UniDex: A Robot Foundation Suite for Universal Dexterous Hand Control from Egocentric Human Videos
Gu Zhang, Qicheng Xu, Haozhe Zhang, Jianhan Ma, Long He, Yiming Bao, Zeyu Ping, Zhecheng Yuan, Chenhao Lu, Chengbo Yuan, Tianhai Liang, Xiaoyu Tian, Maanping Shao, Feihong Zhang, Mingyu Ding, Yang Gao, Hao Zhao, Hang Zhao, Huazhe Xu

TL;DR
UniDex introduces a comprehensive framework combining a large robot-centric dataset, a unified action space, and a portable human data capture setup to advance universal dexterous hand control across various robotic hands.
Contribution
The paper presents UniDex, a novel suite integrating a large-scale dataset, a unified action space, and a human-data capture system for scalable, cross-hand dexterous manipulation.
Findings
Achieved 81% task progress on tool-use tasks across different hands.
Demonstrated strong zero-shot cross-hand generalization.
Outperformed prior baselines significantly in dexterous manipulation tasks.
Abstract
Dexterous manipulation remains challenging due to the cost of collecting real-robot teleoperation data, the heterogeneity of hand embodiments, and the high dimensionality of control. We present UniDex, a robot foundation suite that couples a large-scale robot-centric dataset with a unified vision-language-action (VLA) policy and a practical human-data capture setup for universal dexterous hand control. First, we construct UniDex-Dataset, a robot-centric dataset over 50K trajectories across eight dexterous hands (6--24 DoFs), derived from egocentric human video datasets. To transform human data into robot-executable trajectories, we employ a human-in-the-loop retargeting procedure to align fingertip trajectories while preserving plausible hand-object contacts, and we operate on explicit 3D pointclouds with human hands masked to narrow kinematic and visual gaps. Second, we introduce the…
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Taxonomy
TopicsRobot Manipulation and Learning · Human Pose and Action Recognition · Stroke Rehabilitation and Recovery
