2022
DOI: 10.48550/arxiv.2202.05244
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REvolveR: Continuous Evolutionary Models for Robot-to-robot Policy Transfer

Abstract: A popular paradigm in robotic learning is to train a policy from scratch for every new robot. This is not only inefficient but also often impractical for complex robots. In this work, we consider the problem of transferring a policy across two different robots with significantly different parameters such as kinematics and morphology. Existing approaches that train a new policy by matching the action or state transition distribution, including imitation learning methods, fail due to optimal action and/or state … Show more

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