Learning to Walk Autonomously via Reset-Free Quality-DiversityDownload PDF

Published: 23 Apr 2022, Last Modified: 05 May 2023ALOE@ICLR2022Readers: Everyone
Keywords: Quality-Diversity, Reset-Free, Robotics
Abstract: Quality-Diversity (QD) algorithms can discover large and complex behavioural repertoires consisting of both diverse and high-performing skills. However, the generation of behavioural repertoires has mainly been limited to simulation environments instead of real-world learning. This is because existing QD algorithms need large numbers of evaluations as well as episodic resets, which require manual human supervision and intervention. This paper proposes Reset-Free QD (RF-QD) as a step towards autonomous learning for robotics in open-ended environments. We build on Dynamics-Aware QD (DA-QD) and introduce a behaviour selection policy that leverages the diversity of the imagined repertoire and environmental information to intelligently select of behaviours that can act as automatic resets. We demonstrate this through a task of learning to walk within defined training zones with obstacles. Our experiments show that we can learn repertoires of locomotion controllers autonomously without manual resets and with high sample efficiency in spite of harsh safety constraints. Finally, using an ablation of different target objectives, we show that it is important for RF-QD to have diverse types solutions available for the behaviour selection policy over solutions optimised with a specific objective. Videos and code available at https://sites.google.com/view/rf-qd.
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