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RoCo Task Board Assembly Demonstrations
Real-world LeRobot demonstrations for contact-rich task-board assembly.
Overview
RoCo Task Board Assembly Demonstrations is a real-world robot manipulation dataset for assembling parts on a task board. It is released by Sharpa in a LeRobot-compatible format for imitation learning, visuomotor policy learning, visual-tactile representation learning, and contact-rich manipulation research.
Task-board assembly requires precise part localization, fine contact timing, bimanual coordination, and robust perception under hand-object occlusion. The demonstrations include synchronized multi-view video, tactile observations, proprioceptive state, torque signals, and action targets.
This dataset supports the RoCo IROS 2026 Challenge. Teams can use it to develop, train, and evaluate policies for the task-board assembly track. Interested participants should visit the official competition website and complete the registration form to receive challenge updates and participation details.
| Task Task-board part assembly |
Format LeRobot v3.0 / v2.1 |
Scale 30 seasons / 562 episodes |
Frequency 30 FPS |
| Video 6 synchronized streams |
State / Action 65D joint space |
Tactile 60D signal + tactile video |
Use Training and policy development |
Competition and Registration
The RoCo IROS 2026 Challenge provides a shared benchmark for real-world robotic assembly, focusing on contact-rich manipulation, bimanual coordination, visual-tactile perception, and robust policy execution. The task-board assembly dataset is released as training data for teams participating in the challenge and for researchers working on related manipulation problems.
- Competition website: https://rocochallenge.github.io/RoCo-IROS2026/
- Registration form: https://forms.gle/d2NKNAE7dqSfYZB87
Please refer to the competition website for the latest schedule, rules, evaluation details, and participation instructions.
Dataset Capabilities
| Capability | Dataset Support |
|---|---|
| Contact-rich assembly learning | Real-world demonstrations for assembling task-board parts |
| Multi-view visuomotor policies | Synchronized head-camera and wrist-camera observations |
| Visual-tactile learning | High-resolution tactile videos, synchronized raw tactile camera views, and 10-fingertip 6-axis tactile signals |
| Joint-space control | 65D synchronized state and action for two arms, two dexterous hands, and torso/motor-related joints |
| LeRobot ecosystem | lerobot3.0 and lerobotv2.1 exports for every released season |
Example Views
The demonstrations include synchronized head, wrist, and tactile video streams. Each preview below uses a representative window from the same lerobotv2.1 episode, played at 10x speed. GIF previews render directly in Markdown; click any preview to open the MP4 version. Tactile previews preserve their full wide-frame layout.
Head Left
|
Head Right
|
Wrist Left
|
Wrist Right
|
Tactile Deformation
|
Raw Tactile
|
Dataset Statistics
| Item | Value |
|---|---|
| Total collection seasons | 30 |
lerobot3.0 seasons |
30 |
lerobot3.0 episodes |
562 |
lerobot3.0 frames |
2,461,024 |
lerobotv2.1 seasons |
30 |
lerobotv2.1 episodes |
562 |
lerobotv2.1 frames |
2,461,024 |
| FPS | 30 |
| Video streams | 6 |
| State/action dimension | 65 |
| Tactile signal dimension | 60 |
| Approximate data size | 324.3 GB |
For new users, we recommend starting from lerobot3.0. The lerobotv2.1 export is included for compatibility with pipelines that still depend on the older LeRobot layout.
Get Started
Download The Dataset
Make sure Git LFS is installed before cloning from Hugging Face.
git lfs install
git clone https://huggingface.co/datasets/SharpaIT/RoCo_TaskBoardAssembly
If you want to clone only metadata first and fetch large files later:
GIT_LFS_SKIP_SMUDGE=1 git clone https://huggingface.co/datasets/SharpaIT/RoCo_TaskBoardAssembly
If you only want a specific season, use sparse checkout:
git init RoCo_TaskBoardAssembly
cd RoCo_TaskBoardAssembly
git remote add origin https://huggingface.co/datasets/SharpaIT/RoCo_TaskBoardAssembly
git sparse-checkout init
git sparse-checkout set season_POC22061_2026_06_11_14_29_08_train README.md
git pull origin main
Quick Inspection
Each season contains both lerobot3.0 and lerobotv2.1 exports. Inspect meta/info.json first to understand the exact schema and file templates.
import json
from pathlib import Path
dataset_root = Path("RoCo_TaskBoardAssembly")
episode_root = dataset_root / "season_POC22061_2026_06_11_14_29_08_train" / "lerobot3.0"
with open(episode_root / "meta" / "info.json", "r") as f:
info = json.load(f)
print(info["total_episodes"])
print(info["total_frames"])
print(info["features"].keys())
Dataset Structure
The dataset is organized by collection season. Each season contains a lerobot3.0 export and a lerobotv2.1 export.
