Global Monocular Indoor Positioning of a Robotic Vehicle with a Floorplan

This paper presents a global monocular indoor positioning system for a robotic vehicle starting from a known pose. The proposed system does not depend on a dense 3D map, require prior environment exploration or installation, or rely on the scene remaining the same, photometrically or geometrically....

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Veröffentlicht in:Sensors (Basel, Switzerland) Switzerland), 2019-02, Vol.19 (3), p.634
Hauptverfasser: Noonan, John, Rotstein, Hector, Geva, Amir, Rivlin, Ehud
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Sprache:eng
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Zusammenfassung:This paper presents a global monocular indoor positioning system for a robotic vehicle starting from a known pose. The proposed system does not depend on a dense 3D map, require prior environment exploration or installation, or rely on the scene remaining the same, photometrically or geometrically. The approach presents a new way of providing global positioning relying on the sparse knowledge of the building floorplan by utilizing special algorithms to resolve the unknown scale through wall⁻plane association. This algorithm presented finds correspondences between walls of the floorplan and planar structures present in the 3D point cloud. In order to extract planes from point clouds that contain scale ambiguity, the (SIPR) algorithm was developed. The best wall⁻plane correspondence is used as an external constraint to a custom Bundle Adjustment optimization which refines the motion estimation solution and enforces a global scale solution. A necessary condition is that only wall needs to be in view. The feasibility of using the algorithms is tested with synthetic and real-world data; extensive testing is performed in an indoor simulation environment using the and . The system performs consistently across all three types of data. The tests presented in this paper show that the standard deviation of the error did not exceed 6 cm.
ISSN:1424-8220
1424-8220
DOI:10.3390/s19030634