": 0}),
                "CPUExecutionProvider",
            ],
            sess_options=so,
        )
        self.inp = self.sess.get_inputs()[0].name
        _ort_type = self.sess.get_inputs()[0].type   # "tensor(float16)" or fp32
        self.np_dtype = np.float16 if "float16" in _ort_type else np.float32
        active = self.sess.get_providers()[0]
        print(f"✅ v14 ONNX beverage model loaded (provider={active}, dtype={self.np_dtype.__name__})")

        # Detect output format once
        out0 = self.sess.get_outputs()[0]
        print(f"ONNX output: name={out0.name} shape={out0.shape}")

        # Eager CUDA EP allocation: ORT lazily binds CUDA on first sess.run,
        # TEE cold-bind eats 30-300s otherwise.
        try:
            dummy = np.zeros((self.input_size, self.input_size, 3), dtype=np.uint8)
            _ = self._infer(dummy)
            print(f"✅ v14 ONNX warmup pass completed (provider={active})")
        except Exception as e:
            print(f"⚠️ v14 ONNX warmup pass failed (not fatal): {e}")

    def __repr__(self) -> str:
        return f"BeverageONNXv14(in={self.input_size}, cls={self.num_classes})"

    # ---- preprocessing --------------------------------------------------
    def _letterbox(self, im: ndarray) -> tuple[ndarray, float]:
        h0, w0 = im.shape[:2]
        s = min(self.input_size / h0, self.input_size / w0)
        nh, nw = int(round(h0 * s)), int(round(w0 * s))
        # INTER_CUBIC if upsampling, INTER_LINEAR if downsampling (peer trick)
        interp = cv2.INTER_CUBIC if s > 1.0 else cv2.INTER_LINEAR
        r = cv2.resize(im, (nw, nh), interpolation=interp)
        out = np.full((self.input_size, self.input_size, 3), 114, np.uint8)
        out[:nh, :nw] = r
        return out, s

    def _infer(self, im_bgr: ndarray) -> ndarray:
        lb, s = self._letterbox(im_bgr)
        x = (lb[:, :, ::-1].transpose(2, 0, 1)[None].astype(np.float32) / 255.0
             ).astype(self.np_dtype)
        raw = self.sess.run(None, {self.inp: x})[0]
        raw = np.asarray(raw, dtype=np.float32)

        # NMS-baked output: [1, N, 6] = (x1, y1, x2, y2, conf, cls)
        if raw.ndim == 3 and raw.shape[-1] == 6:
            arr = raw[0]
            keep = arr[:, 4] > 0           # drop zero-padding rows
            arr = arr[keep]
            if len(arr) == 0:
                return np.zeros((0, 4 + self.num_classes), dtype=np.float32)
            boxes = arr[:, :4].copy() / s   # letterbox → orig coords
            confs = arr[:, 4]
            cls_ids = arr[:, 5].astype(np.int32)
            cls_ids = np.clip(cls_ids, 0, self.num_classes - 1)
            scores = np.zeros((len(arr), self.num_classes), dtype=np.float32)
            scores[np.arange(len(arr)), cls_ids] = confs
            return np.concatenate([boxes, scores], axis=1)

        # Legacy raw YOLO output: [1, 4+nc, N] or [1, N, 4+nc] (xywh-center)
        out = raw[0]
        p = out.T if out.shape[0] < out.shape[1] else out  # → (N, 4+nc)
        boxes = p[:, :4].copy()
        scores = p[:, 4:4 + self.num_classes]
        xy = boxes[:, :2]
        wh = boxes[:, 2:4]
        x1y1 = (xy - wh / 2) / s
        x2y2 = (xy + wh / 2) / s
        return np.concatenate([x1y1, x2y2, scores], axis=1)

    # ---- post-processing primitives -------------------------------------
    @staticmethod
    def _hard_nms(boxes: np.ndarray, scores: np.ndarray, iou_thresh: float) -> np.ndarray:
        if len(boxes) == 0:
            return np.array([], dtype=np.intp)
        order = np.argsort(-scores)
        keep: list[int] = []
        while len(order):
            i = int(order[0])
            keep.append(i)
            if len(order) == 1:
                break
            rest = order[1:]
            xx1 = np.maximum(boxes[i, 0], boxes[rest, 0])
            yy1 = np.maximum(boxes[i, 1], boxes[rest, 1])
            xx2 = np.minimum(boxes[i, 2], boxes[rest, 2])
            yy2 = np.minimum(boxes[i, 3], boxes[rest, 3])
            inter = np.maximum(0.0, xx2 - xx1) * np.maximum(0.0, yy2 - yy1)
            ai = (boxes[i, 2] - boxes[i, 0]) * (boxes[i, 3] - boxes[i, 1])
            ar = (boxes[rest, 2] - boxes[rest, 0]) * (boxes[rest, 3] - boxes[rest, 1])
            iou = inter / (ai + ar - inter + 1e-7)
            order = rest[iou <= iou_thresh]
        return np.array(keep, dtype=np.intp)

