Surface electromyography hand motion classification using time domain features and artificial neural network for real time application

This paper presents the efficiency of time domain features and Artificial Neural Network (ANN) classifier for real time Surface Electromyography (SEMG) hand motion classification application in terms of real time delay and classification accuracy. For hand motion to be differentiated, SEMG data goes...

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Main Authors: Ahmad Nadzri, Ahmad Akmal, Mohd Zaini, Mohd Hanif, Ahmad, Siti Anom, Marhaban, Mohammad Hamiruce, Jaafar, Haslina, Md. Ali, Sawal Hamid
Format: Article
Language:English
Published: American Scientific Publishers 2014
Online Access:http://psasir.upm.edu.my/id/eprint/35538/1/Surface%20electromyography%20hand%20motion%20classification%20using%20time%20domain%20features%20and%20artificial%20neural%20network%20for%20real%20time%20application.pdf
http://psasir.upm.edu.my/id/eprint/35538/
http://www.aspbs.com/asem/contents_asem2014.htm#v6n10
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spelling my.upm.eprints.355382016-10-12T08:36:13Z http://psasir.upm.edu.my/id/eprint/35538/ Surface electromyography hand motion classification using time domain features and artificial neural network for real time application Ahmad Nadzri, Ahmad Akmal Mohd Zaini, Mohd Hanif Ahmad, Siti Anom Marhaban, Mohammad Hamiruce Jaafar, Haslina Md. Ali, Sawal Hamid This paper presents the efficiency of time domain features and Artificial Neural Network (ANN) classifier for real time Surface Electromyography (SEMG) hand motion classification application in terms of real time delay and classification accuracy. For hand motion to be differentiated, SEMG data goes through pre-processing, feature extraction and classification steps. Data were collected from 10 healthy subjects. Two muscles were assessed which are flexor carpi ulnaris (FCU) and extensor carpi radialis (ECR) during 3 hand motions of wrist flexion (WF), wrist extension (WE) and co-contraction (CC) for 3 repetitions. The SEMG signals was first segmented into 132.5 ms window, full wave rectified and with a parallel process of comparing raw signal and a filtered signal using a 6 Hz low pass Butterworth filter. Five time domain features of mean absolute value (MAV), variance (VAR), root mean square (RMS), integrated absolute value (IEMG) and waveform length (WL) are used for feature extraction. Feed Forward Neural Network with 10 hidden neurons and 3 output neurons is used as classifier. First 2 repetitions of motion were used for training while the last repetition was used for classification testing. Features were added from 1 to 5 and tested for classification accuracy and computational times. Simulation computational times were recorded at pre-processing, feature extraction and classification steps. Meanwhile, hardware computational steps were recorded at pre-processing and feature extraction steps. It can be concluded that time domain features are efficient for real time application with 6 ms simulation delay. However, only MAV, IEMG, and WL is suitable for hardware with 68.6 ms delay. Meanwhile, the ANN classifier is unsuitable for real time application with 268 ms delay despite having achieving good accuracy of 92%. American Scientific Publishers 2014 Article PeerReviewed application/pdf en http://psasir.upm.edu.my/id/eprint/35538/1/Surface%20electromyography%20hand%20motion%20classification%20using%20time%20domain%20features%20and%20artificial%20neural%20network%20for%20real%20time%20application.pdf Ahmad Nadzri, Ahmad Akmal and Mohd Zaini, Mohd Hanif and Ahmad, Siti Anom and Marhaban, Mohammad Hamiruce and Jaafar, Haslina and Md. Ali, Sawal Hamid (2014) Surface electromyography hand motion classification using time domain features and artificial neural network for real time application. Advanced Science, Engineering and Medicine, 6 (8). pp. 917-920. ISSN 2164-6627; ESSN: 2164-6635 http://www.aspbs.com/asem/contents_asem2014.htm#v6n10 10.1166/asem.2014.1598
institution Universiti Putra Malaysia
building UPM Library
collection Institutional Repository
continent Asia
country Malaysia
content_provider Universiti Putra Malaysia
content_source UPM Institutional Repository
url_provider http://psasir.upm.edu.my/
language English
description This paper presents the efficiency of time domain features and Artificial Neural Network (ANN) classifier for real time Surface Electromyography (SEMG) hand motion classification application in terms of real time delay and classification accuracy. For hand motion to be differentiated, SEMG data goes through pre-processing, feature extraction and classification steps. Data were collected from 10 healthy subjects. Two muscles were assessed which are flexor carpi ulnaris (FCU) and extensor carpi radialis (ECR) during 3 hand motions of wrist flexion (WF), wrist extension (WE) and co-contraction (CC) for 3 repetitions. The SEMG signals was first segmented into 132.5 ms window, full wave rectified and with a parallel process of comparing raw signal and a filtered signal using a 6 Hz low pass Butterworth filter. Five time domain features of mean absolute value (MAV), variance (VAR), root mean square (RMS), integrated absolute value (IEMG) and waveform length (WL) are used for feature extraction. Feed Forward Neural Network with 10 hidden neurons and 3 output neurons is used as classifier. First 2 repetitions of motion were used for training while the last repetition was used for classification testing. Features were added from 1 to 5 and tested for classification accuracy and computational times. Simulation computational times were recorded at pre-processing, feature extraction and classification steps. Meanwhile, hardware computational steps were recorded at pre-processing and feature extraction steps. It can be concluded that time domain features are efficient for real time application with 6 ms simulation delay. However, only MAV, IEMG, and WL is suitable for hardware with 68.6 ms delay. Meanwhile, the ANN classifier is unsuitable for real time application with 268 ms delay despite having achieving good accuracy of 92%.
format Article
author Ahmad Nadzri, Ahmad Akmal
Mohd Zaini, Mohd Hanif
Ahmad, Siti Anom
Marhaban, Mohammad Hamiruce
Jaafar, Haslina
Md. Ali, Sawal Hamid
spellingShingle Ahmad Nadzri, Ahmad Akmal
Mohd Zaini, Mohd Hanif
Ahmad, Siti Anom
Marhaban, Mohammad Hamiruce
Jaafar, Haslina
Md. Ali, Sawal Hamid
Surface electromyography hand motion classification using time domain features and artificial neural network for real time application
author_facet Ahmad Nadzri, Ahmad Akmal
Mohd Zaini, Mohd Hanif
Ahmad, Siti Anom
Marhaban, Mohammad Hamiruce
Jaafar, Haslina
Md. Ali, Sawal Hamid
author_sort Ahmad Nadzri, Ahmad Akmal
title Surface electromyography hand motion classification using time domain features and artificial neural network for real time application
title_short Surface electromyography hand motion classification using time domain features and artificial neural network for real time application
title_full Surface electromyography hand motion classification using time domain features and artificial neural network for real time application
title_fullStr Surface electromyography hand motion classification using time domain features and artificial neural network for real time application
title_full_unstemmed Surface electromyography hand motion classification using time domain features and artificial neural network for real time application
title_sort surface electromyography hand motion classification using time domain features and artificial neural network for real time application
publisher American Scientific Publishers
publishDate 2014
url http://psasir.upm.edu.my/id/eprint/35538/1/Surface%20electromyography%20hand%20motion%20classification%20using%20time%20domain%20features%20and%20artificial%20neural%20network%20for%20real%20time%20application.pdf
http://psasir.upm.edu.my/id/eprint/35538/
http://www.aspbs.com/asem/contents_asem2014.htm#v6n10
_version_ 1643831483500068864
score 13.160551