# LTtestMay10 — per-clip stride=1 30 fps test set 218 self-contained clips for pose / depth evaluation. Each clip is **41 frames at 30 fps stride=1** (1.37 s real time, 2.56 s when played at 16 fps), undistorted to a pinhole 832×480 model. All **6 surround cameras** are included; **DC depth is provided for the front camera only** (matching the original LongtailTest). Sourced from 126 KEEP UUIDs of NVIDIA's `PhysicalAI-Autonomous-Vehicles` dataset across chunks 234–237. The pipeline (download raw → ftheta undistort → DepthCrafter) is identical to the original LongtailTest, but applied at the native 30 fps cadence (no temporal downsampling). ## Layout ``` chunk_234.tar # all kept clips for chunk 234 (~1.5–2 GB each) chunk_235.tar chunk_236.tar chunk_237.tar manifest_clips.jsonl # 218 entries {chunk, uuid, clip_id, window_start, displacement_m} kept_clips.txt # 218 lines chunk\tuuid\tclip_id dropped_clips.jsonl # 34 entries (displacement < 2 m within 1.37 s) README.md ``` After extracting all four chunk tars: ``` chunk_NNN//clip_NNNNNN/ ├── front.mp4 # 41 frames, 832×480, h264 CRF 18, 30 fps ├── cross_left.mp4 # same spec ├── cross_right.mp4 ├── rear_left.mp4 ├── rear_right.mp4 ├── rear_tele.mp4 ├── front_depth.pt # {'depth_sequence': (41, 1, 512, 832) fp16, │ 'source_indices': [start..start+40]} ├── pose.pt # {'T_anchor_front': (11, 4, 4) world_from_cam in OpenCV, │ first anchor = identity} (FRONT camera), │ 'T_anchor_all': (6, 11, 4, 4) — same convention, one per view, │ ordered by sensor_order; T_anchor_all[0] == T_anchor_front, │ 'sensor_order': list of 6 camera names} └── meta.pt # K (front, 3,3), K_all (6, 3, 3) target pinhole intrinsics, E_rig_front (4,4), E_all (6, 4, 4) sensor extrinsics, sensor_order [6 names], view_files [6 mp4 names], frame_indices, timestamps_us, anchor_clip_idx, anchor_src_idx, anchor_t_us, src_fps=30, stride=1, window_start, chunk, uuid, clip_id, anchor_displacement_m ``` ## Per-UUID windows Two 41-frame windows per UUID at 30 fps source frames: | clip_id | window_start | end (exclusive) | real time start | |----------------|--------------|-----------------|-----------------| | `clip_000000` | 0 | 41 | 0.00 s | | `clip_000001` | 300 | 341 | 10.00 s | The two windows are 10 s apart in real time, providing diverse trajectories per UUID. ## Pose anchors `T_anchor_front` has 11 anchors at clip-frame indices 0, 4, 8, …, 40 (i.e. every 4th clip frame). At stride=1 from 30 fps, this equals real-time spacing ≈ 0.133 s, total span 1.37 s. Anchors are `world_from_cam` in OpenCV camera frame, with the first anchor forced to identity: ``` T_anchor_front[i] = inv(T_world_front[0]) @ T_world_front[i] T_world_front(t) = T_world_rig(t) @ E_rig_front ``` `T_world_rig(t)` is interpolated from `egomotion.offline.parquet` via SLERP (rotation) + linear (translation) at the 11 anchor camera timestamps. `E_rig_front` comes from `sensor_extrinsics.offline.parquet`. `meta.K` is the target pinhole intrinsics (constant across UUIDs): ``` fx = 400.0, fy = 411.0, cx = 415.0, cy = 338.0 # output 832×480 ``` ## Motion filter Clips with `‖T_anchor_front[10][:3,3] − T_anchor_front[0][:3,3]‖ < 2.0 m` are **excluded from the tarballs** (not present at all). The dropped 34 clip ids are listed in `dropped_clips.jsonl` for transparency. 124 of the 126 UUIDs have at least one clip that passes the filter; 2 UUIDs (in chunk 236) have both clips dropped (parked / heavy traffic). ## Counts | chunk | UUIDs | clips total | kept (≥ 2 m) | dropped | |---|---|---|---|---| | 234 | 30 | 60 | (see manifest) | (see dropped_clips) | | 235 | 35 | 70 | (see manifest) | | | 236 | 34 | 68 | (see manifest) | | | 237 | 27 | 54 | (see manifest) | | | **total** | **126** | **252** | **218** | **34** | ## Loading example ```python from huggingface_hub import snapshot_download import torch, av snapshot_download("luuuulinnnn/LTtestMay10", repo_type="dataset", local_dir="LTtestMay10", allow_patterns=["chunk_234.tar","kept_clips.txt"]) # extract chunk tars locally, then: clip_dir = "LTtestMay10/chunk_234//clip_000000" pose = torch.load(f"{clip_dir}/pose.pt")["T_anchor_front"] # (11, 4, 4) depth = torch.load(f"{clip_dir}/front_depth.pt")["depth_sequence"] # (41, 1, 512, 832) fp16 meta = torch.load(f"{clip_dir}/meta.pt") # K, E_rig_front, ... container = av.open(f"{clip_dir}/front.mp4") ``` ## Provenance - Raw video: `nvidia/PhysicalAI-Autonomous-Vehicles` chunks 0234–0237 (camera_front_wide_120fov, 30 fps, 1920×1080 ftheta) - KEEP UUIDs: filter on Qwen2.5-VL-7B captions (sunny / bright_day / clear); 126 UUIDs across 4 chunks - ftheta undistort: own reproduction of the original ray_wan pipeline (math verified pixel-equivalent within mpeg4 noise floor) - DepthCrafter: tencent/DepthCrafter, max_res=1024, 5 inference steps, window_size=110, overlap=25, run on 30 fps undistorted videos - Pose GT: SLERP+linear interpolation of `egomotion.offline.parquet` at per-clip anchor timestamps; mean translation diff vs original LongtailTest GT is ~1.4 m on ~80 m trajectories (≈ 1.7 %, within egomotion sub-frame timestamp accuracy)