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Multi-Robot Active Sensing and Environmental Model Learning With Distributed Gaussian Process

Do-Hyun Jang, Jaehyun Yoo, Clark Youngdong Son, Dabin Kim, H. Jin Kim

2020IEEE Robotics and Automation Letters77 citationsDOI

Abstract

This letter deals with the problem of multiple robots working together to explore and gather at the global maximum of the unknown field. Given noisy sensor measurements obtained at the location of robots with no prior knowledge about the environmental map, Gaussian process regression can be an efficient solution to construct a map that represents spatial information with confidence intervals. However, because the conventional Gaussian process algorithm operates in a centralized manner, it is difficult to process information coming from multiple distributed sensors in real-time. In this work, we propose a multi-robot exploration algorithm that deals with the following challenges: i) distributed environmental map construction using networked sensing platforms; ii) online learning using successive measurements suitable for a multi-robot team; iii) multi-agent coordination to discover the highest peak of an unknown environmental field with collision avoidance. We demonstrate the effectiveness of our algorithm via simulation and a topographic survey experiment with multiple UAVs.

Topics & Concepts

RobotGaussian processConstruct (python library)Computer scienceProcess (computing)KrigingField (mathematics)Artificial intelligenceGaussianSpatial analysisCollision avoidanceData miningReal-time computingMachine learningComputer visionCollisionRemote sensingGeographyMathematicsProgramming languagePure mathematicsPhysicsComputer securityOperating systemQuantum mechanicsDistributed Control Multi-Agent SystemsEnergy Efficient Wireless Sensor NetworksTarget Tracking and Data Fusion in Sensor Networks
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