| # React data curation pipeline |
|
|
|
|
| > **Note (2026-05-18 update):** The one-shot scripts referenced below have been moved out of /tmp/ and into a versioned home at MultimodalData/twm/scripts/. All references in this document have been updated. The previous /tmp/ copies are stale. |
|
|
| The procedure below is what runs between a fresh recording session and a HF |
| push. Follow it in order; each stage produces a checkable artifact, so a bad |
| stage doesn't silently propagate downstream. |
|
|
| Source files referenced. The first five live in the recording-machine |
| `MultimodalData/twm/` checkout. The rest are the curation scripts produced |
| for this dataset; they currently live in `MultimodalData/twm/scripts/` (development scratchpad) |
| and should be moved into `MultimodalData/twm/twm/scripts/` so they're |
| versioned alongside the rest of the codebase. |
|
|
| | Script | Current location | Notes | |
| |---|---|---| |
| | `viz.py` | `MultimodalData/twm/` | **Single source of truth for visualization.** Owns the 1280×480 panel builder (left → middle → right cam ordering), projection overlay, OptiTrack helpers, calibration loading, adaptive-shrink GIF encoder. Every other visualization script in the repo imports from here. | |
| | `data_collection.py` | `MultimodalData/twm/` | Recording loop. `make_preview` is now a re-export of `twm.viz.build_preview_panel`. | |
| | `compress_h5.py` | `MultimodalData/twm/` | BLOSC → GZIP+shuffle. | |
| | `visualize.py` | `MultimodalData/twm/` | Interactive replay viewer / MP4 export. Projection overlay on by default, `--no_projection` to disable. Delegates panel + overlay to `twm.viz`. | |
| | `twm.contact_index` | `MultimodalData/twm/twm/` | Tactile contact metrics → `.pt` files. | |
| | `make_episode_gifs_v3.py` | `MultimodalData/twm/scripts/` | Per-episode HF preview GIFs (canonical viewer layout). | |
| | `freeze_diagnose.py` | `MultimodalData/twm/scripts/` | Augmented freeze detector: cross-modal motion + frame-duplicate + OT-gap + rotation/translation teleport. Classifies each freeze into `pipeline_stall` / `ot_dropout` / `ot_teleport` / `real_still`. | |
| | `inspect_freezes_v3.py` | `MultimodalData/twm/scripts/` | Helper layer used by `freeze_diagnose.py` — schedules clips per freeze event, renders them via `twm.viz`. | |
| | `freeze_cut_report.py` | `MultimodalData/twm/scripts/` | Per-threshold tally of frozen-pose frames (no clip rendering). | |
|
|
| The pipeline assumes the standard layout: |
|
|
| ``` |
| /media/yxma/Disk1/twm/ |
| ├── data/<task>/<date>/episode_*.h5 # raw H5 (BLOSC) |
| ├── processed/<mode>/<task>/<date>/episode_*.pt # contact-indexed .pt |
| └── figures/ |
| ├── dataset_figures/ # summary plots + JSONs |
| └── episode_previews/<task>/<date>/ # one GIF per episode |
| ``` |
|
|
| `<date>` is `YYYY-MM-DD`; `<task>` is e.g. `motherboard`. |
|
|
| --- |
|
|
| ## Stage 0 — Recording |
|
|
| Use `data_collection.py`. Confirm before you stop the run: |
| - All three RealSense cams are streaming (preview window shows three rows). |
| - Both GelSight feeds are alive. |
| - All three OptiTrack rigid bodies (left, right, work-piece) are tracked |
| for the whole take. If a body's pose stops updating mid-run, the |
| recorder will silently hold the last sample → this is the failure mode |
| detected in Stage 5C. Re-aim the cameras or re-seat the markers before |
| starting a long take. |
| - Audible buffer-drop warnings are zero in the last 30 s of the session. |
|
|
| Output: `data/<task>/<date>/episode_*.h5` (BLOSC-compressed). |
|
|
| --- |
|
|
| ## Stage 1 — Integrity check |
|
|
| For every new H5, confirm it opens and that frame counts agree across |
