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"""HDMap 3D 标签解析(Cosmos-Drive-Dreams 9 类结构化对象)。

输入:clip 标签目录(``labels/{clip_id_full}/``)。
输出:``list[ObjectTrackInfo]``,每个对象给出 ``object_to_world`` 4x4 + ``lwh``,
``object_type`` 取自 ``HDMAP_SOURCES`` 的 9 类,``is_moving=False``。

形状约定(按 README):
    - 3d_lanes / lanes.json
        labels[i]['labelData']['shape3d']['polylines3d']['polylines'][0/1]['vertices']
    - 3d_lanelines / lanelines.json
        labels[i]['labelData']['shape3d']['polyline3d']['vertices']
    - 3d_road_boundaries / road_boundaries.json   同 polyline3d
    - 3d_wait_lines / wait_lines.json             同 polyline3d
    - 3d_crosswalks / crosswalks.json
        labels[i]['labelData']['shape3d']['surface']['vertices']
    - 3d_road_markings / road_markings.json       同 surface
    - 3d_poles / poles.json                       同 polyline3d
    - 3d_traffic_lights / 3d_traffic_lights.json
        labels[i]['labelData']['shape3d']['cuboid3d']['vertices']  # 8 角点
    - 3d_traffic_signs / 3d_traffic_signs.json    同 cuboid3d

折线 → 7-DoF box:
    PCA 主方向作 yaw,主/副/竖三向 min-max 作 ``l/w/h``;过长 polyline 按累计
    弧长切成若干 ``segment_len`` 米的小段,每段一个独立 box(车道线一段太长会
    超出 max_distance_m,DETR query 也很难一次拟合一整条 100 m 车道线)。
"""

from __future__ import annotations

import json
from pathlib import Path

import numpy as np
import torch

from .targets import ObjectTrackInfo
from .label_paths import resolve_clip_file


# 折线类长度切分阈值(米)
POLYLINE_SEGMENT_LEN = 10.0
LANE_SEGMENT_LEN = 15.0  # lanes 是一对左右 polyline,整体粗一点
MIN_LWH = (0.2, 0.2, 0.05)


# cls_name -> (folder, json_name, kind)
HDMAP_SOURCES = {
    "lane":          ("3d_lanes",           "lanes.json",            "lane_pair"),
    "laneline":      ("3d_lanelines",       "lanelines.json",        "polyline"),
    "road_boundary": ("3d_road_boundaries", "road_boundaries.json",  "polyline"),
    "wait_line":     ("3d_wait_lines",      "wait_lines.json",       "polyline"),
    "crosswalk":     ("3d_crosswalks",      "crosswalks.json",       "surface"),
    "road_marking":  ("3d_road_markings",   "road_markings.json",    "surface"),
    "pole":          ("3d_poles",           "poles.json",            "polyline_short"),
    # 磁盘文件名为 ``{clip_stem}.traffic_lights.json``(非 README 里的 3d_*.json)
    "traffic_light": ("3d_traffic_lights", "traffic_lights.json", "cuboid"),
    "traffic_sign":  ("3d_traffic_signs",  "traffic_signs.json",  "cuboid"),
}


def _load_json_labels(path: Path) -> list:
    """容错读取:JSON 顶层可能是 ``{labels: ...}`` 或 ``{<filename>: {labels: ...}}``。"""
    if not path.exists():
        return []
    try:
        data = json.loads(path.read_text(encoding="utf-8"))
    except Exception:
        return []
    if isinstance(data, dict):
        if isinstance(data.get("labels"), list):
            return data["labels"]
        for v in data.values():
            if isinstance(v, dict) and isinstance(v.get("labels"), list):
                return v["labels"]
    return []


def _verts_to_array(verts) -> np.ndarray:
    """vertices 兼容 ``list[[x,y,z]]`` 与 ``list[{x,y,z}]`` 两种格式。"""
    if not verts:
        return np.zeros((0, 3), dtype=np.float32)
    out: list[list[float]] = []
    for v in verts:
        if isinstance(v, dict):
            out.append([float(v.get("x", 0.0)), float(v.get("y", 0.0)), float(v.get("z", 0.0))])
        elif isinstance(v, (list, tuple)) and len(v) >= 3:
            out.append([float(v[0]), float(v[1]), float(v[2])])
    return np.array(out, dtype=np.float32) if out else np.zeros((0, 3), dtype=np.float32)


def _split_polyline(verts: np.ndarray, seg_len: float) -> list[np.ndarray]:
    """按累计弧长把折线切成若干段。每段顶点数 >=2。"""
    if verts.shape[0] < 2:
        return []
    edges = np.linalg.norm(np.diff(verts, axis=0), axis=1)
    cum = np.concatenate([[0.0], np.cumsum(edges)])
    total = float(cum[-1])
    if total <= seg_len:
        return [verts]
    n = max(1, int(np.ceil(total / seg_len)))
    bounds = np.linspace(0.0, total, n + 1)
    chunks: list[np.ndarray] = []
    for i in range(n):
        lo, hi = bounds[i], bounds[i + 1]
        mask = (cum >= lo - 1e-6) & (cum <= hi + 1e-6)
        chunk = verts[mask]
        if chunk.shape[0] >= 2:
            chunks.append(chunk)
    return chunks


