DeepMNavigate: Deep Reinforced Multi-Robot Navigation Unifying Local & Global Collision Avoidance

IROS(2020)

引用 19|浏览102
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摘要
We present a novel algorithm (DeepMNavigate) for global multi-agent navigation in dense scenarios using deep reinforcement learning. Our approach uses local and global information for each robot based on motion information maps. We use a three-layer CNN that uses these maps as input and generate a suitable action to drive each robot to its goal position. Our approach is general, learns an optimal policy using a multi-scenario, multi-state training algorithm, and can directly handle raw sensor measurements for local observations. We demonstrate the performance on complex, dense benchmarks with narrow passages on environments with tens of agents. We highlight the algorithm's benefits over prior learning methods and geometric decentralized algorithms in complex scenarios.
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关键词
global multiagent navigation,dense scenarios,deep reinforcement learning,local information,global information,motion information maps,three-layer CNN,goal position,optimal policy,multistate training algorithm,raw sensor measurements,local observations,dense benchmarks,complex benchmarks,local collision avoidance,global collision avoidance,deep reinforced multirobot navigation,multiscenario algorithm,DeepMNavigate algorithm,DRL
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