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"""Cosmos-Drive-Dreams 数据集加载器(真实实现)。

期待目录结构(从 NVIDIA 提供的 .tar 解压):

    data_root/
      synthetic/single_view/
        generation/{clip_id}_{chunk_id}_{weather}.mp4   # 121 帧合成视频
      labels/{clip_id}/
        vehicle_pose/000000.vehicle_pose.npy ...        # 30 FPS, FLU
        pose/000000.pose.{camera}.npy                   # 30 FPS, OpenCV
        ftheta_intrinsic/ftheta_intrinsic.{camera}.npy
        all_object_info/000000.all_object_info.json
        lidar_raw/000000.lidar_raw.npz                  # 10 FPS

每段 clip 提供:
- 视频按 `_chunk_id` 分块。chunk_id=0 对应 label idx 0..120;chunk_id=1 对应 label idx 121..241。
- 每个样本:8 帧不重叠窗口 t∈[7, 96],输入 8 帧(t-7..t)+ 未来 24 帧标签。
"""

from __future__ import annotations

import json
from dataclasses import dataclass
from pathlib import Path
from typing import Sequence

import cv2
import numpy as np
import torch
from torch.utils.data import Dataset

from ..modules.normalization import symlog
from ..modules.rays import FThetaCamera
from .label_paths import resolve_clip_file
from .hdmap import parse_hdmap_clip
from .se3 import matrix_to_6d
from .targets import (
    ObjectTrackInfo,
    build_detection_targets,
    build_ego_future_target,
)
from .transforms import DINOV3_MEAN, DINOV3_STD


# 数据集 README 列出的对象类型;动态类用于 is_dynamic + 未来轨迹监督。
DEFAULT_DYNAMIC_CLASSES = [
    "Automobile",
    "Heavy_truck",
    "Bus",
    "Train_or_tram_car",
    "Trolley_bus",
    "Other_vehicle",
    "Trailer",
    "Person",
    "Stroller",
    "Rider",
    "Animal",
    "Protruding_object",
]

# 结构化场景类(与 ``hdmap.py`` 的 9 个 HDMAP_SOURCES key 一一对应)。
DEFAULT_STRUCTURED_CLASSES = [
    "lane",
    "laneline",
    "road_boundary",
    "wait_line",
    "crosswalk",
    "road_marking",
    "pole",
    "traffic_light",
    "traffic_sign",
]


@dataclass
class ClipSample:
    """clip 索引项。"""

    clip_id: str
    chunk_id: int
    weather: str
    video_path: Path
    labels_dir: Path
    anchor_t: int  # 当前帧(含),范围 [7, 96]
    chunk_offset: int  # 当前 chunk 在标签里的起始 idx(0 或 121)


def build_clip_index(
    data_root: str | Path,
    weathers: Sequence[str] = ("Sunny",),
    chunk_ids: Sequence[int] = (0, 1),
    camera_name: str = "camera_front_wide_120fov",
    stride: int = 8,
    anchor_min: int = 7,
    anchor_max: int = 96,
    max_clips: int | None = None,
) -> list[ClipSample]:
    """枚举所有可用 (clip, chunk, weather, anchor_t) 样本。

    锚点 ``t`` 在 chunk 内为局部索引,对应视频帧 ``t``,对应标签帧
    ``chunk_offset + t``(chunk_offset = chunk_id * 121)。
    """
    root = Path(data_root)
    syn_dir = root / "synthetic" / "single_view" / "generation"
    labels_dir = root / "labels"

    samples: list[ClipSample] = []
    if not syn_dir.exists():
        return samples

    for video_path in sorted(syn_dir.glob("*.mp4")):
        # 文件名形如 {clip_id}_{chunk_id}_{weather}.mp4
        # clip_id 可能含下划线(UUID 或 timestamp 形式),所以从右侧解析
        stem = video_path.stem
        parts = stem.rsplit("_", 2)
        if len(parts) != 3:
            continue
        clip_id, chunk_str, weather = parts
        try:
            chunk_id = int(chunk_str)
        except ValueError:
            continue
        if chunk_id not in chunk_ids or weather not in weathers:
            continue

        clip_label_dir = labels_dir / clip_id
        if not clip_label_dir.exists():
            continue