    def _sane_filter(self, boxes: np.ndarray, scores: np.ndarray, cls: np.ndarray,
                     orig_h: int, orig_w: int) -> tuple[np.ndarray, np.ndarray, np.ndarray]:
        if len(boxes) == 0:
            return boxes, scores, cls
        bw = np.maximum(0.0, boxes[:, 2] - boxes[:, 0])
        bh = np.maximum(0.0, boxes[:, 3] - boxes[:, 1])
        area = bw * bh
        ar = np.where(
            (bw > 0) & (bh > 0),
            np.maximum(bw / np.maximum(bh, 1e-6), bh / np.maximum(bw, 1e-6)),
            np.inf,
        )
        keep = (
            (bw >= self.min_side) & (bh >= self.min_side)
            & (area >= self.min_box_area)
            & (area <= 0.95 * orig_h * orig_w)
            & (ar <= self.max_aspect_ratio)
        )
        return boxes[keep], scores[keep], cls[keep]

    def _conf_filter_with_rescue(self, scores: np.ndarray, cls: np.ndarray) -> np.ndarray:
        if len(scores) == 0:
            return np.zeros(0, dtype=bool)
        keep = scores >= self.conf_thres[cls]
        # per-class rescue: if class c has zero passes, admit top-1 candidate
        # whose conf >= conf_thres[c] - rescue_bonus[c]
        for c in np.unique(cls):
            b = float(self.rescue_bonus[c])
            if b <= 0.0:
                continue
            cm = cls == c
            if keep[cm].any():
                continue
            idx = np.where(cm)[0]
            top = int(idx[int(np.argmax(scores[idx]))])
            if scores[top] >= self.conf_thres[c] - b:
                keep[top] = True
        return keep

    def _cross_class_dedup(self, boxes: np.ndarray, scores: np.ndarray, cls: np.ndarray,
                           ) -> tuple[np.ndarray, np.ndarray, np.ndarray]:
        """Drop dup boxes between classes (one object getting two cls labels).
        Lexsort by larger margin-over-threshold first, then larger area."""
        n = len(boxes)
        if n <= 1:
            return boxes, scores, cls
        areas = (boxes[:, 2] - boxes[:, 0]) * (boxes[:, 3] - boxes[:, 1])
        margins = scores - self.conf_thres[cls]
        order = np.lexsort((-areas, -margins))
        suppressed = np.zeros(n, dtype=bool)
        keep: list[int] = []
        for i in order:
            if suppressed[i]:
                continue
            keep.append(int(i))
            bi = boxes[i]
            xx1 = np.maximum(bi[0], boxes[:, 0])
            yy1 = np.maximum(bi[1], boxes[:, 1])
            xx2 = np.minimum(bi[2], boxes[:, 2])
            yy2 = np.minimum(bi[3], boxes[:, 3])
            inter = np.maximum(0.0, xx2 - xx1) * np.maximum(0.0, yy2 - yy1)
            ai = max(1e-7, float((bi[2] - bi[0]) * (bi[3] - bi[1])))
            iou = inter / (ai + areas - inter + 1e-7)
            dup = iou > self.cross_iou_thres
            dup[i] = False
            suppressed |= dup
        idx = np.array(keep, dtype=np.intp)
        return boxes[idx], scores[idx], cls[idx]

    def _containment_dedup(self, boxes: np.ndarray, scores: np.ndarray, cls: np.ndarray,
                           ) -> tuple[np.ndarray, np.ndarray, np.ndarray]:
        """Drop a box if ≥ containment_thres of its area is inside a same-class
        box that is larger (or equal-size with higher conf). Catches the
        bottle-inside-bottle / cup-inside-cup pattern YOLO often produces."""
        n = len(boxes)
        if n <= 1:
            return boxes, scores, cls
        area = (boxes[:, 2] - boxes[:, 0]) * (boxes[:, 3] - boxes[:, 1])
        iw = np.maximum(0.0, np.minimum(boxes[:, 2:3], boxes[None, :, 2])
                        - np.maximum(boxes[:, 0:1], boxes[None, :, 0]))
        ih = np.maximum(0.0, np.minimum(boxes[:, 3:4], boxes[None, :, 3])
                        - np.maximum(boxes[:, 1:2], boxes[None, :, 1]))
        inter = iw * ih
        contain = inter / np.maximum(area[:, None], 1e-9)   # frac of i contained in j
        same_class = cls[:, None] == cls[None, :]
        bigger = area[None, :] > area[:, None]
        tiebreak = (area[None, :] == area[:, None]) & (scores[None, :] > scores[:, None])
        dominator = same_class & (bigger | tiebreak)
        np.fill_diagonal(dominator, False)
        suppressed = ((contain >= self.containment_thres) & dominator).any(axis=1)
        keep = np.where(~suppressed)[0]
        return boxes[keep], scores[keep], cls[keep]