RoCo_TaskBoardAssembly/
βββ README.md
βββ season_POC22061_2026_06_11_14_29_08_train/
β βββ lerobot3.0/
β β βββ meta/
β β β βββ info.json
β β β βββ modality.json
β β β βββ episodes/
β β β βββ tasks.parquet
β β βββ data/
β β β βββ chunk-000/
β β βββ videos/
β β βββ observation.images.head_left/
β β βββ observation.images.head_right/
β β βββ observation.images.wrist_left/
β β βββ observation.images.wrist_right/
β β βββ observation.images.tactile_deform/
β β βββ observation.images.tactile_raw/
β βββ lerobotv2.1/
β βββ meta/
β βββ data/
β βββ videos/
βββ season_.../
LeRobot Storage Layout
| Part | Description |
|---|---|
meta/ |
Dataset metadata, feature schema, task metadata, and path templates |
data/ |
Episode frame data stored as Apache Parquet files |
videos/ |
Per-camera MP4 videos |
The most important metadata file is meta/info.json. It defines total_episodes, total_frames, fps, splits, data_path, video_path, and features.
File Path Templates
LeRobot v3.0 uses templates similar to:
data/chunk-{chunk_index:03d}/file-{file_index:03d}.parquet
videos/{video_key}/chunk-{chunk_index:03d}/file-{file_index:03d}.mp4
LeRobot v2.1 uses templates similar to:
data/chunk-{episode_chunk:03d}/episode_{episode_index:06d}.parquet
videos/chunk-{episode_chunk:03d}/{video_key}/episode_{episode_index:06d}.mp4
Features Schema
Main Feature Groups
| Feature | Type | Shape | Description |
|---|---|---|---|
observation.state |
float32 | 65 | Joint-space robot state |
action |
float32 | 65 | Joint-space action |
observation.state.joint_torque |
float32 | 65 | Joint torque signal |
observation.tactile |
float32 | 60 | Tactile force/torque signal |
observation.images.* |
video | varies | Multi-view visual observations |
timestamp |
float32 | 1 | Timestamp |
frame_index |
int64 | 1 | Frame index within an episode |
episode_index |
int64 | 1 | Episode index |
task_index |
int64 | 1 | Task index |
Proprioceptive State
The 65D observation.state and action vectors are ordered as follows:
| Range | Names | Meaning |
|---|---|---|
| 0 - 6 | left_arm_j0 to left_arm_j6 |
Left arm joints |
| 7 - 28 | left_hand_j0 to left_hand_j21 |
Left dexterous hand joints |
| 29 - 35 | right_arm_j0 to right_arm_j6 |
Right arm joints |
| 36 - 57 | right_hand_j0 to right_hand_j21 |
Right dexterous hand joints |
| 58 - 64 | motor_j0 to motor_j6 |
Torso / motor-related joints |
Video Streams
The complete visual observation set contains six camera streams:
| Feature key | Description | Shape |
|---|---|---|
observation.images.head_left |
Left head camera | 480 x 480 x 3 |
observation.images.head_right |
Right head camera | 480 x 480 x 3 |
observation.images.wrist_left |
Left wrist camera | 480 x 480 x 3 |
observation.images.wrist_right |
Right wrist camera | 480 x 480 x 3 |
observation.images.tactile_deform |
Tactile deformation video | 480 x 1200 x 3 |
observation.images.tactile_raw |
Raw tactile video | 480 x 1600 x 3 |
Video files are MP4 without audio. Codec may differ across exports and seasons. lerobot3.0 is primarily AV1, while lerobotv2.1 is primarily H.264.
Tactile Modality
The dataset includes tactile observations as both compact numeric signals and high-resolution video streams. These modalities are synchronized with the robot state, action, and visual camera streams at 30 FPS, making them suitable for contact-rich policy learning and visual-tactile representation learning.
| Tactile feature | Type | Shape | Description |
|---|---|---|---|
observation.tactile |
float32 | 60 | Per-frame tactile force/torque signal: 10 fingertips x 6 axes |
observation.images.tactile_deform |
video | 480 x 1200 x 3 | Deformation-oriented tactile video stream that visualizes contact-induced surface changes |
observation.images.tactile_raw |
video | 480 x 1600 x 3 | Raw tactile camera stream preserving the full tactile sensor image layout |
The observation.tactile vector provides a compact force/torque representation for each frame. It contains 10 fingertip groups: left and right thumb, index, middle, ring, and little. Each fingertip contributes six values, ordered as fx, fy, fz, tx, ty, and tz, for a total of 60 dimensions.
The two tactile video streams provide complementary image-based tactile observations: tactile_deform emphasizes deformation patterns caused by contact, while tactile_raw preserves the raw tactile image for users who want to build their own visual-tactile preprocessing or representation learning pipeline. For downstream experiments, users can start with observation.tactile as a lightweight contact signal, then add one or both tactile video streams when the model architecture can handle the additional spatial resolution and bandwidth.