        chunk_offset = chunk_id * 121
        for t in range(anchor_min, anchor_max + 1, stride):
            samples.append(
                ClipSample(
                    clip_id=clip_id,
                    chunk_id=chunk_id,
                    weather=weather,
                    video_path=video_path,
                    labels_dir=clip_label_dir,
                    anchor_t=t,
                    chunk_offset=chunk_offset,
                )
            )
        if max_clips is not None and len({s.clip_id for s in samples}) >= max_clips:
            break

    return samples


def _load_video_frames(
    video_path: Path,
    frame_indices: Sequence[int],
    target_h: int,
    target_w: int,
) -> torch.Tensor:
    """从 .mp4 中读取指定帧序列,调整大小并按 ``[T, 3, H, W]`` 返回 ``float32 in [0, 1]``。"""
    cap = cv2.VideoCapture(str(video_path))
    if not cap.isOpened():
        raise FileNotFoundError(f"无法打开视频: {video_path}")
    frames = []
    for idx in frame_indices:
        cap.set(cv2.CAP_PROP_POS_FRAMES, idx)
        ok, bgr = cap.read()
        if not ok:
            cap.release()
            raise RuntimeError(f"读取帧 {idx} 失败: {video_path}")
        rgb = cv2.cvtColor(bgr, cv2.COLOR_BGR2RGB)
        rgb = cv2.resize(rgb, (target_w, target_h * 2), interpolation=cv2.INTER_AREA)
        # 裁去上半部分(天空)后高度变为 target_h
        rgb = rgb[target_h:, :, :]
        rgb = rgb.astype(np.float32) / 255.0
        frames.append(torch.from_numpy(rgb).permute(2, 0, 1))  # [3, H, W]
    cap.release()
    return torch.stack(frames, dim=0)


def _load_npy(path: Path) -> np.ndarray:
    return np.load(path, allow_pickle=False)


def _load_object_info(path: Path) -> list[ObjectTrackInfo]:
    """解析单帧 all_object_info JSON。"""
    if not path.exists():
        return []
    data = json.loads(path.read_text())
    out = []
    for tid, info in data.items():
        T = torch.tensor(info["object_to_world"], dtype=torch.float32)
        lwh = torch.tensor(info["object_lwh"], dtype=torch.float32)
        out.append(
            ObjectTrackInfo(
                tracking_id=tid,
                object_to_world=T,
                lwh=lwh,
                is_moving=bool(info.get("object_is_moving", False)),
                object_type=str(info.get("object_type", "")),
            )
        )
    return out


def _load_lidar_self_frame(
    labels_dir: Path,
    label_idx: int,
    vehicle_pose: torch.Tensor,
    max_history: int = 3,
) -> torch.Tensor | None:
    """读取与 ``label_idx`` 时间最近的 LIDAR 帧并把 xyz 转到当前 ego self 系。

    LIDAR 是 10 FPS(每 3 个相机帧 1 个 LIDAR 帧),数据集存储 ``000000``、
    ``000003``、``000006`` 等步长 3 的索引。我们向下取整最近的一帧。
    """
    lidar_idx = (label_idx // 3) * 3
    search_order = [lidar_idx - back * 3 for back in range(max_history + 1) if lidar_idx - back * 3 >= 0]
    p: Path | None = None
    for idx_try in search_order:
        try:
            p = resolve_clip_file(labels_dir, "lidar_raw", f"{idx_try:06d}.lidar_raw.npz")
            break
        except FileNotFoundError:
            continue
    if p is None:
        return None
    arr = np.load(p, allow_pickle=False)
    xyz_lidar = arr["xyz"]  # [N, 3] in lidar frame
    lidar_to_world = arr["lidar_to_world"]  # [4, 4]
    # 转到 world 后再转 self
    pts_w = (lidar_to_world[:3, :3] @ xyz_lidar.T).T + lidar_to_world[:3, 3]
    inv_pose = torch.linalg.inv(vehicle_pose)
    pts_w_t = torch.from_numpy(pts_w).float()
    pts_self = (inv_pose[:3, :3] @ pts_w_t.T).T + inv_pose[:3, 3]
    return pts_self


class CosmosDriveDreamsDataset(Dataset):
    """端到端样本:8 帧图像 + ego/intr/extr + 检测 + 自车未来 + 对象未来。"""

