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Diversifying Robot Locomotion Behaviors with Extrinsic Behavioral Curiosity

Diversifying Robot Locomotion Behaviors with Extrinsic Behavioral Curiosity

来源:Arxiv_logoArxiv
英文摘要

Imitation learning (IL) has shown promise in robot locomotion but is often limited to learning a single expert policy, constraining behavior diversity and robustness in unpredictable real-world scenarios. To address this, we introduce Quality Diversity Inverse Reinforcement Learning (QD-IRL), a novel framework that integrates quality-diversity optimization with IRL methods, enabling agents to learn diverse behaviors from limited demonstrations. This work introduces Extrinsic Behavioral Curiosity (EBC), which allows agents to receive additional curiosity rewards from an external critic based on how novel the behaviors are with respect to a large behavioral archive. To validate the effectiveness of EBC in exploring diverse locomotion behaviors, we evaluate our method on multiple robot locomotion tasks. EBC improves the performance of QD-IRL instances with GAIL, VAIL, and DiffAIL across all included environments by up to 185%, 42%, and 150%, even surpassing expert performance by 20% in Humanoid. Furthermore, we demonstrate that EBC is applicable to Gradient-Arborescence-based Quality Diversity Reinforcement Learning (QD-RL) algorithms, where it substantially improves performance and provides a generic technique for diverse robot locomotion. The source code of this work is provided at https://github.com/vanzll/EBC.

Zhenglin Wan、Xingrui Yu、David Mark Bossens、Yueming Lyu、Qing Guo、Flint Xiaofeng Fan、Yew Soon Ong、Ivor Tsang

自动化技术、自动化技术设备计算技术、计算机技术

Zhenglin Wan,Xingrui Yu,David Mark Bossens,Yueming Lyu,Qing Guo,Flint Xiaofeng Fan,Yew Soon Ong,Ivor Tsang.Diversifying Robot Locomotion Behaviors with Extrinsic Behavioral Curiosity[EB/OL].(2025-07-09)[2025-07-18].https://arxiv.org/abs/2410.06151.点此复制

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