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Interaction-Aware Crowd Navigation via Augmented Relational Graph Learning

机译:通过增强关系图学习的互动感知人群导航

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Safe and effective navigation with a socially-compliant manner in crowd environment is an essential yet challenging task for mobile robots. Previous works have shown the advantages of deep reinforcement learning in learning socially cooperative navigation policy. However, most previous learning methods incur slow convergence and limited action space because they focus on value-based models, which only learn the discrete action navigation policy under sparse rewards. To overcome these limitations, an augmented relational graph based reinforcement learning method CEM-RGL is proposed, which incorporates cross entropy method(CEM) into a relational graph learning(RGL) framework to get sufficient samples in continuous state-action space during training; and introduces graph attention network(GAT) to extract efficient and scalable representation for crowd-robot interaction. A reward shaping technique is implied to accelerate the training convergence. Evaluation compared with the state-of-the-art methods in simulation experiments demonstrates that the crowd navigation policy with our augmented training method has a higher success rate and a higher cumulative reward return.
机译:在人群环境中具有社会合规方式的安全有效导航是移动机器人的必不可少的挑战性任务。以前的作品表明了学习社会合作导航政策的深度增强学习的优势。但是,最先前的学习方法会导致收敛缓慢和有限的动作空间,因为它们专注于基于价值的模型,它只在稀疏奖励下学习离散动作导航策略。为了克服这些限制,提出了一种基于增强的基于关系图的加强学习方法CEM-RGL,它将交叉熵方法(CEM)结合到一个关系图学习(RGL)框架中,以在训练期间在连续的状态动作空间中获得足够的样本;并介绍了图表关注网络(GAT)以提取人群机器人交互的高效和可扩展表示。暗示奖励塑造技术以加速训练融合。与仿真实验中的最先进方法相比的评估表明,具有我们增强培训方法的人群导航政策具有更高的成功率和更高的累积奖励回报。

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