license: mit
pretty_name: LIBERO-CrossView-Pairs
task_categories:
- robotics
tags:
- libero
- libero-plus
- lerobot
- robotics
- vision-language-action
- multiview
- camera-robustness
- cross-view
size_categories:
- 100K<n<1M
LIBERO-CrossView-Pairs
LIBERO-CrossView-Pairs is a same-state paired-view dataset for training camera-robust vision-language-action policies on LIBERO. Each row contains two scene-camera observations of the exact same simulator state: a nominal LIBERO scene view and one camera-perturbed view. The paired images share the same robot state, language instruction, action target, episode index, frame index, and MuJoCo state; only the scene-camera extrinsics differ.
This dataset was created for cross-view action consistency training in the paper project "Cross-View Action Consistency for Camera-Robust Vision-Language-Action Policies". It is scene-camera-only by design: wrist-camera images are excluded.
Dataset Summary
| Item | Value |
|---|---|
| Format | LeRobot v2.0, parquet image dataset |
| Robot | Franka Panda |
| FPS | 10 |
| Episodes | 2,000 |
| Frames / paired samples | 338,575 |
| Tasks | 40 |
| Suites | libero_spatial, libero_object, libero_goal, libero_10 |
| Image resolution | 256 x 256 RGB |
| Train split | episodes 0:1800, 304,664 pairs |
| Val split | episodes 1800:2000, 33,911 pairs |
| Camera categories | C1 distance, C2 spherical position, C3 orientation |
Each of the 40 tasks has 50 episodes. The train/val split is episode-level: the first 45 demos per task are train, and the last 5 demos per task are validation.
Data Fields
Each parquet row has:
| Field | Type | Description |
|---|---|---|
observation.images.front |
image, 256 x 256 x 3 | Nominal scene-camera RGB image |
observation.images.perturbed |
image, 256 x 256 x 3 | Perturbed scene-camera RGB image from the same simulator state |
observation.state |
float32[8] | End-effector position, axis-angle orientation, and gripper state |
action |
float32[7] | LIBERO 7-DoF action target |
timestamp |
float32 | frame_index / 10 |
frame_index |
int64 | Frame index within the episode |
episode_index |
int64 | Global episode id |
index |
int64 | Global frame id |
task_index |
int64 | Task id from meta/tasks.jsonl |
The LeRobot metadata is stored under meta/:
meta/info.jsonmeta/episodes.jsonlmeta/tasks.jsonl
Images are stored as inline PNG/image bytes inside parquet files (total_videos=0), not as external mp4 videos.
Pair Semantics
For every paired sample:
observation.images.frontis the nominal scene-camera view.observation.images.perturbedis a C1, C2, or C3 scene-camera perturbation.- Both images are rendered from the same original LIBERO HDF5 demo and timestep.
- The simulator is reset to the same flattened MuJoCo state before rendering each view.
- The robot state, object poses, action target, and language instruction are identical across the pair.
- Wrist-camera observations are not included.
The camera perturbation categories follow the LIBERO-Plus camera-view perturbation definitions:
- C1: distance perturbation by changing camera scale, with nominal orientation.
- C2: spherical position perturbation by changing camera azimuth and/or elevation.
- C3: orientation perturbation by changing camera roll and/or pitch at nominal position.
The training category mix follows the LIBERO-Plus 4-suite camera evaluation distribution, approximately C1/C2/C3 = 19.6% / 61.9% / 18.5%.
Construction
The dataset was generated from the original LIBERO HDF5 demonstrations, not from policy rollouts. For each selected timestep:
- Load the original LIBERO HDF5 demo state, action, robot state, and language instruction.
- Reset the LIBERO simulator to the exact flattened MuJoCo state for that timestep.
- Render the nominal scene-camera view.
- Modify only the scene-camera extrinsics according to a sampled C1/C2/C3 perturbation.
- Render the perturbed scene-camera view.
- Store both views and the shared state/action metadata as one LeRobot parquet row.
The source project used scripts/v4/phase0A/render_libero_multiview_states.py to build same-state manifests and scripts/v4/phase0A/export_to_lerobot.py to export the LeRobot dataset.
Integrity Check
The uploaded folder was audited on 2026-05-25 before release:
- 2,000 expected parquet files found.
- 2,000
episodes.jsonlrows and 40tasks.jsonlrows found. - Total parquet rows: 338,575, matching
meta/info.json. - Global
indexis continuous from 0 to 338,574. frame_index,episode_index,task_index, andtimestampare internally consistent.- All state/action values are finite and have the expected dimensions.
- Both image columns have non-empty PNG/image bytes for every row.
- 12,000 sampled images were decoded successfully: first/middle/last frame for both views in every episode.
No integrity errors or warnings were found.
Usage
With LeRobot/OpenPI-style loaders, point the dataset loader at this repository id and read the paired image keys:
repo_id = "bingqi/LIBERO-CrossView-Pairs"
nominal_key = "observation.images.front"
perturbed_key = "observation.images.perturbed"
For OpenPI pair training, the corresponding data mapping is:
observation/image <- observation.images.front
observation/image_perturbed <- observation.images.perturbed
observation/state <- observation.state
actions <- action
prompt <- task
Citation
If you use this dataset, please cite LIBERO and LIBERO-Plus, and cite this dataset/project if the paired-view construction is relevant to your work.