Linear Regression Algorithm against Device Diversity for the WLAN Indoor Localization System

Recent years have witnessed a growing interest in using WLAN fingerprint-based methods for the indoor localization system because of their cost-effectiveness and availability compared to other localization systems. In this system, the received signal strength (RSS) values are measured as the fingerp...

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Main Authors: Liye Zhang, Xiaoliang Meng, Chao Fang
Format: Article
Language:English
Published: Hindawi-Wiley 2021-01-01
Series:Wireless Communications and Mobile Computing
Online Access:http://dx.doi.org/10.1155/2021/5530396
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spelling doaj-3a174d1e7af9453f802747b178a71fcf2021-04-19T00:04:43ZengHindawi-WileyWireless Communications and Mobile Computing1530-86772021-01-01202110.1155/2021/5530396Linear Regression Algorithm against Device Diversity for the WLAN Indoor Localization SystemLiye Zhang0Xiaoliang Meng1Chao Fang2School of Computer Science and TechnologySchool of Computer Science and TechnologySchool of Computer Science and TechnologyRecent years have witnessed a growing interest in using WLAN fingerprint-based methods for the indoor localization system because of their cost-effectiveness and availability compared to other localization systems. In this system, the received signal strength (RSS) values are measured as the fingerprint from the access points (AP) at each reference point (RP) in the offline phase. However, signal strength variations across diverse devices become a major problem in this system, especially in the crowdsourcing-based localization system. In this paper, the device diversity problem and the adverse effects caused by this problem are analyzed firstly. Then, the intrinsic relationship between different RSS values collected by different devices is mined by the linear regression (LR) algorithm. Based on the analysis, the LR algorithm is proposed to create a unique radio map in the offline phase and precisely estimate the user’s location in the online phase. After applying the LR algorithm in the crowdsourcing systems, the device diversity problem is solved effectively. Finally, we verify the LR algorithm using the theoretical study of the probability of error detection. Experimental results in a typical office building show that the proposed method results in a higher reliability and localization accuracy.http://dx.doi.org/10.1155/2021/5530396
collection DOAJ
language English
format Article
sources DOAJ
author Liye Zhang
Xiaoliang Meng
Chao Fang
spellingShingle Liye Zhang
Xiaoliang Meng
Chao Fang
Linear Regression Algorithm against Device Diversity for the WLAN Indoor Localization System
Wireless Communications and Mobile Computing
author_facet Liye Zhang
Xiaoliang Meng
Chao Fang
author_sort Liye Zhang
title Linear Regression Algorithm against Device Diversity for the WLAN Indoor Localization System
title_short Linear Regression Algorithm against Device Diversity for the WLAN Indoor Localization System
title_full Linear Regression Algorithm against Device Diversity for the WLAN Indoor Localization System
title_fullStr Linear Regression Algorithm against Device Diversity for the WLAN Indoor Localization System
title_full_unstemmed Linear Regression Algorithm against Device Diversity for the WLAN Indoor Localization System
title_sort linear regression algorithm against device diversity for the wlan indoor localization system
publisher Hindawi-Wiley
series Wireless Communications and Mobile Computing
issn 1530-8677
publishDate 2021-01-01
description Recent years have witnessed a growing interest in using WLAN fingerprint-based methods for the indoor localization system because of their cost-effectiveness and availability compared to other localization systems. In this system, the received signal strength (RSS) values are measured as the fingerprint from the access points (AP) at each reference point (RP) in the offline phase. However, signal strength variations across diverse devices become a major problem in this system, especially in the crowdsourcing-based localization system. In this paper, the device diversity problem and the adverse effects caused by this problem are analyzed firstly. Then, the intrinsic relationship between different RSS values collected by different devices is mined by the linear regression (LR) algorithm. Based on the analysis, the LR algorithm is proposed to create a unique radio map in the offline phase and precisely estimate the user’s location in the online phase. After applying the LR algorithm in the crowdsourcing systems, the device diversity problem is solved effectively. Finally, we verify the LR algorithm using the theoretical study of the probability of error detection. Experimental results in a typical office building show that the proposed method results in a higher reliability and localization accuracy.
url http://dx.doi.org/10.1155/2021/5530396
work_keys_str_mv AT liyezhang linearregressionalgorithmagainstdevicediversityforthewlanindoorlocalizationsystem
AT xiaoliangmeng linearregressionalgorithmagainstdevicediversityforthewlanindoorlocalizationsystem
AT chaofang linearregressionalgorithmagainstdevicediversityforthewlanindoorlocalizationsystem
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