| modalities. The fast version: |
|
|
| ```bash |
| python - <<'PY' |
| import h5py, hdf5plugin, sys |
| from pathlib import Path |
| ROOT = Path("/media/yxma/Disk1/twm/data/motherboard/<date>") |
| for p in sorted(ROOT.glob("episode_*.h5")): |
| try: |
| f = h5py.File(p, "r") |
| T = f["realsense/cam0/color"].shape[0] |
| for k in ("realsense/cam1/color", "realsense/cam2/color", |
| "gelsight/left/frames", "gelsight/right/frames"): |
| assert f[k].shape[0] == T, (p, k, f[k].shape[0], T) |
| f.close() |
| print(f"OK {p.name} T={T}") |
| except Exception as e: |
| print(f"BAD {p.name} {e}") |
| p.rename(p.with_suffix(p.suffix + ".corrupt")) |
| PY |
| ``` |
|
|
| Anything that fails to open is renamed `*.h5.corrupt` and excluded from the |
| rest of the pipeline. |
|
|
| --- |
|
|
| ## Stage 2 — Compression |
|
|
| BLOSC LZ4 is fast for recording but needs `hdf5plugin` at read time. Convert |
| to GZIP+shuffle for portability and ~30–50 % size savings: |
|
|
| ```bash |
| python -m twm.compress_h5 \ |
| --in_dir /media/yxma/Disk1/twm/data/motherboard/<date> \ |
| --in_place |
| ``` |
|
|
| The script clamps chunk shapes when datasets are shorter than the default |
| chunk (relevant for short test recordings). Re-run integrity check after. |
|
|
| --- |
|
|
| ## Stage 3 — Visual QA preview MP4 (per episode) |
|
|
| ```bash |
| # Projection overlay is on by default; the default --cam_calib list already |
| # includes all three cameras. |
| python -m twm.visualize \ |
| /media/yxma/Disk1/twm/data/motherboard/<date> \ |
| --save_videos |
| |
| # Same but no overlay (faster, useful for raw-stream sanity checks): |
| python -m twm.visualize \ |
| /media/yxma/Disk1/twm/data/motherboard/<date> \ |
| --save_videos --no_projection |
| ``` |
|
|
| These MP4s are for the operator only — scrub each one and flag: |
| - partial occlusions or out-of-frame moments, |
| - visible OT dropouts (the projection dot stays still while the hand moves), |
| - color/exposure problems, |
| - per-date "active sensors" (i.e. did you only use one side?). |
|
|
| Write findings into `tasks.json:per_date_notes.<date>`. |
|
|
| --- |
|
|
| ## Stage 4 — Contact indexing → `.pt` |
|
|
| Re-run for the new date: |
|
|
| ```bash |
| python -m twm.contact_index \ |
| --in_root /media/yxma/Disk1/twm/data/motherboard/<date> \ |
| --out_root /media/yxma/Disk1/twm/processed/mode1_v1/motherboard/<date> |
| ``` |
|
|
| This downsamples cam0 to 128×128, builds the three contact metrics per side |
| (intensity / area / mixed), and stores reference-frame metadata in |
| `_contact_meta`. Reference strategy is `p01` (the 1st-percentile of |
| intensity over the whole episode), which is robust against early-frame |
| calibration drift. |
|
|
| Sanity check: |
|
|
| ```bash |
| python - <<'PY' |
| import torch |
| p = "/media/yxma/Disk1/twm/processed/mode1_v1/motherboard/<date>/episode_006.pt" |
| ep = torch.load(p, weights_only=False) |
| print(list(ep.keys())) |
| print("T:", ep["view"].shape[0]) |
| print("ref drift L/R:", ep["_contact_meta"]["drift_left"], ep["_contact_meta"]["drift_right"]) |
| PY |
| ``` |
|
|
| If either drift > 5.0 the gel surface moved significantly between the |
| reference frame and the rest of the episode — flag the episode. |
|
|
| --- |
|
|
| ## Stage 5 — Automated failure-mode detection |
|
|
| Three failure modes are detected from the new `.pt` files and logged to |
| `figures/dataset_figures/bad_frames.json` + summarised in |
| `data_quality_breakdown.json`. |
|
|
| ### 5A. Tactile intensity spikes (LED flicker) |
|
|
| A frame whose tactile intensity exceeds `p999 + 30 (uint8)` is treated as |
