通过深度强化学习,在有快速移动行人的人群中实现安全且符合社会要求的机器人导航

IF 1.9 4区 计算机科学 Q3 ROBOTICS Robotica Pub Date : 2024-02-26 DOI:10.1017/s0263574724000183
Zhen Feng, Bingxin Xue, Chaoqun Wang, Fengyu Zhou
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引用次数: 0

摘要

在拥挤的环境中进行安全且符合社交规则的导航对于社交机器人来说至关重要。大量研究表明,深度强化学习技术在训练高效策略方面具有优势,但大多数研究都忽略了人群中快速移动的行人。在本文中,我们考虑到碰撞理论以及不同机器人和人类的运动特性,提出了一种新颖的安全措施设计,命名为 "风险区域"。风险区域的几何形状是根据环境中各代理的实时相对位置和速度形成的。我们的方法能感知环境中的风险,并鼓励机器人采取安全且符合社会要求的导航行为。在人口稠密的环境中,提出的方法与现有的三个著名深度强化学习模型进行了验证。实验结果表明,我们的方法与强化学习技术相结合,可以有效地感知环境中的风险,并在有快速移动行人的人群中为机器人提供高安全性导航。
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Safe and socially compliant robot navigation in crowds with fast-moving pedestrians via deep reinforcement learning

Safe and socially compliant navigation in a crowded environment is essential for social robots. Numerous research efforts have shown the advantages of deep reinforcement learning techniques in training efficient policies, while most of them ignore fast-moving pedestrians in the crowd. In this paper, we present a novel design of safety measure, named Risk-Area, considering collision theory and motion characteristics of different robots and humans. The geometry of Risk-Area is formed based on the real-time relative positions and velocities of the agents in the environment. Our approach perceives risk in the environment and encourages the robot to take safe and socially compliant navigation behaviors. The proposed method is verified with three existing well-known deep reinforcement learning models in densely populated environments. Experiment results demonstrate that our approach combined with the reinforcement learning techniques can efficiently perceive risk in the environment and navigate the robot with high safety in the crowds with fast-moving pedestrians.

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来源期刊
Robotica
Robotica 工程技术-机器人学
CiteScore
4.50
自引率
22.20%
发文量
181
审稿时长
9.9 months
期刊介绍: Robotica is a forum for the multidisciplinary subject of robotics and encourages developments, applications and research in this important field of automation and robotics with regard to industry, health, education and economic and social aspects of relevance. Coverage includes activities in hostile environments, applications in the service and manufacturing industries, biological robotics, dynamics and kinematics involved in robot design and uses, on-line robots, robot task planning, rehabilitation robotics, sensory perception, software in the widest sense, particularly in respect of programming languages and links with CAD/CAM systems, telerobotics and various other areas. In addition, interest is focused on various Artificial Intelligence topics of theoretical and practical interest.
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