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Multi-robot social-aware cooperative planning in pedestrian environments using attention-based actor-critic

Lu Dong, Zichen He, Chunwei Song, Xin Yuan, Haichao Zhang

Year
2024
Citations
15
Access
Open access

Abstract

Abstract Safe and efficient cooperative planning of multiple robots in pedestrian participation environments is promising for applications. In this paper, a novel multi-robot social-aware efficient cooperative planner on the basis of off-policy multi-agent reinforcement learning (MARL) under partial dimension-varying observation and imperfect perception conditions is proposed. We adopt a temporal-spatial graph (TSG)-based social encoder to better extract the importance of social relations between each robot and the pedestrians in its field of view (FOV). Also, we introduce a K-step lookahead reward setting in the multi-robot RL framework to avoid aggressive, intrusive, short-sighted, and unnatural motion decisions generated by robots. Moreover, we improve the traditional centralized critic network with a multi-head global attention module to better aggregate local observation information among different robots to guide the process of the individual policy update. Finally, multi-group experimental results verify the effectiveness of the proposed cooperative motion planner.

Keywords

PedestrianComputer scienceRobotHuman–computer interactionArtificial intelligenceTransport engineeringEngineering

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