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Visual topological SLAM and global localization

Adrien Angeli, Stéphane Doncieux, Jean-Arcady Meyer, David Filliat

Year
2009
Citations
75

Abstract

Visual localization and mapping for mobile robots has been achieved with a large variety of methods. Among them, topological navigation using vision has the advantage of offering a scalable representation, and of relying on a common and affordable sensor. In previous work, we developed such an incremental and real-time topological mapping and localization solution, without using any metrical information, and by relying on a Bayesian visual loop-closure detection algorithm. In this paper, we propose an extension of this work by integrating metrical information from robot odometry in the topological map, so as to obtain a globally consistent environment model. Also, we demonstrate the performance of our system on the global localization task, where the robot has to determine its position in a map acquired beforehand.

Keywords

Topological mapSimultaneous localization and mappingComputer scienceMobile robotArtificial intelligenceOdometryComputer visionRobotScalabilityVisual odometry

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