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Towards effective localization in dynamic environments

Dali Sun, Florian Geißer, Bernhard Nebel

发表年份
2016
引用次数
32

摘要

Localization in dynamic environments is still a challenging problem in robotics - especially if rapid and large changes occur irregularly. Inspired by SLAM algorithms, our Bayesian approach to this so-called dynamic localization problem divides it into a localization problem and a mapping problem, respectively. To tackle the localization problem we use a particle filter, coupled with a distance filter and a scan matching method, which achieves a more robust localization against dynamic obstacles. For the mapping problem we use an extended sensor model which results in an effective and precise map update effect. We compare our approach against other localization methods and evaluate the impact the map update effect has on the localization in dynamic environments.

关键词

Simultaneous localization and mappingComputer scienceArtificial intelligenceMatching (statistics)Computer visionRoboticsParticle filterDynamic Bayesian networkFilter (signal processing)Robot

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