    def __init__(
        self,
        data_root: str | Path,
        samples: list[ClipSample] | None = None,
        weathers: Sequence[str] = ("Sunny",),
        camera_name: str = "camera_front_wide_120fov",
        image_h: int = 384,
        image_w: int = 1024,
        num_history: int = 8,
        future_horizon: int = 24,
        max_distance_m: float = 48.0,
        occlusion_tol: float = 0.5,
        dynamic_classes: Sequence[str] = DEFAULT_DYNAMIC_CLASSES,
        structured_classes: Sequence[str] = DEFAULT_STRUCTURED_CLASSES,
        do_normalize: bool = True,
        use_lidar_occlusion: bool = True,
        use_hdmap: bool = True,
    ) -> None:
        super().__init__()
        self.data_root = Path(data_root)
        self.samples = samples if samples is not None else build_clip_index(
            data_root, weathers=weathers, camera_name=camera_name
        )
        self.camera_name = camera_name
        self.image_h = image_h
        self.image_w = image_w
        self.num_history = num_history
        self.future_horizon = future_horizon
        self.max_distance_m = max_distance_m
        self.occlusion_tol = occlusion_tol
        self.dynamic_classes = list(dynamic_classes)
        self.structured_classes = list(structured_classes)
        self.do_normalize = do_normalize
        self.use_lidar_occlusion = use_lidar_occlusion
        self.use_hdmap = use_hdmap
        # HDMap 是 per-clip 静态对象,缓存避免每个 anchor_t 都重新解析
        self._hdmap_cache: dict[str, list[ObjectTrackInfo]] = {}
        self._hdmap_cache_max = 32

    def __len__(self) -> int:
        return len(self.samples)

    def _load_intrinsic(self, sample: ClipSample) -> torch.Tensor:
        p = resolve_clip_file(
            sample.labels_dir,
            "ftheta_intrinsic",
            f"ftheta_intrinsic.{self.camera_name}.npy",
        )
        return torch.from_numpy(_load_npy(p)).float()

    def _load_pose_camera(self, sample: ClipSample, label_idx: int) -> torch.Tensor:
        p = resolve_clip_file(
            sample.labels_dir,
            "pose",
            f"{label_idx:06d}.pose.{self.camera_name}.npy",
        )
        return torch.from_numpy(_load_npy(p)).float()

    def _load_pose_vehicle(self, sample: ClipSample, label_idx: int) -> torch.Tensor:
        p = resolve_clip_file(
            sample.labels_dir,
            "vehicle_pose",
            f"{label_idx:06d}.vehicle_pose.npy",
        )
        return torch.from_numpy(_load_npy(p)).float()

    def _load_hdmap_static(self, clip_dir: Path) -> list[ObjectTrackInfo]:
        if not self.use_hdmap:
            return []
        key = str(clip_dir)
        cached = self._hdmap_cache.get(key)
        if cached is not None:
            return cached
        objs = parse_hdmap_clip(clip_dir)
        if len(self._hdmap_cache) >= self._hdmap_cache_max:
            self._hdmap_cache.pop(next(iter(self._hdmap_cache)))
        self._hdmap_cache[key] = objs
        return objs

    def _load_objects(self, sample: ClipSample, label_idx: int) -> list[ObjectTrackInfo]:
        p = resolve_clip_file(
            sample.labels_dir,
            "all_object_info",
            f"{label_idx:06d}.all_object_info.json",
        )
        dynamic = _load_object_info(p)
        # HDMap 是 clip 级静态标签:t 与 t+k 帧都拿同一份(tracking_id 相同),
        # 这样 ``build_detection_targets`` 的未来轨迹分支会自动得到 ~0 残差,
        # 同时由 ``is_dynamic=0`` 在损失里被 mask 掉,不进 trajectory NLL。
        return dynamic + self._load_hdmap_static(sample.labels_dir)

    def __getitem__(self, idx: int) -> dict:
        s = self.samples[idx]
        # 视频帧索引(chunk 内 0-based)
        t = s.anchor_t
        history_frames = list(range(t - self.num_history + 1, t + 1))
        # 标签索引:chunk_offset + chunk-local idx
        history_label_idx = [s.chunk_offset + f for f in history_frames]
        future_label_idx = [s.chunk_offset + t + 1 + k for k in range(self.future_horizon)]

