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A SLAM algorithm based on range and bearing estimation of passive UHF-RFID tags

Francesco Martinelli, Fabrizio Romanelli

Year
2021
Citations
9

Abstract

In this paper we propose a Simultaneous Localization and Mapping (SLAM) algorithm for a mobile robot measuring the phase of the signal backscattered by a set of passive UHF-RFID tags, deployed in unknown position on the ceiling of the environment. The solution is based on a two level architecture. On a first (slave) level, a set of Multi-Hypothesis Extended Kalman Filters (MHEKF), one for each tag, estimates the range and the bearing of the tag with respect to the robot. On a second (master) level, the range and the bearing information of the responding tags is used in an EKF-SLAM algorithm which solves the SLAM problem. The proposed approach is more robust and computationally efficient with respect to other approaches available in the literature.

Keywords

Ultra high frequencySimultaneous localization and mappingExtended Kalman filterComputer scienceBearing (navigation)AlgorithmMobile robotCeiling (cloud)Kalman filterRange (aeronautics)

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