Multi-targets device-free localization based on sparse coding in smart city

With the continuous expansion of the market of device-free localization in smart cities, the requirements of device-free localization technology are becoming higher and higher. The large amount of high-dimensional data generated by the existing device-free localization technology will improve the po...

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Main Authors: Min Zhao, Danyang Qin, Ruolin Guo, Guangchao Xu
Format: Article
Language:English
Published: SAGE Publishing 2019-06-01
Series:International Journal of Distributed Sensor Networks
Online Access:https://doi.org/10.1177/1550147719858229
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spelling doaj-c47c8bf794854f3e9d78ef1add2285792020-11-25T02:59:01ZengSAGE PublishingInternational Journal of Distributed Sensor Networks1550-14772019-06-011510.1177/1550147719858229Multi-targets device-free localization based on sparse coding in smart cityMin ZhaoDanyang QinRuolin GuoGuangchao XuWith the continuous expansion of the market of device-free localization in smart cities, the requirements of device-free localization technology are becoming higher and higher. The large amount of high-dimensional data generated by the existing device-free localization technology will improve the positioning accuracy as well as increase the positioning time and complexity. The positions required from single target to multi-targets become a further increasing difficulty for device-free localization. In order to satisfy the practical localizing application in smart city, an efficient multi-target device-free localization method is proposed based on a sparse coding model. To accelerate the positioning as well as improve the localization accuracy, a sparse coding-based iterative shrinkage threshold algorithm (SC-IA) is proposed and a subspace sparse coding-based iterative shrinkage threshold algorithm (SSC-IA) is presented for different practical application requirements. Experiments with practical dataset are performed for single-target and multi-targets localization, respectively. Compared with three typical machine learning algorithms: deep learning based on auto encoder, K -nearest neighbor, and orthogonal matching pursuit, experimental results show that the proposed sparse coding-based iterative shrinkage threshold algorithm and subspace sparse coding-based iterative shrinkage threshold algorithm can achieve high localization accuracy and low time cost simultaneously, so as to be more practical and applicable for the development of smart city.https://doi.org/10.1177/1550147719858229
collection DOAJ
language English
format Article
sources DOAJ
author Min Zhao
Danyang Qin
Ruolin Guo
Guangchao Xu
spellingShingle Min Zhao
Danyang Qin
Ruolin Guo
Guangchao Xu
Multi-targets device-free localization based on sparse coding in smart city
International Journal of Distributed Sensor Networks
author_facet Min Zhao
Danyang Qin
Ruolin Guo
Guangchao Xu
author_sort Min Zhao
title Multi-targets device-free localization based on sparse coding in smart city
title_short Multi-targets device-free localization based on sparse coding in smart city
title_full Multi-targets device-free localization based on sparse coding in smart city
title_fullStr Multi-targets device-free localization based on sparse coding in smart city
title_full_unstemmed Multi-targets device-free localization based on sparse coding in smart city
title_sort multi-targets device-free localization based on sparse coding in smart city
publisher SAGE Publishing
series International Journal of Distributed Sensor Networks
issn 1550-1477
publishDate 2019-06-01
description With the continuous expansion of the market of device-free localization in smart cities, the requirements of device-free localization technology are becoming higher and higher. The large amount of high-dimensional data generated by the existing device-free localization technology will improve the positioning accuracy as well as increase the positioning time and complexity. The positions required from single target to multi-targets become a further increasing difficulty for device-free localization. In order to satisfy the practical localizing application in smart city, an efficient multi-target device-free localization method is proposed based on a sparse coding model. To accelerate the positioning as well as improve the localization accuracy, a sparse coding-based iterative shrinkage threshold algorithm (SC-IA) is proposed and a subspace sparse coding-based iterative shrinkage threshold algorithm (SSC-IA) is presented for different practical application requirements. Experiments with practical dataset are performed for single-target and multi-targets localization, respectively. Compared with three typical machine learning algorithms: deep learning based on auto encoder, K -nearest neighbor, and orthogonal matching pursuit, experimental results show that the proposed sparse coding-based iterative shrinkage threshold algorithm and subspace sparse coding-based iterative shrinkage threshold algorithm can achieve high localization accuracy and low time cost simultaneously, so as to be more practical and applicable for the development of smart city.
url https://doi.org/10.1177/1550147719858229
work_keys_str_mv AT minzhao multitargetsdevicefreelocalizationbasedonsparsecodinginsmartcity
AT danyangqin multitargetsdevicefreelocalizationbasedonsparsecodinginsmartcity
AT ruolinguo multitargetsdevicefreelocalizationbasedonsparsecodinginsmartcity
AT guangchaoxu multitargetsdevicefreelocalizationbasedonsparsecodinginsmartcity
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