Comparison of different time-domain feature extraction methods on facial gestures' EMGS

Electromyography is a bio-signal which is applied in various fields of study such as motor control, neuromuscular physiology, movement disorders, postural control, human ma-chine/robot interaction and so on. Processing of these bio-signals is the essential fact during each application and there stil...

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Main Authors: Hamedi, Mahyar, Salleh, S. H., Mohd. Noor, Alias, Afizam, I. K.
Format: Article
Language:English
Published: 2012
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Online Access:http://eprints.utm.my/id/eprint/46712/1/M.Hamedi_2012_Comparison%20of%20different%20time-domain%20feature%20extraction%20methods%20on%20facial%20gestures%27%20EMGS.pdf
http://eprints.utm.my/id/eprint/46712/
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spelling my.utm.467122017-09-18T04:47:51Z http://eprints.utm.my/id/eprint/46712/ Comparison of different time-domain feature extraction methods on facial gestures' EMGS Hamedi, Mahyar Salleh, S. H. Mohd. Noor, Alias Afizam, I. K. QC Physics Electromyography is a bio-signal which is applied in various fields of study such as motor control, neuromuscular physiology, movement disorders, postural control, human ma-chine/robot interaction and so on. Processing of these bio-signals is the essential fact during each application and there still can be seen many challenges among researchers in this area. This paper is focused on the comparison between the classification performances by using different well known feature extraction methods on facial EMGs. Totally ten facial gestures namely smil-ing with both side of lips, smiling with left side of lips, smiling with right side of lips, opening the mouth like saying 'a' in apple word, clenching the molar teeth, gesturing 'notch' by raising the eyebrows, frowning, closing the both eyes, closing the right eye and closing the left eye are recorded from 6 participants through 3 bi-polar recording channels. In the first step, the signals are filtered to get prepared for better processing. Then, time-domain feature extraction methods INT, MAV, MAVS, RMS, VAR, and WL are applied to signals. Finally, the features are classified by Fuzzy C-Means in order to achieve the recognition accuracy and evaluate the performance of each feature extraction method. This work is carried out by revealing that, RMS gives the most probability amplitude approximation in a steady power and non-tiring contraction when the sig-nal is modeled as Gaussian random process. In contrary, WL proved its weakness in estimating the value of facial EMGs. 2012 Article PeerReviewed application/pdf en http://eprints.utm.my/id/eprint/46712/1/M.Hamedi_2012_Comparison%20of%20different%20time-domain%20feature%20extraction%20methods%20on%20facial%20gestures%27%20EMGS.pdf Hamedi, Mahyar and Salleh, S. H. and Mohd. Noor, Alias and Afizam, I. K. (2012) Comparison of different time-domain feature extraction methods on facial gestures' EMGS. Progress in Electromagnetics Research Symposium . pp. 1897-1900. ISSN 1559-9450
institution Universiti Teknologi Malaysia
building UTM Library
collection Institutional Repository
continent Asia
country Malaysia
content_provider Universiti Teknologi Malaysia
content_source UTM Institutional Repository
url_provider http://eprints.utm.my/
language English
topic QC Physics
spellingShingle QC Physics
Hamedi, Mahyar
Salleh, S. H.
Mohd. Noor, Alias
Afizam, I. K.
Comparison of different time-domain feature extraction methods on facial gestures' EMGS
description Electromyography is a bio-signal which is applied in various fields of study such as motor control, neuromuscular physiology, movement disorders, postural control, human ma-chine/robot interaction and so on. Processing of these bio-signals is the essential fact during each application and there still can be seen many challenges among researchers in this area. This paper is focused on the comparison between the classification performances by using different well known feature extraction methods on facial EMGs. Totally ten facial gestures namely smil-ing with both side of lips, smiling with left side of lips, smiling with right side of lips, opening the mouth like saying 'a' in apple word, clenching the molar teeth, gesturing 'notch' by raising the eyebrows, frowning, closing the both eyes, closing the right eye and closing the left eye are recorded from 6 participants through 3 bi-polar recording channels. In the first step, the signals are filtered to get prepared for better processing. Then, time-domain feature extraction methods INT, MAV, MAVS, RMS, VAR, and WL are applied to signals. Finally, the features are classified by Fuzzy C-Means in order to achieve the recognition accuracy and evaluate the performance of each feature extraction method. This work is carried out by revealing that, RMS gives the most probability amplitude approximation in a steady power and non-tiring contraction when the sig-nal is modeled as Gaussian random process. In contrary, WL proved its weakness in estimating the value of facial EMGs.
format Article
author Hamedi, Mahyar
Salleh, S. H.
Mohd. Noor, Alias
Afizam, I. K.
author_facet Hamedi, Mahyar
Salleh, S. H.
Mohd. Noor, Alias
Afizam, I. K.
author_sort Hamedi, Mahyar
title Comparison of different time-domain feature extraction methods on facial gestures' EMGS
title_short Comparison of different time-domain feature extraction methods on facial gestures' EMGS
title_full Comparison of different time-domain feature extraction methods on facial gestures' EMGS
title_fullStr Comparison of different time-domain feature extraction methods on facial gestures' EMGS
title_full_unstemmed Comparison of different time-domain feature extraction methods on facial gestures' EMGS
title_sort comparison of different time-domain feature extraction methods on facial gestures' emgs
publishDate 2012
url http://eprints.utm.my/id/eprint/46712/1/M.Hamedi_2012_Comparison%20of%20different%20time-domain%20feature%20extraction%20methods%20on%20facial%20gestures%27%20EMGS.pdf
http://eprints.utm.my/id/eprint/46712/
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score 13.211869