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Localization of probabilistic robot formations in SLAM

María T. Lázaro, José A. Castellanos

Year
2010
Citations
26

Abstract

This paper presents an EKF-based approach to the problem of robot formation pose tracking in SLAM when a previously built feature-based stochastic map of a navigation area is available. We show how a direct implementation of the EKF algorithm leads to inconsistency in the estimated localization. We justify the origin of the anomalous behaviour of the filter in the time-correlated nature of the measurement noise sequence. A novel solution based on the measurement differencing technique is proposed to drive the solution of the EKF towards consistency. Both simulation and real experiments with a 3-robot triangular-shaped formation are reported.

Keywords

Extended Kalman filterSimultaneous localization and mappingProbabilistic logicRobotArtificial intelligenceComputer scienceComputer visionNoise (video)Consistency (knowledge bases)Tracking (education)

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