Wi-Fi Fingerprint-Based Indoor Mobile User Localization Using Deep Learning

In recent years, deep learning has been used for Wi-Fi fingerprint-based localization to achieve a remarkable performance, which is expected to satisfy the increasing requirements of indoor location-based service (LBS). In this paper, we propose a Wi-Fi fingerprint-based indoor mobile user localizat...

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Main Authors: Junhang Bai, Yongliang Sun, Weixiao Meng, Cheng Li
Format: Article
Language:English
Published: Hindawi-Wiley 2021-01-01
Series:Wireless Communications and Mobile Computing
Online Access:http://dx.doi.org/10.1155/2021/6660990
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spelling doaj-942acb6c4e6f453080ae3602eea957e42021-02-15T12:52:48ZengHindawi-WileyWireless Communications and Mobile Computing1530-86691530-86772021-01-01202110.1155/2021/66609906660990Wi-Fi Fingerprint-Based Indoor Mobile User Localization Using Deep LearningJunhang Bai0Yongliang Sun1Weixiao Meng2Cheng Li3School of Computer Science and Technology, Nanjing Tech University, Nanjing 211816, ChinaSchool of Computer Science and Technology, Nanjing Tech University, Nanjing 211816, ChinaSchool of Electronics and Information Engineering, Harbin Institute of Technology, Harbin 150001, ChinaFaculty of Engineering and Applied Science, Memorial University, St. Johns, NL, A1B 3X5, CanadaIn recent years, deep learning has been used for Wi-Fi fingerprint-based localization to achieve a remarkable performance, which is expected to satisfy the increasing requirements of indoor location-based service (LBS). In this paper, we propose a Wi-Fi fingerprint-based indoor mobile user localization method that integrates a stacked improved sparse autoencoder (SISAE) and a recurrent neural network (RNN). We improve the sparse autoencoder by adding an activity penalty term in its loss function to control the neuron outputs in the hidden layer. The encoders of three improved sparse autoencoders are stacked to obtain high-level feature representations of received signal strength (RSS) vectors, and an SISAE is constructed for localization by adding a logistic regression layer as the output layer to the stacked encoders. Meanwhile, using the previous location coordinates computed by the trained SISAE as extra inputs, an RNN is employed to compute more accurate current location coordinates for mobile users. The experimental results demonstrate that the mean error of the proposed SISAE-RNN for mobile user localization can be reduced to 1.60 m.http://dx.doi.org/10.1155/2021/6660990
collection DOAJ
language English
format Article
sources DOAJ
author Junhang Bai
Yongliang Sun
Weixiao Meng
Cheng Li
spellingShingle Junhang Bai
Yongliang Sun
Weixiao Meng
Cheng Li
Wi-Fi Fingerprint-Based Indoor Mobile User Localization Using Deep Learning
Wireless Communications and Mobile Computing
author_facet Junhang Bai
Yongliang Sun
Weixiao Meng
Cheng Li
author_sort Junhang Bai
title Wi-Fi Fingerprint-Based Indoor Mobile User Localization Using Deep Learning
title_short Wi-Fi Fingerprint-Based Indoor Mobile User Localization Using Deep Learning
title_full Wi-Fi Fingerprint-Based Indoor Mobile User Localization Using Deep Learning
title_fullStr Wi-Fi Fingerprint-Based Indoor Mobile User Localization Using Deep Learning
title_full_unstemmed Wi-Fi Fingerprint-Based Indoor Mobile User Localization Using Deep Learning
title_sort wi-fi fingerprint-based indoor mobile user localization using deep learning
publisher Hindawi-Wiley
series Wireless Communications and Mobile Computing
issn 1530-8669
1530-8677
publishDate 2021-01-01
description In recent years, deep learning has been used for Wi-Fi fingerprint-based localization to achieve a remarkable performance, which is expected to satisfy the increasing requirements of indoor location-based service (LBS). In this paper, we propose a Wi-Fi fingerprint-based indoor mobile user localization method that integrates a stacked improved sparse autoencoder (SISAE) and a recurrent neural network (RNN). We improve the sparse autoencoder by adding an activity penalty term in its loss function to control the neuron outputs in the hidden layer. The encoders of three improved sparse autoencoders are stacked to obtain high-level feature representations of received signal strength (RSS) vectors, and an SISAE is constructed for localization by adding a logistic regression layer as the output layer to the stacked encoders. Meanwhile, using the previous location coordinates computed by the trained SISAE as extra inputs, an RNN is employed to compute more accurate current location coordinates for mobile users. The experimental results demonstrate that the mean error of the proposed SISAE-RNN for mobile user localization can be reduced to 1.60 m.
url http://dx.doi.org/10.1155/2021/6660990
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AT yongliangsun wififingerprintbasedindoormobileuserlocalizationusingdeeplearning
AT weixiaomeng wififingerprintbasedindoormobileuserlocalizationusingdeeplearning
AT chengli wififingerprintbasedindoormobileuserlocalizationusingdeeplearning
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