        # === 1) 加载图像 ===
        # 注意:videl 已经裁过上半(数据生成时仍 1920x1080 等原始分辨率);
        # 这里在 _load_video_frames 内同时做 resize 与 top-half 裁剪。
        images = _load_video_frames(s.video_path, history_frames, self.image_h, self.image_w)
        # [T, 3, H, W],[0, 1]
        if self.do_normalize:
            images = (images - DINOV3_MEAN) / DINOV3_STD

        # === 2) 加载内参 / 外参 ===
        intr_vec = self._load_intrinsic(s)  # [14]

        # 当前帧的 cam_to_world 与 vehicle_to_world,得到 cam_to_vehicle
        pose_cam_world = self._load_pose_camera(s, s.chunk_offset + t)
        pose_veh_world = self._load_pose_vehicle(s, s.chunk_offset + t)
        # cam_to_vehicle = inv(vehicle_to_world) @ cam_to_world
        inv_veh = torch.linalg.inv(pose_veh_world)
        cam2veh = inv_veh @ pose_cam_world
        extr_6d = matrix_to_6d(cam2veh)  # [6]

        # === 3) 历史 8 帧 ego pose(vehicle 6D)===
        ego_6d = []
        for li in history_label_idx:
            T_vw = self._load_pose_vehicle(s, li)
            ego_6d.append(matrix_to_6d(T_vw))
        ego_6d = torch.stack(ego_6d, dim=0)  # [8, 6]

        # === 4) 检测 / 未来轨迹标签 ===
        # objs_t / objs_future = 动态 all_object_info ∪ HDMap 静态对象。
        objs_t = self._load_objects(s, s.chunk_offset + t)
        objs_future = [self._load_objects(s, li) for li in future_label_idx]
        veh_pose_future = []
        for li in future_label_idx:
            try:
                veh_pose_future.append(self._load_pose_vehicle(s, li))
            except FileNotFoundError:
                break

        cam = FThetaCamera.from_vector(intr_vec)
        lidar_self = None
        if self.use_lidar_occlusion:
            try:
                lidar_self = _load_lidar_self_frame(
                    s.labels_dir,
                    s.chunk_offset + t,
                    pose_veh_world,
                )
            except Exception:
                lidar_self = None

        det_targets = build_detection_targets(
            objects_t=objs_t,
            objects_future=objs_future,
            vehicle_pose_t=pose_veh_world,
            vehicle_pose_future=veh_pose_future,
            cam_intrinsic=cam,
            cam2vehicle=cam2veh,
            image_h=self.image_h,
            image_w=self.image_w,
            max_distance_m=self.max_distance_m,
            occlusion_depth_tolerance=self.occlusion_tol,
            lidar_points_self=lidar_self,
            dynamic_classes=self.dynamic_classes,
            structured_classes=self.structured_classes,
            future_horizon=self.future_horizon,
        )

        ego_future, ego_future_valid = build_ego_future_target(
            pose_veh_world, veh_pose_future, horizon=self.future_horizon
        )

        sample_out = {
            "images": images,
            "ego_6d": ego_6d,
            "intr_vec": intr_vec,
            "extr_6d": extr_6d,
            "ego_future": ego_future,
            "ego_future_valid": ego_future_valid,
            "targets": det_targets,
            "meta": {
                "clip_id": s.clip_id,
                "chunk_id": s.chunk_id,
                "weather": s.weather,
                "anchor_t": s.anchor_t,
            },
        }
        return sample_out


def collate_samples(batch: list[dict]) -> dict:
    """自定义 collate:对图像 / ego / intr / extr / ego_future 直接 stack;
    targets 列表保留为 list(便于匈牙利匹配处理变长 N);
    meta 也保留为 list。"""
    out = {
        "images": torch.stack([b["images"] for b in batch], dim=0),
        "ego_6d": torch.stack([b["ego_6d"] for b in batch], dim=0),
        "intr_vec": torch.stack([b["intr_vec"] for b in batch], dim=0),
        "extr_6d": torch.stack([b["extr_6d"] for b in batch], dim=0),
        "ego_future": torch.stack([b["ego_future"] for b in batch], dim=0),
        "ego_future_valid": torch.stack([b["ego_future_valid"] for b in batch], dim=0),
        "targets": [b["targets"] for b in batch],
        "meta": [b["meta"] for b in batch],
    }
    return out