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Autocalibration of a wireless positioning network with a FastSLAM algorithm

Fernando Seco, Antonio R. Jiménez

发表年份
2017
引用次数
9

摘要

The calibration (measurement of the position) of a network of wireless nodes used for indoor localization purposes is a tedious process and prone to errors if done manually. This paper presents a method for the autocalibration of that network, using the measurement of the received signal strength (RSS) of RF signals coming from the nodes, and captured while a person is taking a random walk in the environment. The calibration method is adapted from a Simultaneous Localization and Mapping (SLAM) technique from Robotics, and is based on a Bayesian particle filter modeling the unknown position of the user and the location of the beacons. Information coming from RSS measurements is incorporated to the filter using a rather generic measurement model (the path loss law), producing a sequence of beacon nodes position estimates with decreasing uncertainty over time. The accuracy and convergence of the method can be further enhanced by using pedestrian dead-reckoning (PDR) techniques from the handheld smartphone used to capture the RF data. The method is demonstrated with a deployment of 60 unknown position active RFID tags (and 4 known position tags) in an indoor environment, and a trajectory lasting 1054 s. The results are a median beacon positioning error of 4.9 m using only the RSS information, and 3.4 m if PDR information is incorporated to the particle filter. This error can be further decreased by adding the results of more calibration routes.

关键词

RSSBeaconComputer scienceParticle filterSimultaneous localization and mappingDead reckoningArtificial intelligenceComputer visionPosition (finance)Calibration

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