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Radar SLAM for Autonomous Indoor Grinding

Nils Mandischer, Sami Charaf Eddine, Mathias Huesing, Burkhard Corves

Year
2020
Citations
14

Abstract

In the EU project Bots2Rec an autonomous asbestos reconstruction unit is developed by the Institute of Mechanism Theory, Machine Dynamics and Robotics (IGMR) of RWTH Aachen University. In the hazardous environment the mobile robot is expected to localize itself relative to the walls. Due to the heavy dust formation during and after grinding tasks, solely laser-based sensing is not reliable. Therefore, Bot2ReC deploys an additional 2D radar sensor to compensate for restricted visibility. In this work the developed online radar SLAM for indoor environments is presented. This method is based on the probabilistic iterative correspondence algorithm utilizing the Mahalanobis metric and improves it towards online capability. Further, a radar filter is deployed to reduce the data load.

Keywords

Computer scienceArtificial intelligenceMobile robotRadarRoboticsComputer visionMahalanobis distanceRobotVisibilityKalman filter

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