| a momentary LED dropout. Stored as `intensity_spikes: [[a, b], ...]` per |
| episode, with a 3-frame buffer on each side. |
|
|
| ### 5B. Pose teleports |
|
|
| Per-frame OT velocity > 5 m/s → impossible motion → marker swap or brief |
| solver glitch. Stored as `pose_teleports_L` / `pose_teleports_R`. |
|
|
| ### 5C. Pose freezes — disambiguated by cross-modal motion |
|
|
| A sensor whose 7-vec pose is bitwise-identical across consecutive frames |
| for ≥ 0.25 s **on an active sensor** is a freeze candidate. Each candidate |
| is then diagnosed by combining: |
| - max translation velocity in the OT stream within ±1 s |
| - max angular velocity in the same window (catches solver flips that the |
| old 5 m/s translation-only check missed) |
| - max OT timestamp gap during the interval |
| - per-stream consecutive-frame duplicate fraction (cam0/1/2 + affected GS) |
|
|
| Each event is then labelled: |
|
|
| - `ot_loss` — the OptiTrack solver lost the rigid body. Signaled by any |
| of: OT timestamp gap ≥ 100 ms, translation velocity ≥ 5 m/s near the |
| event, or angular velocity ≥ 15 rad/s near the event (solver flip on |
| re-acquire). A bitwise-frozen pose with no contradicting evidence also |
| defaults to this class. **GelSight is unaffected** — the gel pad just |
| isn't deforming during the freeze (sensor moved in air or set down), |
| which mimics a frozen stream but isn't one. |
| - `pipeline_stall` — ALL three RealSense streams duplicate ≥ 30 % of |
| frames in the window. Indicates the recorder itself stalled. Not |
| observed in the current React dataset. |
| - `real_still` — no OT-loss signals and cross-modal motion at noise |
| floor. Operator deliberately paused. |
| - `ambiguous` — none of the above. |
|
|
| Empirically across the bimanual set, **every freeze event in React |
| classifies as `ot_loss`** — the OptiTrack rig is the bottleneck, not the |
| camera/GelSight capture stack. The right cut is "drop any window |
| overlapping an ot_loss interval"; this is materially different from a |
| benign "operator at rest" interpretation. Fixing it requires improving |
| mocap coverage (camera placement, marker count on each rigid body), not |
| changes to the recorder. |
| |
| Current scripts: |
| - intensity spikes + pose teleports: the original detector that produced |
| the current `bad_frames.json` (translation-velocity only; **rotation |
| teleports are now caught in 5C via `freeze_diagnose.py`'s angular |
| velocity check** but should be folded into the main `bad_frames.json` |
| pipeline.) |
| - pose freezes: `MultimodalData/twm/scripts/freeze_diagnose.py` (cross-modal classifier; |
| outputs per-event verdicts + per-class sample clips). Also see |
| `MultimodalData/twm/scripts/freeze_cut_report.py` for per-threshold totals across the task. |
|
|
| **To do — consolidation.** These detectors should be merged into a single |
| `scripts/detect_failures.py` that: |
| 1. iterates `.pt` files under a `--pt_root`, |
| 2. applies all three detectors (with rotation-aware teleport check), |
| 3. writes the union to `bad_frames.json` and a richer per-mode breakdown |
| to `freeze_intervals.json` and `data_quality_breakdown.json`, |
| 4. emits the per-episode `data_quality_report.csv`. |
|
|
| Until that exists, the procedure is: re-run each current script in turn |
| and merge their outputs by hand into `bad_frames.json`. |
|
|
| --- |
|
|
| ## Stage 6 — Visual QA gallery GIFs (for HF) |
|
|
| ```bash |
| python /home/yxma/MultimodalData/twm/scripts/make_episode_gifs_v3.py \ |
| --data_root /media/yxma/Disk1/twm/data/motherboard \ |
