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Feedback-efficient Active Preference Learning for Socially Aware Robot Navigation

2022-01-03 04:21:51
Ruiqi Wang, Weizheng Wang, Byung-Cheol Min

Abstract

Socially aware robot navigation, where a robot is required to optimize its trajectories to maintain a comfortable and compliant spatial interaction with humans in addition to the objective of reaching the goal without collisions, is a fundamental yet challenging task for robots navigating in the context of human-robot interaction. Much as existing learning-based methods have achieved a better performance than previous model-based ones, they still have some drawbacks: the reinforcement learning approaches, which reply on a handcrafted reward for optimization, are unlikely to emulate social compliance comprehensively and can lead to reward exploitation problems; the inverse reinforcement learning approaches, which learn a policy via human demonstrations, suffer from expensive and partial samples, and need extensive feature engineering to be reasonable. In this paper, we propose FAPL, a feedback-efficient interactive reinforcement learning approach that distills human preference and comfort into a reward model, which serves as a teacher to guide the agent to explore latent aspects of social compliance. Hybrid experience and off-policy learning are introduced to improve the efficiency of samples and human feedback. Extensive simulation experiments demonstrate the advantages of FAPL quantitatively. User study, employing a physical robot in real world scenarios to navigate with humans, further evaluates the benefits of learned robot behaviors from FAPL qualitatively.

Abstract (translated)

URL

https://arxiv.org/abs/2201.00469

PDF

https://arxiv.org/pdf/2201.00469.pdf


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