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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Series: | International Journal of Distributed Sensor Networks |
Online Access: | https://doi.org/10.1177/1550147719858229 |
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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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1724704094243782656 |