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Deep reinforcement learning based mobile robot navigation: A review

Kai Zhu, Tao Zhang

Year
2021
Citations
458
Access
Open access

Abstract

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.

Keywords

Mobile robot navigationReinforcement learningMobile robotObstacle avoidanceComputer scienceArtificial intelligenceRobotNavigation systemObstacleHuman–computer interaction

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