| --pt_root /media/yxma/Disk1/twm/processed/mode1_v1/motherboard \ |
| --out_root /media/yxma/Disk1/twm/figures/episode_previews/motherboard \ |
| --tasks_json yxma_React/tasks.json |
| ``` |
|
|
| Settings (all configurable but the defaults are vetted): |
| - 60 frames evenly across [2 %, 98 %] of the episode |
| - 3 cameras shown left|middle|right with sensor projection overlay |
| - 256-color palette (preserves tactile gradients) |
| - ≤ 4 MB hard cap; on overflow the script first shrinks the spatial |
| resolution, then drops palette down to 128 colours, never below |
| - Output: one GIF per episode under |
| `figures/episode_previews/<task>/<date>/episode_*.gif` |
|
|
| These GIFs are uploaded to HF and rendered inline on the dataset card. |
|
|
| --- |
|
|
| ## Stage 7 — Per-event QA clips for borderline failures |
|
|
| Run only when Stage 5 flags something subtle (short freezes, weak intensity |
| spikes, single-frame teleports): |
|
|
| ```bash |
| python /home/yxma/MultimodalData/twm/scripts/inspect_short_freezes.py \ |
| --thr_min_s 1 --thr_max_s 5 \ |
| --out_dir /media/yxma/Disk1/twm/figures/dataset_figures/freeze_check_short |
| ``` |
|
|
| Each event becomes one short GIF (~60 frames) with the affected sensor |
| circled red. The operator scans these and decides per-event whether to |
| keep, cut, or merge intervals. Final calls live in `freeze_intervals.json` |
| under a `manual_verdict: {"keep"|"cut"|"merge"}` field. |
|
|
| --- |
|
|
| ## Stage 8 — Update metadata |
|
|
| Touch three files before pushing to HF: |
|
|
| 1. `tasks.json` |
| - Add the new date to `tasks.<task>.dates`. |
| - Add a `per_date_notes.<date>` block: |
| ```json |
| { |
| "kind": "session", |
| "active_sensors": ["left", "right"], |
| "note": "human-readable summary, e.g. 'bimanual; one OT freeze in ep_017'" |
| } |
| ``` |
| - Update `n_episode_files`. |
| |
| 2. `bad_frames.json` — automatically refreshed by Stage 5. |
|
|
| 3. `data_quality_breakdown.json` — automatically refreshed by Stage 5. |
|
|
| --- |
|
|
| ## Stage 9 — Docs refresh |
|
|
| If the new session adds material the dataset card or supporting docs |
| don't already describe, update: |
| - `README.md` "At a glance" counters (episodes, frames, duration). |
| - `docs/quality.md` if a new failure mode appeared, or percentages |
| changed by > 0.5 %. |
| - `docs/recording.md` if hardware / capture rate / sensor lineup changed. |
| - `docs/caveats.md` for any operator-noted anomaly. |
|
|
| --- |
|
|
| ## Stage 10 — Push to HF |
|
|
| Pre-flight check — these must all be true: |
|
|
| - [ ] every `episode_*.h5` has a matching `episode_*.pt` |
| - [ ] every `episode_*.pt` has been touched by `twm.contact_index` after |
| the most recent recording (timestamps, file size) |
| - [ ] `tasks.json:per_date_notes.<date>` exists |
| - [ ] `bad_frames.json:episodes.<date>/<ep>` exists for every episode |
| - [ ] every episode has a preview GIF under |
| `figures/episode_previews/<task>/<date>/` |
| - [ ] `data_quality_breakdown.json` reflects the new totals |
| |
| Then upload: |
|
|
| ```bash |
| python - <<'PY' |
| from huggingface_hub import upload_folder |
| upload_folder( |
| repo_id="yxma/React", |
| repo_type="dataset", |
| folder_path=".", |
| path_in_repo=".", |
| commit_message="Add <date> session + curation pipeline outputs", |
| ) |
| PY |
| ``` |
|
|
| (Set `HF_HUB_ENABLE_HF_TRANSFER=1` for fast LFS uploads.) |
|
|
| --- |
|
|
| ## Channel-order gotcha (read before adding any new visualiser) |
|
|
| The three video streams use **different byte orders** inside the H5 files. Get |
| this wrong and your previews come out with R/B swapped: |
|
|
| | Stream | H5 byte order | Why | |
