Human facial neural activities and gesture recognition for machine-interfacing applications

M Hamedi1, Sh-Hussain Salleh2, TS Tan2, K Ismail2, J Ali3, C Dee-Uam4, C Pavaganun4, PP Yupapin51Faculty of Biomedical and Health Science Engineering, Department of Biomedical Instrumentation and Signal Processing, University of Technology Malaysia, Skudai, 2Centre for Biomedical Engineering Transpo...

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Main Authors: Hamedi M, Salleh SH, Tan TS, Ismail K, Ali J, Dee-Uam C, Pavaganun C, Yupapin PP
Format: Article
Language:English
Published: Dove Medical Press 2011-12-01
Series:International Journal of Nanomedicine
Online Access:http://www.dovepress.com/human-facial-neural-activities-and-gesture-recognition-for-machine-int-a8895
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spelling doaj-87c1960a84d243f8a96116f8b76b61222020-11-24T21:31:55ZengDove Medical PressInternational Journal of Nanomedicine1176-91141178-20132011-12-012011default34613472Human facial neural activities and gesture recognition for machine-interfacing applicationsHamedi MSalleh SHTan TSIsmail KAli JDee-Uam CPavaganun CYupapin PPM Hamedi1, Sh-Hussain Salleh2, TS Tan2, K Ismail2, J Ali3, C Dee-Uam4, C Pavaganun4, PP Yupapin51Faculty of Biomedical and Health Science Engineering, Department of Biomedical Instrumentation and Signal Processing, University of Technology Malaysia, Skudai, 2Centre for Biomedical Engineering Transportation Research Alliance, 3Institute of Advanced Photonics Science, Nanotechnology Research Alliance, University of Technology Malaysia (UTM), Johor Bahru, Malaysia; 4College of Innovative Management, Valaya Alongkorn Rajabhat University, Pathum Thani, 5Nanoscale Science and Engineering Research Alliance (N'SERA), Advanced Research Center for Photonics, Faculty of Science, King Mongkut's Institute of Technology Ladkrabang, Bangkok, ThailandAbstract: The authors present a new method of recognizing different human facial gestures through their neural activities and muscle movements, which can be used in machine-interfacing applications. Human–machine interface (HMI) technology utilizes human neural activities as input controllers for the machine. Recently, much work has been done on the specific application of facial electromyography (EMG)-based HMI, which have used limited and fixed numbers of facial gestures. In this work, a multipurpose interface is suggested that can support 2–11 control commands that can be applied to various HMI systems. The significance of this work is finding the most accurate facial gestures for any application with a maximum of eleven control commands. Eleven facial gesture EMGs are recorded from ten volunteers. Detected EMGs are passed through a band-pass filter and root mean square features are extracted. Various combinations of gestures with a different number of gestures in each group are made from the existing facial gestures. Finally, all combinations are trained and classified by a Fuzzy c-means classifier. In conclusion, combinations with the highest recognition accuracy in each group are chosen. An average accuracy >90% of chosen combinations proved their ability to be used as command controllers.Keywords: neural system, neural activity, electromyography, machine learning, muscle activityhttp://www.dovepress.com/human-facial-neural-activities-and-gesture-recognition-for-machine-int-a8895
collection DOAJ
language English
format Article
sources DOAJ
author Hamedi M
Salleh SH
Tan TS
Ismail K
Ali J
Dee-Uam C
Pavaganun C
Yupapin PP
spellingShingle Hamedi M
Salleh SH
Tan TS
Ismail K
Ali J
Dee-Uam C
Pavaganun C
Yupapin PP
Human facial neural activities and gesture recognition for machine-interfacing applications
International Journal of Nanomedicine
author_facet Hamedi M
Salleh SH
Tan TS
Ismail K
Ali J
Dee-Uam C
Pavaganun C
Yupapin PP
author_sort Hamedi M
title Human facial neural activities and gesture recognition for machine-interfacing applications
title_short Human facial neural activities and gesture recognition for machine-interfacing applications
title_full Human facial neural activities and gesture recognition for machine-interfacing applications
title_fullStr Human facial neural activities and gesture recognition for machine-interfacing applications
title_full_unstemmed Human facial neural activities and gesture recognition for machine-interfacing applications
title_sort human facial neural activities and gesture recognition for machine-interfacing applications
publisher Dove Medical Press
series International Journal of Nanomedicine
issn 1176-9114
1178-2013
publishDate 2011-12-01
description M Hamedi1, Sh-Hussain Salleh2, TS Tan2, K Ismail2, J Ali3, C Dee-Uam4, C Pavaganun4, PP Yupapin51Faculty of Biomedical and Health Science Engineering, Department of Biomedical Instrumentation and Signal Processing, University of Technology Malaysia, Skudai, 2Centre for Biomedical Engineering Transportation Research Alliance, 3Institute of Advanced Photonics Science, Nanotechnology Research Alliance, University of Technology Malaysia (UTM), Johor Bahru, Malaysia; 4College of Innovative Management, Valaya Alongkorn Rajabhat University, Pathum Thani, 5Nanoscale Science and Engineering Research Alliance (N'SERA), Advanced Research Center for Photonics, Faculty of Science, King Mongkut's Institute of Technology Ladkrabang, Bangkok, ThailandAbstract: The authors present a new method of recognizing different human facial gestures through their neural activities and muscle movements, which can be used in machine-interfacing applications. Human–machine interface (HMI) technology utilizes human neural activities as input controllers for the machine. Recently, much work has been done on the specific application of facial electromyography (EMG)-based HMI, which have used limited and fixed numbers of facial gestures. In this work, a multipurpose interface is suggested that can support 2–11 control commands that can be applied to various HMI systems. The significance of this work is finding the most accurate facial gestures for any application with a maximum of eleven control commands. Eleven facial gesture EMGs are recorded from ten volunteers. Detected EMGs are passed through a band-pass filter and root mean square features are extracted. Various combinations of gestures with a different number of gestures in each group are made from the existing facial gestures. Finally, all combinations are trained and classified by a Fuzzy c-means classifier. In conclusion, combinations with the highest recognition accuracy in each group are chosen. An average accuracy >90% of chosen combinations proved their ability to be used as command controllers.Keywords: neural system, neural activity, electromyography, machine learning, muscle activity
url http://www.dovepress.com/human-facial-neural-activities-and-gesture-recognition-for-machine-int-a8895
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