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PERCEPTION

Active pose SLAM with RRT*

Joan Vallvé, Juan Andrade‐Cetto

Year
2015
Citations
39

Abstract

We propose a novel method for robotic exploration that evaluates paths that minimize both the joint path and map entropy per meter traveled. The method uses Pose SLAM to update the path estimate, and grows an RRT* tree to generate the set of candidate paths. This action selection mechanism contrasts with previous appoaches in which the action set was built heuristically from a sparse set of candidate actions. The technique favorably compares agains the classical frontier-based exploration and other Active Pose SLAM methods in simulations in a common publicly available dataset.

Keywords

Computer scienceSimultaneous localization and mappingArtificial intelligencePath (computing)Set (abstract data type)Entropy (arrow of time)Action selectionRobotMobile robot

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