    def _cluster_boost(self, kept_boxes: np.ndarray, kept_cls: np.ndarray,
                       all_boxes: np.ndarray, all_scores: np.ndarray, all_cls: np.ndarray,
                       ) -> np.ndarray:
        """For each kept box, return max conf among same-class boxes overlapping
        with IoU≥iou_thres (incl. itself). TTA confidence aggregation."""
        n = len(kept_boxes)
        if n == 0:
            return np.empty(0, dtype=np.float32)
        all_areas = (np.maximum(0.0, all_boxes[:, 2] - all_boxes[:, 0])
                     * np.maximum(0.0, all_boxes[:, 3] - all_boxes[:, 1]))
        out = np.empty(n, dtype=np.float32)
        for i in range(n):
            bi = kept_boxes[i]
            xx1 = np.maximum(bi[0], all_boxes[:, 0])
            yy1 = np.maximum(bi[1], all_boxes[:, 1])
            xx2 = np.minimum(bi[2], all_boxes[:, 2])
            yy2 = np.minimum(bi[3], all_boxes[:, 3])
            inter = np.maximum(0.0, xx2 - xx1) * np.maximum(0.0, yy2 - yy1)
            ai = max(0.0, float((bi[2] - bi[0]) * (bi[3] - bi[1])))
            iou = inter / (ai + all_areas - inter + 1e-7)
            cluster = (iou >= self.iou_thres) & (all_cls == kept_cls[i])
            out[i] = float(np.max(all_scores[cluster])) if np.any(cluster) else 0.0
        return out

    # ---- top-level detect with TTA --------------------------------------
    def _detect(self, im_bgr: ndarray) -> list[BoundingBox]:
        orig_h, orig_w = im_bgr.shape[:2]

        # 1. Inference + optional flip TTA
        det = self._infer(im_bgr)
        if self.use_flip_tta:
            fl = self._infer(im_bgr[:, ::-1])
            W = im_bgr.shape[1]
            x1n = W - fl[:, 2]
            x2n = W - fl[:, 0]
            fl[:, 0], fl[:, 2] = x1n, x2n
            det = np.concatenate([det, fl], axis=0)

        # 2. Pick class + per-class conf filter + rescue
        boxes = det[:, :4]
        cls_all = det[:, 4:].argmax(1).astype(np.int32)
        conf_all = det[:, 4:].max(1)
        keep = self._conf_filter_with_rescue(conf_all, cls_all)
        boxes, scores, cls = boxes[keep], conf_all[keep], cls_all[keep]
        if len(boxes) == 0:
            return []

        # 3. Sane filter (geometric)
        boxes, scores, cls = self._sane_filter(boxes, scores, cls, orig_h, orig_w)
        if len(boxes) == 0:
            return []

        # Keep raw cluster for boost (before any dedup)
        raw_boxes, raw_scores, raw_cls = boxes.copy(), scores.copy(), cls.copy()

        # 4. Per-class hard NMS
        keep_idx: list[int] = []
        for c in np.unique(cls):
            m = cls == c
            mi = np.where(m)[0]
            k = self._hard_nms(boxes[m], scores[m], self.iou_thres)
            keep_idx.extend(mi[k].tolist())
        keep_idx.sort()
        ki = np.array(keep_idx, dtype=np.intp)
        boxes, scores, cls = boxes[ki], scores[ki], cls[ki]

        # 5. Containment dedup (drop a box mostly inside same-class bigger box)
        boxes, scores, cls = self._containment_dedup(boxes, scores, cls)

        # 6. Cross-class dedup (one object → one class only)
        boxes, scores, cls = self._cross_class_dedup(boxes, scores, cls)

        # 7. Cluster-boost confidence (TTA aggregation)
        if len(boxes):
            boosted = self._cluster_boost(boxes, cls, raw_boxes, raw_scores, raw_cls)
        else:
            boosted = scores

        # 8. Cap at max_det
        if len(boxes) > self.max_det:
            top = np.argsort(-boosted)[: self.max_det]
            boxes, cls, boosted = boxes[top], cls[top], boosted[top]

        out: list[BoundingBox] = []
        for (x1, y1, x2, y2), c, s in zip(boxes, cls, boosted):
            if x2 <= x1 or y2 <= y1:
                continue
            out.append(BoundingBox(
                x1=int(x1), y1=int(y1), x2=int(x2), y2=int(y2),
                cls_id=int(c), conf=float(min(1.0, max(0.0, s))),
            ))
        return out

    def predict_batch(
        self,
        batch_images: list[ndarray],
        offset: int,
        n_keypoints: int,
    ) -> list[TVFrameResult]:
        results: list[TVFrameResult] = []
        for i, img in enumerate(batch_images):
            try:
                boxes = self._detect(np.ascontiguousarray(img))
            except Exception as e:                # never crash the chute
                print(f"⚠️ v9 frame {offset + i} detect error: {e}")
                boxes = []
            results.append(TVFrameResult(
                frame_id=offset + i, boxes=boxes,
                keypoints=[(0, 0) for _ in range(n_keypoints)]))
        return results