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Pedestrian Positioning Using a Double-Stacked Particle Filter in Indoor Wireless Networks

Authors
Sung, KwangjaeLee, Hyung KyuKim, Hwangnam
Issue Date
2-9월-2019
Publisher
MDPI
Keywords
indoor positioning; particle filtering; dead reckoning; received signal strength (RSS) fingerprinting; sensor fusion
Citation
SENSORS, v.19, no.18
Indexed
SCIE
SCOPUS
Journal Title
SENSORS
Volume
19
Number
18
URI
https://scholar.korea.ac.kr/handle/2021.sw.korea/62926
DOI
10.3390/s19183907
ISSN
1424-8220
Abstract
The indoor pedestrian positioning methods are affected by substantial bias and errors because of the use of cheap microelectromechanical systems (MEMS) devices (e.g., gyroscope and accelerometer) and the users' movements. Moreover, because radio-frequency (RF) signal values are changed drastically due to multipath fading and obstruction, the performance of RF-based localization systems may deteriorate in practice. To deal with this problem, various indoor localization methods that integrate the positional information gained from received signal strength (RSS) fingerprinting scheme and the motion of the user inferred by dead reckoning (DR) approach via Bayes filters have been suggested to accomplish more accurate localization results indoors. Among the Bayes filters, while the particle filter (PF) can offer the most accurate positioning performance, it may require substantial computation time due to use of many samples (particles) for high positioning accuracy. This paper introduces a pedestrian localization scheme performed on a mobile phone that leverages the RSS fingerprint-based method, dead reckoning (DR), and improved PF called a double-stacked particle filter (DSPF) in indoor environments. As a key element of our system, the DSPF algorithm is employed to correct the position of the user by fusing noisy location data gained by the RSS fingerprinting and DR schemes. By estimating the position of the user through the proposal distribution and target distribution obtained from multiple measurements, the DSPF method can offer better localization results compared to the Kalman filtering-based methods, and it can achieve competitive localization accuracy compared with PF while offering higher computational efficiency than PF. Experimental results demonstrate that the DSPF algorithm can achieve accurate and reliable localization with higher efficiency in computational cost compared with PF in indoor environments.
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공과대학 (전기전자공학부)
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