| """ReactVideoDataset — load the React multi-task video-format release. |
| |
| Layout consumed (per task): |
| data/<task>/videos/<date>/episode_NNN/{view_left,view_middle,view_right, |
| tactile_left,tactile_right}.mp4 |
| data/<task>/meta/<date>/episode_NNN.parquet # per-frame pose/scalar |
| data/<task>/segments.json # clean-segment index |
| data/<task>/bad_frames.json # quality intervals |
| data/<task>/episodes.jsonl # per-episode summary |
| data/<task>/calibration/ # extrinsics (May-12 / June-26) |
| |
| Decoded frames are returned as RGB uint8 (H, W, 3) — standard video-decoder |
| convention. (cv2 users: this is already RGB, do NOT re-swap.) |
| |
| Two sampling modes: |
| mode="segment": iterate clean segments from segments.json (no bad frames |
| by construction). RECOMMENDED. |
| mode="window": sliding windows over whole episodes; windows overlapping |
| bad_frames.json intervals are skipped when skip_bad=True. |
| |
| Decoder backend: PyAV (`av`) by default; falls back to OpenCV. Install |
| `decord` for fastest random access. |
| |
| Example |
| ------- |
| ds = ReactVideoDataset("data/motherboard", window_length=16, mode="segment") |
| sample = ds[0] |
| # sample["view_middle"]: (T, H, W, 3) uint8 RGB |
| # sample["sensor_left_pose"]: (T, 7) float32 |
| """ |
| from __future__ import annotations |
|
|
| import json |
| from pathlib import Path |
|
|
| import numpy as np |
| import pyarrow.parquet as pq |
|
|
| try: |
| import av |
| _BACKEND = "av" |
| except Exception: |
| import cv2 |
| _BACKEND = "cv2" |
|
|
| VIEW_STREAMS = ("view_left", "view_middle", "view_right") |
| TACTILE_STREAMS = ("tactile_left", "tactile_right") |
| ALL_STREAMS = VIEW_STREAMS + TACTILE_STREAMS |
| DEPTH_STREAMS = ("depth_left", "depth_middle", "depth_right") |
|
|
|
|
| def _decode_frames(mp4_path: Path, frame_indices, depth=False): |
| """Return (N, H, W, 3) uint8 RGB, or (N, H, W) uint16 mm if depth=True.""" |
| want = list(frame_indices) |
| fmt = None if depth else "rgb24" |
| if _BACKEND == "av" or depth: |
| container = av.open(str(mp4_path)) |
| stream = container.streams.video[0] |
| out, wantset, got = {}, set(want), 0 |
| for fi, frame in enumerate(container.decode(stream)): |
| if fi in wantset: |
| a = frame.to_ndarray(format=fmt) if fmt else frame.to_ndarray() |
| out[fi] = a |
| got += 1 |
| if got == len(wantset): |
| break |
| container.close() |
| return np.stack([out[i] for i in want]) |
| else: |
| cap = cv2.VideoCapture(str(mp4_path)) |
| frames = [] |
| for i in want: |
| cap.set(cv2.CAP_PROP_POS_FRAMES, i) |
| ok, fr = cap.read() |
| frames.append(fr[..., ::-1] if ok else np.zeros((480, 640, 3), np.uint8)) |
| cap.release() |
| return np.stack(frames) |
|
|
|
|
| class ReactVideoDataset: |
| def __init__(self, task_root, window_length=16, stride=1, window_step=None, |
| mode="segment", streams=ALL_STREAMS, skip_bad=True, |
| which_sensors="any", load_depth=False, tactile_latency=0): |
| self.root = Path(task_root) |
| self.W = window_length |
| self.stride = stride |
| self.step = window_step or window_length |
| self.mode = mode |
| self.streams = tuple(streams) |
| self.skip_bad = skip_bad |
| self.which = which_sensors |
| |
| self.load_depth = load_depth and (self.root / "depth").is_dir() |
| |
| |
| |
| |
| |
| |
| self.tactile_latency = int(tactile_latency) |
