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Autonomous Exploration Under Uncertainty via Deep Reinforcement Learning on Graphs

Fanfei Chen, John D. Martin, Yewei Huang, Jinkun Wang, Brendan Englot

Year
2020
Citations
74

Abstract

We consider an autonomous exploration problem in which a range-sensing mobile robot is tasked with accurately mapping the landmarks in an a priori unknown environment efficiently in real-time; it must choose sensing actions that both curb localization uncertainty and achieve information gain. For this problem, belief space planning methods that forward- simulate robot sensing and estimation may often fail in real-time implementation, scaling poorly with increasing size of the state, belief and action spaces. We propose a novel approach that uses graph neural networks (GNNs) in conjunction with deep reinforcement learning (DRL), enabling decision-making over graphs containing exploration information to predict a robot's optimal sensing action in belief space. The policy, which is trained in different random environments without human intervention, offers a real-time, scalable decision-making process whose high-performance exploratory sensing actions yield accurate maps and high rates of information gain.

Keywords

Reinforcement learningComputer scienceScalabilityArtificial intelligenceRobotMobile robotMachine learningA priori and a posterioriMotion planning

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