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Building local metrical and global topological maps using efficient scan matching approaches

René Iser, Friedrich M. Wahl

Year
2008
Citations
6

Abstract

This paper describes a new solution of the simultaneous localization and mapping (SLAM) problem. Instead of building one global consistent map, aimed by the most common SLAM techniques, we compute a set of local metrical maps and fuse them to a graph-like structure resulting in a topological map. Thus, our approach does not require a global metrical map consistency. The main contribution of this paper is an algorithm for closing spatial loops. Loop closing means, that a subset of the edges of the graph representing the topological map forms a cycle. To this end we describe a very efficient enhancement of the well-known RANSAC technique for actively recognizing regions explored by the robot previously. This improvement exploits the theory of the birthday attack whose mathematical background is known from cryptography. A fast sample-based scan matcher is employed to compute the local maps. We derive the covariance of the current robot pose from the sample distribution in order to perform a recognition only when loop closing is very likely. Our approach has been implemented and experimental results show its excellent performance.

Keywords

Simultaneous localization and mappingRANSACComputer scienceRobotArtificial intelligenceTopology (electrical circuits)Matching (statistics)ExploitGraphClosing (real estate)

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