def _vertices_to_box(verts: np.ndarray) -> tuple[np.ndarray, np.ndarray, float] | None:
    """[N, 3] -> (center, lwh, yaw)。"""
    if verts.shape[0] < 2:
        return None
    center = verts.mean(0)
    centered_xy = verts[:, :2] - center[:2]
    if np.allclose(centered_xy, 0.0):
        yaw = 0.0
    else:
        cov = centered_xy.T @ centered_xy / max(verts.shape[0] - 1, 1)
        _, eigvecs = np.linalg.eigh(cov)
        principal = eigvecs[:, -1]
        yaw = float(np.arctan2(principal[1], principal[0]))
    c, s = float(np.cos(-yaw)), float(np.sin(-yaw))
    rot_xy = centered_xy @ np.array([[c, -s], [s, c]], dtype=np.float32).T
    l = float(rot_xy[:, 0].max() - rot_xy[:, 0].min())
    w = float(rot_xy[:, 1].max() - rot_xy[:, 1].min())
    h = float(verts[:, 2].max() - verts[:, 2].min())
    l = max(l, MIN_LWH[0])
    w = max(w, MIN_LWH[1])
    h = max(h, MIN_LWH[2])
    return center.astype(np.float32), np.array([l, w, h], dtype=np.float32), yaw


def _cuboid_to_box(corners: np.ndarray) -> tuple[np.ndarray, np.ndarray, float]:
    """8 角点 -> (center, lwh, yaw)。用 corner[0]→corner[1] 估计 yaw。"""
    center = corners.mean(0)
    edge = corners[1] - corners[0]
    yaw = float(np.arctan2(edge[1], edge[0]))
    c, s = float(np.cos(-yaw)), float(np.sin(-yaw))
    R = np.array([[c, -s, 0.0], [s, c, 0.0], [0.0, 0.0, 1.0]], dtype=np.float32)
    rot = (corners - center) @ R.T
    lwh = (rot.max(0) - rot.min(0)).astype(np.float32)
    lwh = np.maximum(lwh, np.array(MIN_LWH, dtype=np.float32))
    return center.astype(np.float32), lwh, yaw


def _build_object(
    center: np.ndarray,
    lwh: np.ndarray,
    yaw: float,
    cls_name: str,
    idx: int,
    sub_idx: int = 0,
) -> ObjectTrackInfo:
    T = np.eye(4, dtype=np.float32)
    c, s = float(np.cos(yaw)), float(np.sin(yaw))
    T[:3, :3] = np.array([[c, -s, 0.0], [s, c, 0.0], [0.0, 0.0, 1.0]], dtype=np.float32)
    T[:3, 3] = center
    return ObjectTrackInfo(
        tracking_id=f"hdmap_{cls_name}_{idx}_{sub_idx}",
        object_to_world=torch.from_numpy(T),
        lwh=torch.from_numpy(lwh),
        is_moving=False,
        object_type=cls_name,
    )


def parse_hdmap_clip(
    clip_label_dir: Path,
    segment_len: float = POLYLINE_SEGMENT_LEN,
    lane_segment_len: float = LANE_SEGMENT_LEN,
) -> list[ObjectTrackInfo]:
    """解析一个 clip 的 9 类 HDMap,展开为 world-frame ``ObjectTrackInfo`` 列表。"""
    out: list[ObjectTrackInfo] = []
    for cls_name, (subdir, json_name, kind) in HDMAP_SOURCES.items():
        try:
            path = resolve_clip_file(clip_label_dir, subdir, json_name)
        except FileNotFoundError:
            continue
        labels = _load_json_labels(path)
        for i, lbl in enumerate(labels):
            if not isinstance(lbl, dict):
                continue
            shape = lbl.get("labelData", {}).get("shape3d", {})
            if not isinstance(shape, dict):
                continue

            if kind == "cuboid":
                verts = shape.get("cuboid3d", {}).get("vertices", [])
                arr = _verts_to_array(verts)
                if arr.shape[0] != 8:
                    continue
                c, lwh, yaw = _cuboid_to_box(arr)
                out.append(_build_object(c, lwh, yaw, cls_name, i))

            elif kind == "surface":
                verts = shape.get("surface", {}).get("vertices", [])
                arr = _verts_to_array(verts)
                if arr.shape[0] < 3:
                    continue
                box = _vertices_to_box(arr)
                if box is not None:
                    out.append(_build_object(*box, cls_name, i))

            elif kind == "polyline":
                verts = shape.get("polyline3d", {}).get("vertices", [])
                arr = _verts_to_array(verts)
                if arr.shape[0] < 2:
                    continue
                for j, chunk in enumerate(_split_polyline(arr, segment_len)):
                    box = _vertices_to_box(chunk)
                    if box is not None:
                        out.append(_build_object(*box, cls_name, i, j))

            elif kind == "polyline_short":
                # 杆状物体不切分
                verts = shape.get("polyline3d", {}).get("vertices", [])
                arr = _verts_to_array(verts)
                if arr.shape[0] < 2:
                    continue
                box = _vertices_to_box(arr)
                if box is not None:
                    out.append(_build_object(*box, cls_name, i))

            elif kind == "lane_pair":
                pl_root = shape.get("polylines3d", {}).get("polylines", [])
                if not isinstance(pl_root, list) or len(pl_root) < 2:
                    continue
                left = _verts_to_array(
                    pl_root[0].get("vertices", []) if isinstance(pl_root[0], dict) else []
                )
                right = _verts_to_array(
                    pl_root[1].get("vertices", []) if isinstance(pl_root[1], dict) else []
                )
                if left.shape[0] == 0 and right.shape[0] == 0:
                    continue
                merged = np.concatenate([a for a in (left, right) if a.shape[0]], axis=0)
                if merged.shape[0] < 2:
                    continue
                for j, chunk in enumerate(_split_polyline(merged, lane_segment_len)):
                    box = _vertices_to_box(chunk)
                    if box is not None:
                        out.append(_build_object(*box, cls_name, i, j))

    return out