Robust Contact-rich Manipulation through Implicit Motor Adaptation
Teng Xue, Amirreza Razmjoo, Suhan Shetty, Sylvain Calinon

TL;DR
This paper introduces implicit motor adaptation, a novel approach for contact-rich manipulation that efficiently retrieves robust, parameter-conditioned policies without precise system identification, enhancing generalization in diverse physical scenarios.
Contribution
It proposes an implicit motor adaptation framework using tensor train representations to improve policy retrieval and robustness in contact-rich manipulation tasks.
Findings
Effective policy retrieval with rough parameter estimates
Robust manipulation across diverse physical parameters
Successful real-world and simulation experiments
Abstract
Contact-rich manipulation plays an important role in daily human activities. However, uncertain physical parameters often pose significant challenges for both planning and control. A promising strategy is to develop policies that are robust across a wide range of parameters. Domain adaptation and domain randomization are widely used, but they tend to either limit generalization to new instances or perform conservatively due to neglecting instance-specific information. \textit{Explicit motor adaptation} addresses these issues by estimating system parameters online and then retrieving the parameter-conditioned policy from a parameter-augmented base policy. However, it typically requires precise system identification or additional training of a student policy, both of which are challenging in contact-rich manipulation tasks with diverse physical parameters. In this work, we propose…
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Taxonomy
TopicsRobot Manipulation and Learning · Motor Control and Adaptation · Muscle activation and electromyography studies
