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Improved Fusion Machine Based on T-norm Operators for Robot Perception

Xinde Li, Xianzhong Dai, Dezert Jean

Year
2009
Citations
2

Abstract

Map reconstruction for autonomous mobile robots navigation needs to deal with uncertainties, imprecisions and even imperfections due to the limited sensors quality and knowledge acquisition. An improved fusion machine is proposed by replacing the classical conjunctive operator with T-norm operator in Dezert-Smarandache Theory (DSmT)framework for building grid map using noisy sonar measurements. An experiment using a Pioneer II mobile robot with 16 sonar detectors on board is done in a small indoor environment, and a 2D Map is built online with our self-developing software platform. A quantitative comparison of the results of our new method for map reconstruction with respect to the classical fusion machine is proposed. We show how the new approach developed in this work outperforms the classical one.

Keywords

SonarMobile robotComputer scienceSensor fusionArtificial intelligenceRobotComputer visionOperator (biology)Fuse (electrical)Software

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