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Deep reinforcement learning based mobile robot navigation: A review

机译:基于深度强化学习的移动机器人导航:综述

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Navigation is a fundamental problem of mobile robots, for which Deep Reinforcement Learning (DRL) has received significant attention because of its strong representation and experience learning abilities. There is a growing trend of applying DRL to mobile robot navigation. In this paper, we review DRL methods and DRL-based navigation frameworks. Then we systematically compare and analyze the relationship and differences between four typical application scenarios: local obstacle avoidance, indoor navigation, multi-robot navigation, and social navigation. Next, we describe the development of DRL-based navigation. Last, we discuss the challenges and some possible solutions regarding DRL-based navigation.
机译:导航是移动机器人的一个根本问题,因为它的强度增强学习(DRL)受到了重大关注,因为其强烈的代表性和体验学习能力。 将DRL应用于移动机器人导航,存在日益增长的趋势。 在本文中,我们查看了DRL方法和基于DRL的导航框架。 然后,我们系统地比较并分析四种典型应用场景之间的关系和差异:本地障碍避免,室内导航,多机器人导航和社会导航。 接下来,我们描述了基于DRL的导航的发展。 最后,我们讨论了关于基于DRL的导航的挑战和一些可能的解决方案。

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