Season List
| Season | lerobot3.0 |
lerobotv2.1 |
|---|---|---|
season_POC22061_2026_06_11_14_29_08_train |
3.39 GB | 3.40 GB |
season_POC22061_2026_06_11_19_10_57_train |
3.45 GB | 3.46 GB |
season_POC22061_2026_06_11_20_21_30_train |
4.76 GB | 4.78 GB |
season_POC22061_2026_06_14_10_25_39_train |
3.82 GB | 3.83 GB |
season_POC22061_2026_06_14_15_44_09_train |
7.40 GB | 7.43 GB |
season_POC22061_2026_06_15_10_15_11_train |
4.07 GB | 4.08 GB |
season_POC22061_2026_06_15_11_15_27_train |
2.91 GB | 2.92 GB |
season_POC22061_2026_06_15_15_56_02_train |
9.96 GB | 10.00 GB |
season_POC22061_2026_06_15_19_24_12_train |
6.47 GB | 6.49 GB |
season_POC22061_2026_06_16_10_36_10_train |
2.47 GB | 2.48 GB |
season_POC22061_2026_06_16_13_39_56_train |
7.77 GB | 7.79 GB |
season_POC22061_2026_06_16_15_59_28_train |
6.01 GB | 6.03 GB |
season_POC22061_2026_06_16_19_09_01_train |
5.15 GB | 5.17 GB |
season_POC22061_2026_06_17_10_36_58_train |
6.48 GB | 6.50 GB |
season_POC22061_2026_06_17_13_36_51_train |
6.02 GB | 6.04 GB |
season_POC22061_2026_06_17_15_33_05_train |
7.65 GB | 7.68 GB |
season_POC22061_2026_06_17_19_15_29_train |
5.62 GB | 5.64 GB |
season_POC22061_2026_06_18_10_08_09_train |
6.11 GB | 6.13 GB |
season_POC22061_2026_06_18_13_41_46_train |
5.31 GB | 5.33 GB |
season_POC22061_2026_06_18_19_11_08_train |
6.76 GB | 6.78 GB |
season_POC22061_2026_06_18_20_41_26_train |
3.66 GB | 3.68 GB |
season_POC22061_2026_06_19_10_02_47_train |
3.16 GB | 3.17 GB |
season_POC22061_2026_06_19_10_45_34_train |
3.53 GB | 3.54 GB |
season_POC22061_2026_06_19_13_51_05_train |
5.85 GB | 5.87 GB |
season_POC22061_2026_06_19_16_00_30_train |
5.91 GB | 5.93 GB |
season_POC22061_2026_06_19_19_14_55_train |
5.61 GB | 5.63 GB |
season_POC22061_2026_06_20_10_09_11_train |
6.21 GB | 6.23 GB |
season_POC22061_2026_06_20_13_43_19_train |
5.80 GB | 5.82 GB |
season_POC22061_2026_06_20_15_57_28_train |
5.60 GB | 5.62 GB |
season_POC22061_2026_06_20_19_18_15_train |
4.94 GB | 4.96 GB |
Usage Recommendations
This release is provided as training data. For local experiments, users may split by season to avoid mixing demonstrations from the same collection session across train and evaluation sets.
For policy learning, a typical setup is:
- Visual observations: one or more
observation.images.*streams - Proprioception:
observation.state - Optional tactile signal:
observation.tactile - Supervision target:
action
For multi-view policies, start with:
observation.images.head_left
observation.images.head_right
observation.images.wrist_left
observation.images.wrist_right
Then add tactile video streams if your model can use high-resolution tactile observations:
observation.images.tactile_deform
observation.images.tactile_raw
Dataset Notes
- This repository contains only the LeRobot exports prepared for release.
- Raw POC recording folders and intermediate HDF5 folders are intentionally excluded from this release.
- The dataset is released by season, not as a single flattened LeRobot root.
- Every released season includes both
lerobot3.0andlerobotv2.1. motor_j0tomotor_j6are the torso/motor-related dimensions inobservation.stateandaction.- The task is contact-rich and precision-sensitive: policies should expect object contacts, hand-part occlusions, tactile events, and fine pose adjustments.
License and Terms
This dataset is released under the Creative Commons Attribution 4.0 International License (CC-BY-4.0). You may use, share, and adapt the dataset, including for commercial purposes, provided that you give appropriate attribution.
If you use the dataset for RoCo IROS 2026 Challenge participation, please also follow the official competition rules and evaluation protocol.
Citation
If this dataset contributes to your research, please cite or acknowledge the dataset.
@misc{roco_task_board_assembly_2026,
title = {RoCo Task Board Assembly LeRobot Dataset},
howpublished = {\url{https://huggingface.co/datasets/SharpaIT/RoCo_TaskBoardAssembly}},
year = {2026}
}
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