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Spatial learning for navigation in dynamic environments

Brian Yamauchi, Randall D. Beer

Year
1996
Citations
156

Abstract

This article describes techniques that have been developed for spatial learning in dynamic environments and a mobile robot system, ELDEN, that integrates these techniques for exploration and navigation. In this research, we introduce the concept of adaptive place networks, incrementally-constructed spatial representations that incorporate variable-confidence links to model uncertainty about topological adjacency. These networks guide the robot's navigation while constantly adapting to any topological changes that are encountered. ELDEN integrates these networks with a reactive controller that is robust to transient changes in the environment and a relocalization system that uses evidence grids to recalibrate dead reckoning.

Keywords

Computer scienceRobotMobile robotMobile robot navigationAdjacency listController (irrigation)Variable (mathematics)Artificial intelligenceDead reckoningDistributed computing

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