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arxiv 2308.03273 v1 pith:YNHKHF4I submitted 2023-08-07 cs.RO

Learning Terrain-Adaptive Locomotion with Agile Behaviors by Imitating Animals

classification cs.RO
keywords terrainsanimalslearningrealbehaviorlocomotionmethodmotions
verification ladder T0 review T1 audit T2 compute T3 formal T4 reserved
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In this paper, we present a general learning framework for controlling a quadruped robot that can mimic the behavior of real animals and traverse challenging terrains. Our method consists of two steps: an imitation learning step to learn from motions of real animals, and a terrain adaptation step to enable generalization to unseen terrains. We capture motions from a Labrador on various terrains to facilitate terrain adaptive locomotion. Our experiments demonstrate that our policy can traverse various terrains and produce a natural-looking behavior. We deployed our method on the real quadruped robot Max via zero-shot simulation-to-reality transfer, achieving a speed of 1.1 m/s on stairs climbing.

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