Datasets:
metadata
license: apache-2.0
task_categories:
- robotics
tags:
- LeRobot
- so101
- manipulation
- stack
- block-stacking
- imitation-learning
- real-world
- method3
configs:
- config_name: default
data_files: data/*/*.parquet
SO101-StackBlock_Ours_100epi
100 successful demonstrations of stacking RED → GREEN → BLUE blocks on a blue dish, collected on a single LeRobot SO-101 arm. Recorded via the AutoDataCollector pipeline (Phase 1 buffer-aware seeding + Phase 2 MI-based useful-OOD acquisition).
Task
Stack red, green, and blue blocks on the blue dish from bottom to top.
Per episode:
- Pick red block → place on blue dish
- Re-detect → pick green block → stack on red
- Re-detect → pick blue block → stack on green
Dataset stats
| Episodes | 100 |
| Frames | 86,402 |
| FPS | 10 |
| Avg episode length | ~864 frames (≈ 86 sec) |
| Robot | SO-101 (5-DoF + gripper) |
| Cameras | top (RealSense overhead) + left_wrist (wrist OpenCV) |
| Video codec | H.264 (yuv420p, 640×480 @ 10fps) |
Features
| Key | Shape | Notes |
|---|---|---|
observation.state |
(6,) | joint positions (5 arm + gripper) |
action |
(6,) | target joint positions |
observation.images.top |
(480, 640, 3) | overhead RGB, H.264 |
observation.images.left_wrist |
(480, 640, 3) | wrist RGB, H.264 |
observation.ee_pos.robot_xyzrpy |
(6,) | end-effector pose |
observation.gripper_binary |
(1,) | binary gripper state |
skill.* |
various | per-skill subgoal & verification metadata |
subtask.* |
various | subtask boundary labels |
Collection method
- Phase 1 (80 episodes): buffer-aware subgoal seeding — each episode perturbs subgoals to diversify reached states across 20 random initial seeds × 5 slots.
- Phase 2 (20 episodes): MI-based useful-OOD acquisition replays Phase 1 subgoals but varies trajectory via curobo plan_batch + MI scoring.
- All 100 episodes verified via VLM judge (
gemini-3-flash-preview) returning TRUE.
Usage
from lerobot.datasets.lerobot_dataset import LeRobotDataset
ds = LeRobotDataset("CoRL2026-CSI/SO101-StackBlock_Ours_100epi")
print(ds.num_episodes, ds.num_frames, ds.fps)
sample = ds[0]
top = sample["observation.images.top"] # (3, 480, 640) torch.uint8
wrist = sample["observation.images.left_wrist"]
action = sample["action"] # (6,) joint targets
Source
Collected with AutoDataCollector (CoRL 2026 submission).