ALLSTEPS: curriculum-driven learning of stepping stone skills

SCA(2020)

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摘要
ABSTRACTHumans are highly adept at walking in environments with foot placement constraints, including stepping-stone scenarios where footstep locations are fully constrained. Finding good solutions to stepping-stone locomotion is a longstanding and fundamental challenge for animation and robotics. We present fully learned solutions to this difficult problem using reinforcement learning. We demonstrate the importance of a curriculum for efficient learning and evaluate four possible curriculum choices compared to a non-curriculum baseline. Results are presented for a simulated humanoid, a realistic bipedal robot simulation and a monster character, in each case producing robust, plausible motions for challenging stepping stone sequences and terrains.
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关键词
CCS Concepts, &#8226, Computing methodologies &#8594, Reinforcement learning, Physical simulation
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