Indoor Positioning Using WLAN Signal Fingerprint Matching and Path Evaluation with Retroactive Adjustment on Mobile Devices
Date
Authors
Journal Title
Journal ISSN
Volume Title
Publisher
Abstract
The availability of GNSS has spurred a plethora of location-aware services. However, GNSS are only reliably available outdoors, leaving a large gap for a solution in indoor environments where people spend most of their time. The ubiquity of mobile devices, and the many information sources available on them, provide many avenues for a potential indoor positioning solution. A novel indoor positioning system is presented herein, using WLAN Signal Fingerprint Matching (WSFM) and a Path Evaluation and Retroactive Adjustment (PERA) module. The PERA module aims to improve the positioning accuracy by fusing the results obtained by WSFM with a multi-scale movement regularity evaluation. Using only WSFM, the implemented end-to-end positioning system yields room level positioning accuracy (less than 3-5 metres of error) 90% of the time across various environments. Employing the PERA module reduces positioning error to less than 2-3 metres 95% of the time across all testing settings.