Random-Noise Denoising and Clutter Elimination of Human Respiration Movements Based on an Improved Time Window Selection Algorithm Using Wavelet Transform

This paper considers vital signs (VS) such as respiration movement detection of human subjects using an impulse ultra-wideband (UWB) through-wall radar with an improved sensing algorithm for random-noise de-noising and clutter elimination. One filter is used to improve the signal-to-noise ratio (SNR...

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Main Authors: Farnaz Mahmoudi Shikhsarmast, Tingting Lyu, Xiaolin Liang, Hao Zhang, Thomas Aaron Gulliver
Format: Article
Language:English
Published: MDPI AG 2018-12-01
Series:Sensors
Subjects:
Online Access:http://www.mdpi.com/1424-8220/19/1/95
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spelling doaj-caf8f5f4b83d4bcd8c54c2bc8b4022ef2020-11-24T23:28:37ZengMDPI AGSensors1424-82202018-12-011919510.3390/s19010095s19010095Random-Noise Denoising and Clutter Elimination of Human Respiration Movements Based on an Improved Time Window Selection Algorithm Using Wavelet TransformFarnaz Mahmoudi Shikhsarmast0Tingting Lyu1Xiaolin Liang2Hao Zhang3Thomas Aaron Gulliver4Department of Electronic Engineering, Ocean University of China, Qing Dao 266100, ChinaDepartment of Electronic Engineering, Ocean University of China, Qing Dao 266100, ChinaScience and Technology on Electronic Test & Measurement Laboratory, The 41st Research Institute of CETC, Qingdao 266555, ChinaDepartment of Electronic Engineering, Ocean University of China, Qing Dao 266100, ChinaDepartment of Electrical Computer Engineering, University of Victoria, PO Box 1700, STN CSC, Victoria, BC V8W 2Y2, CanadaThis paper considers vital signs (VS) such as respiration movement detection of human subjects using an impulse ultra-wideband (UWB) through-wall radar with an improved sensing algorithm for random-noise de-noising and clutter elimination. One filter is used to improve the signal-to-noise ratio (SNR) of these VS signals. Using the wavelet packet decomposition, the standard deviation based spectral kurtosis is employed to analyze the signal characteristics to provide the distance estimate between the radar and human subject. The data size is reduced based on a defined region of interest (ROI), and this improves the system efficiency. The respiration frequency is estimated using a multiple time window selection algorithm. Experimental results are presented which illustrate the efficacy and reliability of this method. The proposed method is shown to provide better VS estimation than existing techniques in the literature.http://www.mdpi.com/1424-8220/19/1/95vital signultra-wideband impulse radarwavelet packet decomposition
collection DOAJ
language English
format Article
sources DOAJ
author Farnaz Mahmoudi Shikhsarmast
Tingting Lyu
Xiaolin Liang
Hao Zhang
Thomas Aaron Gulliver
spellingShingle Farnaz Mahmoudi Shikhsarmast
Tingting Lyu
Xiaolin Liang
Hao Zhang
Thomas Aaron Gulliver
Random-Noise Denoising and Clutter Elimination of Human Respiration Movements Based on an Improved Time Window Selection Algorithm Using Wavelet Transform
Sensors
vital sign
ultra-wideband impulse radar
wavelet packet decomposition
author_facet Farnaz Mahmoudi Shikhsarmast
Tingting Lyu
Xiaolin Liang
Hao Zhang
Thomas Aaron Gulliver
author_sort Farnaz Mahmoudi Shikhsarmast
title Random-Noise Denoising and Clutter Elimination of Human Respiration Movements Based on an Improved Time Window Selection Algorithm Using Wavelet Transform
title_short Random-Noise Denoising and Clutter Elimination of Human Respiration Movements Based on an Improved Time Window Selection Algorithm Using Wavelet Transform
title_full Random-Noise Denoising and Clutter Elimination of Human Respiration Movements Based on an Improved Time Window Selection Algorithm Using Wavelet Transform
title_fullStr Random-Noise Denoising and Clutter Elimination of Human Respiration Movements Based on an Improved Time Window Selection Algorithm Using Wavelet Transform
title_full_unstemmed Random-Noise Denoising and Clutter Elimination of Human Respiration Movements Based on an Improved Time Window Selection Algorithm Using Wavelet Transform
title_sort random-noise denoising and clutter elimination of human respiration movements based on an improved time window selection algorithm using wavelet transform
publisher MDPI AG
series Sensors
issn 1424-8220
publishDate 2018-12-01
description This paper considers vital signs (VS) such as respiration movement detection of human subjects using an impulse ultra-wideband (UWB) through-wall radar with an improved sensing algorithm for random-noise de-noising and clutter elimination. One filter is used to improve the signal-to-noise ratio (SNR) of these VS signals. Using the wavelet packet decomposition, the standard deviation based spectral kurtosis is employed to analyze the signal characteristics to provide the distance estimate between the radar and human subject. The data size is reduced based on a defined region of interest (ROI), and this improves the system efficiency. The respiration frequency is estimated using a multiple time window selection algorithm. Experimental results are presented which illustrate the efficacy and reliability of this method. The proposed method is shown to provide better VS estimation than existing techniques in the literature.
topic vital sign
ultra-wideband impulse radar
wavelet packet decomposition
url http://www.mdpi.com/1424-8220/19/1/95
work_keys_str_mv AT farnazmahmoudishikhsarmast randomnoisedenoisingandcluttereliminationofhumanrespirationmovementsbasedonanimprovedtimewindowselectionalgorithmusingwavelettransform
AT tingtinglyu randomnoisedenoisingandcluttereliminationofhumanrespirationmovementsbasedonanimprovedtimewindowselectionalgorithmusingwavelettransform
AT xiaolinliang randomnoisedenoisingandcluttereliminationofhumanrespirationmovementsbasedonanimprovedtimewindowselectionalgorithmusingwavelettransform
AT haozhang randomnoisedenoisingandcluttereliminationofhumanrespirationmovementsbasedonanimprovedtimewindowselectionalgorithmusingwavelettransform
AT thomasaarongulliver randomnoisedenoisingandcluttereliminationofhumanrespirationmovementsbasedonanimprovedtimewindowselectionalgorithmusingwavelettransform
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