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Muscles data compression in body sensor network using the principal component analysis in wavelet domain

[Image: see text] Introduction: Body sensor network is a key technology that is used for supervising the physiological information from a long distance that enables physicians to predict and diagnose effectively the different conditions. These networks include small sensors with the ability of sensi...

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Autores principales: Yekani Khoei, Elmira, Hassannejad, Reza, Mozaffari Tazehkand, Behzad
Formato: Online Artículo Texto
Lenguaje:English
Publicado: Tabriz University of Medical Sciences 2015
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC4401169/
https://www.ncbi.nlm.nih.gov/pubmed/25901292
http://dx.doi.org/10.15171/bi.2015.03
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author Yekani Khoei, Elmira
Hassannejad, Reza
Mozaffari Tazehkand, Behzad
author_facet Yekani Khoei, Elmira
Hassannejad, Reza
Mozaffari Tazehkand, Behzad
author_sort Yekani Khoei, Elmira
collection PubMed
description [Image: see text] Introduction: Body sensor network is a key technology that is used for supervising the physiological information from a long distance that enables physicians to predict and diagnose effectively the different conditions. These networks include small sensors with the ability of sensing where there are some limitations in calculating and energy. Methods: In the present research, a new compression method based on the analysis of principal components and wavelet transform is used to increase the coherence. In the present method, the first analysis of the main principles is to find the principal components of the data in order to increase the coherence for increasing the similarity between the data and compression rate. Then, according to the ability of wavelet transform, data are decomposed to different scales. In restoration process of data only special parts are restored and some parts of the data that include noise are omitted. By noise omission, the quality of the sent data increases and good compression could be obtained. Results: Pilates practices were executed among twelve patients with various dysfunctions. The results showed 0.7210, 0.8898, 0.6548, 0.6765, 0.6009, 0.7435, 0.7651, 0.7623, 0.7736, 0.8596, 0.8856 and 0.7102 compression ratios in proposed method and 0.8256, 0.9315, 0.9340, 0.9509, 0.8998, 0.9556, 0.9732, 0.9580, 0.8046, 0.9448, 0.9573 and 0.9440 compression ratios in previous method (Tseng algorithm). Conclusion: Comparing compression rates and prediction errors with the available results show the exactness of the proposed method.
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spelling pubmed-44011692015-04-21 Muscles data compression in body sensor network using the principal component analysis in wavelet domain Yekani Khoei, Elmira Hassannejad, Reza Mozaffari Tazehkand, Behzad Bioimpacts Research Article [Image: see text] Introduction: Body sensor network is a key technology that is used for supervising the physiological information from a long distance that enables physicians to predict and diagnose effectively the different conditions. These networks include small sensors with the ability of sensing where there are some limitations in calculating and energy. Methods: In the present research, a new compression method based on the analysis of principal components and wavelet transform is used to increase the coherence. In the present method, the first analysis of the main principles is to find the principal components of the data in order to increase the coherence for increasing the similarity between the data and compression rate. Then, according to the ability of wavelet transform, data are decomposed to different scales. In restoration process of data only special parts are restored and some parts of the data that include noise are omitted. By noise omission, the quality of the sent data increases and good compression could be obtained. Results: Pilates practices were executed among twelve patients with various dysfunctions. The results showed 0.7210, 0.8898, 0.6548, 0.6765, 0.6009, 0.7435, 0.7651, 0.7623, 0.7736, 0.8596, 0.8856 and 0.7102 compression ratios in proposed method and 0.8256, 0.9315, 0.9340, 0.9509, 0.8998, 0.9556, 0.9732, 0.9580, 0.8046, 0.9448, 0.9573 and 0.9440 compression ratios in previous method (Tseng algorithm). Conclusion: Comparing compression rates and prediction errors with the available results show the exactness of the proposed method. Tabriz University of Medical Sciences 2015 2015-02-20 /pmc/articles/PMC4401169/ /pubmed/25901292 http://dx.doi.org/10.15171/bi.2015.03 Text en © 2015 The Author(s) This work is published by BioImpacts as an open access article distributed under the terms of the Creative Commons Attribution License (http://creativecommons.org/licenses/by-nc/4.0/). Non-commercial uses of the work are permitted, provided the original work is properly cited.
spellingShingle Research Article
Yekani Khoei, Elmira
Hassannejad, Reza
Mozaffari Tazehkand, Behzad
Muscles data compression in body sensor network using the principal component analysis in wavelet domain
title Muscles data compression in body sensor network using the principal component analysis in wavelet domain
title_full Muscles data compression in body sensor network using the principal component analysis in wavelet domain
title_fullStr Muscles data compression in body sensor network using the principal component analysis in wavelet domain
title_full_unstemmed Muscles data compression in body sensor network using the principal component analysis in wavelet domain
title_short Muscles data compression in body sensor network using the principal component analysis in wavelet domain
title_sort muscles data compression in body sensor network using the principal component analysis in wavelet domain
topic Research Article
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC4401169/
https://www.ncbi.nlm.nih.gov/pubmed/25901292
http://dx.doi.org/10.15171/bi.2015.03
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