| |---|---|---| |
| | `realsense/cam{0,1,2}/color` | **BGR** | `pyrealsense2` enabled with `rs.format.bgr8` in `camera_stream/realsense_stream.py` | |
| | `gelsight/{left,right}/frames` | **RGB** | Converted in `camera_stream/usb_video_stream.py` (`cv2.cvtColor(BGR2RGB)`) before writing | |
| | `view` in `processed/.../*.pt` | **BGR** | Carved out of cam0 by `twm.contact_index` with no further conversion | |
| | `tactile_{left,right}` in `.pt` | **RGB** | Carved out of gelsight frames, same as above | |
|
|
| Rules of thumb: |
|
|
| - `cv2.imshow` and `cv2.VideoWriter` expect BGR — RealSense streams + the |
| recording UI are end-to-end consistent (and incidentally hide the fact |
| that the GelSight thumbnails in `twm.visualize` are technically rendered |
| with their R/B swapped). |
| - `PIL.Image.fromarray` and the GIF encoder interpret bytes as RGB. Anything |
| PIL-bound (gallery previews, dataloader sample GIFs) must convert |
| RealSense BGR → RGB once. The cheapest way is `arr[..., ::-1]`. |
| - When reusing `twm.data_collection.make_preview` as the panel builder for a |
| GIF, feed the H5 streams in **as-is** so the panel matches the live viewer |
| pixel-for-pixel, then `cv2.cvtColor(panel, cv2.COLOR_BGR2RGB)` once at the |
| end before saving with PIL. |
|
|
| If you're writing a new visualiser: |
|
|
| ```python |
| import cv2, h5py, hdf5plugin # noqa: F401 |
| with h5py.File(path, "r") as f: |
| cam_rgb = f["realsense/cam0/color"][i][..., ::-1].copy() # BGR → RGB |
| gs_rgb = f["gelsight/left/frames"][i] # already RGB |
| ``` |
|
|
| ## Failure-mode reference table |
|
|
| | Mode | Detector | Threshold | Where logged | |
| |---------------------|------------------------------------------------|------------------|-------------------------------------------| |
| | LED intensity spike | `tactile_<side>_intensity[t] - p999 > 30` | uint8 scale | `bad_frames.json:intensity_spikes` | |
| | Pose teleport | inter-frame velocity | > 5 m/s | `bad_frames.json:pose_teleports_{L,R}` | |
| | OT freeze | pose bitwise-identical for ≥ N frames | ≥ 1 s (≈30 fr.) | `bad_frames.json` + `freeze_intervals.json` | |
| | Contact-ref drift | `_contact_meta.drift_{side}` | > 5.0 | `_contact_meta` (per-episode .pt) | |
| | Color shift / hue | (manual; from Stage 3 MP4 review) | — | `tasks.json:per_date_notes.<date>.note` | |
| | Occlusion | (manual; from Stage 3 MP4 review) | — | same | |
| | Audio-buffer drops | (recorder logs at capture time) | — | recording-machine log | |
|
|
| --- |
|
|
| ## Quick "I'm adding one new date" runbook |
|
|
| ```bash |
| DATE=2026-06-01 |
| TASK=motherboard |
| |
| # 1. integrity |
| python scripts/integrity_check.py data/$TASK/$DATE |
| |
| # 2. compress |
| python -m twm.compress_h5 --in_dir data/$TASK/$DATE --in_place |
| |
| # 3. preview MP4 (operator scrub) |
| python -m twm.visualize_projection data/$TASK/$DATE --save_videos |
| |
| # 4. contact index → .pt |
| python -m twm.contact_index \ |
| --in_root data/$TASK/$DATE \ |
| --out_root processed/mode1_v1/$TASK/$DATE |
| |
| # 5. detect failure modes |
| python scripts/detect_failures.py --date $DATE |
| |
| # 6. gallery GIFs |
| python scripts/make_episode_gifs_v3.py --only_date $DATE |
| |
| # 7. per-event clips (only if Stage 5 flagged subtle stuff) |
| python scripts/inspect_short_freezes.py --only_date $DATE |
| |
| # 8/9. edit tasks.json + README + docs/* by hand |
| |
| # 10. push |
| HF_HUB_ENABLE_HF_TRANSFER=1 python scripts/push_hf.py |
| ``` |
|
|
| If any stage produces an unexpected count or a new failure mode, stop the |
| pipeline and write it up in `docs/caveats.md` before pushing. |
|
|