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An efficient fastslam algorithm for generating maps of large-scale cyclic environments from raw laser range measurements

Dirk Hähnel, Wolfram Burgard, D. Fox, Sebastian Thrun

Year
2004
Citations
574

Abstract

The ability to learn a consistent model of its environment is a prerequisite for autonomous mobile robots. A particularly challenging problem in acquiring environment maps is that of closing loops; loops in the environment create challenging data association problems [J.-S. Gutman et al., 1999]. This paper presents a novel algorithm that combines Rao-Blackwellized particle filtering and scan matching. In our approach scan matching is used for minimizing odometric errors during mapping. A probabilistic model of the residual errors of scan matching process is then used for the resampling steps. This way the number of samples required is seriously reduced. Simultaneously we reduce the particle depletion problem that typically prevents the robot from closing large loops. We present extensive experiments that illustrate the superior performance of our approach compared to previous approaches.

Keywords

ResamplingComputer scienceClosing (real estate)Particle filterProbabilistic logicMatching (statistics)Simultaneous localization and mappingMobile robotArtificial intelligenceRange (aeronautics)

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