Group Estimation for Social Robot Navigation in Crowded Environments

Mincheul Kim, Youngsun Kwon, Sung-eui Yoon
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Abstract

Socially acceptable navigation in a crowded environment is a challenging problem in robotics due to diverse and unknown human intent. Previous studies have dealt with the social navigation problem in dense crowds via multi-robot collision avoidance. However, it is intractable to follow social compliant trajectory since human-robot interaction differs from the multi-robot collision avoidance problem. To approach our goal, this work exploits a human behavior model and focuses on social group actions such as walking together. We observed that human recognizes the other human groups and avoids them during navigation while maintaining social distances. Based on this observation, this paper proposes a social robot navigation method under group space estimation of crowds on a deep reinforcement learning framework. The proposed method estimates the social groups of crowds based on the behavioral similarities in sensory information. Our reinforcement learning framework learns a socially compliant and effective navigation policy through the proposed human group-aware reward. Our experiment in a crowd simulation demonstrates that the proposed approach generates a human-friendly trajectory with improved navigation performance.
拥挤环境下社交机器人导航的群体估计
由于人类意图的多样性和未知性,在拥挤环境中社会可接受的导航是机器人技术的一个具有挑战性的问题。已有研究通过多机器人避碰来解决密集人群中的社会导航问题。然而,由于人机交互不同于多机器人避碰问题,因此难以遵循社会顺从轨迹。为了达到我们的目标,这项工作利用了人类行为模型,并关注社会群体行为,如一起行走。我们观察到,人类在航行中识别其他人类群体并避开他们,同时保持社会距离。基于此,本文提出了一种基于深度强化学习框架的群体空间估计下的社交机器人导航方法。该方法基于感知信息中的行为相似性来估计群体的社会群体。我们的强化学习框架通过提出的人类群体意识奖励来学习社会顺应和有效的导航策略。我们在人群模拟中的实验表明,所提出的方法产生了一个人类友好的轨迹,并提高了导航性能。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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