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Graph SLAM based mapping for AGV localization in large-scale warehouses

Patric Beinschob, Christoph Reinke

Year
2015
Citations
46

Abstract

The operation of industrial Automated Guided Vehicles (AGV) today requires designated infrastructure and readily available maps for their localization. In logistics, high effort and investment is necessary to enable the introduction of AGVs. Within the SICK AG coordinated EU-funded research project PAN-Robots we aim to reduce the installation time and costs dramatically by semi-automated plant exploration and localization based on natural landmarks. In this paper, we present our current mapping and localization results based on measurement data acquired at the site of our project partner Coca-Cola Iberian Partners in Bilbao, Spain. We evaluate our solution in terms of accuracy of the map, i.e. comparing landmark position estimates with a ground truth map of millimeter accuracy. The localization results are shown based on artificial landmarks as well as natural landmarks (gridmaps) based on the same graph based optimization solution.

Keywords

LandmarkSimultaneous localization and mappingComputer scienceRobotGround truthScale (ratio)Artificial intelligenceGraphPosition (finance)Data mining

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