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Deep Reinforcement Learning for Localizability-Enhanced Navigation in Dynamic Human Environments

Authors :
Chen, Yuan
Qiu, Quecheng
Liu, Xiangyu
Chen, Guangda
Yao, Shunyi
Peng, Jie
Ji, Jianmin
Zhang, Yanyong
Publication Year :
2023

Abstract

Reliable localization is crucial for autonomous robots to navigate efficiently and safely. Some navigation methods can plan paths with high localizability (which describes the capability of acquiring reliable localization). By following these paths, the robot can access the sensor streams that facilitate more accurate location estimation results by the localization algorithms. However, most of these methods require prior knowledge and struggle to adapt to unseen scenarios or dynamic changes. To overcome these limitations, we propose a novel approach for localizability-enhanced navigation via deep reinforcement learning in dynamic human environments. Our proposed planner automatically extracts geometric features from 2D laser data that are helpful for localization. The planner learns to assign different importance to the geometric features and encourages the robot to navigate through areas that are helpful for laser localization. To facilitate the learning of the planner, we suggest two techniques: (1) an augmented state representation that considers the dynamic changes and the confidence of the localization results, which provides more information and allows the robot to make better decisions, (2) a reward metric that is capable to offer both sparse and dense feedback on behaviors that affect localization accuracy. Our method exhibits significant improvements in lost rate and arrival rate when tested in previously unseen environments.

Details

Database :
arXiv
Publication Type :
Report
Accession number :
edsarx.2303.12354
Document Type :
Working Paper