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CHIP: Adaptive Compliance for Humanoid Control through Hindsight Perturbation

Sirui Chen
Zi-ang Cao
Zhengyi Luo
Fernando Castañeda
Chenran Li
Tingwu Wang
Ye Yuan
Linxi "Jim" Fan
C. Karen Liu
Yuke Zhu
Main:8 Pages
10 Figures
Bibliography:2 Pages
3 Tables
Appendix:1 Pages
Abstract

Recent progress in humanoid robots has unlocked agile locomotion skills, including backflipping, running, and crawling. Yet it remains challenging for a humanoid robot to perform forceful manipulation tasks such as moving objects, wiping, and pushing a cart. We propose adaptive Compliance Humanoid control through hIsight Perturbation (CHIP), a plug-and-play module that enables controllable end-effector stiffness while preserving agile tracking of dynamic reference motions. CHIP is easy to implement and requires neither data augmentation nor additional reward tuning. We show that a generalist motion-tracking controller trained with CHIP can perform a diverse set of forceful manipulation tasks that require different end-effector compliance, such as multi-robot collaboration, wiping, box delivery, and door opening.

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