| self._TACT = ("tactile_left", "tactile_right") |
| self._TACT_COLS = ("tactile_left_intensity", "tactile_right_intensity", |
| "tactile_left_mixed", "tactile_right_mixed") |
|
|
| self.segments = json.loads((self.root / "segments.json").read_text())["segments"] |
| self.bad = json.loads((self.root / "bad_frames.json").read_text())["episodes"] |
| self.index = self._build_index() |
|
|
| def _video_dir(self, ep_key): |
| date, ep = ep_key.split("/") |
| return self.root / "videos" / date / ep |
|
|
| def _parquet(self, ep_key): |
| date, ep = ep_key.split("/") |
| return self.root / "meta" / date / f"{ep}.parquet" |
|
|
| def _bad_mask(self, ep_key, T): |
| m = np.zeros(T, bool) |
| e = self.bad.get(ep_key, {}) |
| for k in ("intensity_spikes", "pose_teleports_L", "pose_teleports_R", |
| "ot_loss_L", "ot_loss_R"): |
| for a, b in e.get(k, []): |
| m[max(0, a):min(T, b + 1)] = True |
| return m |
|
|
| def _build_index(self): |
| items = [] |
| span = (self.W - 1) * self.stride + 1 |
| lat = self.tactile_latency |
| if self.mode == "segment": |
| for s in self.segments: |
| ek, a, b = s["source_episode"], s["frame_range"][0], s["frame_range"][1] |
| start = a |
| while start + span - 1 + lat <= b: |
| items.append((ek, start)) |
| start += self.step |
| else: |
| eps = sorted({s["source_episode"] for s in self.segments}) |
| for ek in eps: |
| T = self.bad.get(ek, {}).get("n_frames", 0) |
| bad = self._bad_mask(ek, T) if self.skip_bad else np.zeros(T, bool) |
| start = 0 |
| while start + span - 1 + lat < T: |
| idx = range(start, start + span, self.stride) |
| if not (self.skip_bad and bad[list(idx)].any()): |
| items.append((ek, start)) |
| start += self.step |
| return items |
|
|
| def __len__(self): |
| return len(self.index) |
|
|
| def __getitem__(self, i): |
| ek, start = self.index[i] |
| lat = self.tactile_latency |
| idx = list(range(start, start + (self.W - 1) * self.stride + 1, self.stride)) |
| idx_tac = [r + lat for r in idx] |
| vd = self._video_dir(ek) |
| out = {} |
| for s in self.streams: |
| read_idx = idx_tac if s in self._TACT else idx |
| out[s] = _decode_frames(vd / f"{s}.mp4", read_idx) |
| if self.load_depth: |
| date, ep = ek.split("/") |
| dd = self.root / "depth" / date / ep |
| for s in DEPTH_STREAMS: |
| p = dd / f"{s}.mkv" |
| if p.exists(): |
| out[s] = _decode_frames(p, idx, depth=True) |
| |
| lo, hi = start, idx_tac[-1] |
| tbl = pq.read_table(self._parquet(ek)).slice(lo, hi - lo + 1) |
| v_rows = [r - lo for r in idx] |
| t_rows = [r - lo for r in idx_tac] |
| for c in ("sensor_left_pose", "sensor_right_pose"): |
| out[c] = np.array(tbl.column(c).to_pylist(), np.float32)[v_rows] |
| if "object_pose" in tbl.column_names: |
| out["object_pose"] = np.array(tbl.column("object_pose").to_pylist(), np.float32)[v_rows] |
| |
| for c in self._TACT_COLS: |
| out[c] = np.array(tbl.column(c).to_pylist(), np.float32)[t_rows] |
| out["episode"] = ek |
| out["frame_start"] = start |
| out["tactile_latency"] = lat |
| return out |
|
|
|
|
| if __name__ == "__main__": |
| import sys |
| root = sys.argv[1] if len(sys.argv) > 1 else "data/motherboard" |
| ds = ReactVideoDataset(root, window_length=8, mode="segment") |
| print(f"backend={_BACKEND} {len(ds)} windows") |
| s = ds[0] |
| for k, v in s.items(): |
| shape = getattr(v, "shape", v) |
| print(f" {k}: {shape}") |
|
|