High performance embedded system for wearable augmented reality of eye blinks, movement, muscle stress detection and observation

Abstract—Eyes blinking and its movement can portray many reasons of the body and health state. Eyes can blink intentionally and sometimes randomly even in sleeping mode. Thus, the aim of this paper is to discover and observe the relationship between the frequency of eye blink and the level of eye mu...

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Main Authors: Alias, Norma, Mohamad Mohsin, Husna, Mustaffa, Maizatul Nadirah, Farhah, Hafizah, Mohamed, Mohini
Format: Conference or Workshop Item
Published: 2015
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Online Access:http://eprints.utm.my/id/eprint/63428/
http://www.wherevent.com/detail/Effat-University-The-12th-Learning-and-Technology-Conference-Wearable-Tech-Wearable-Learning
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spelling my.utm.634282017-05-30T03:37:18Z http://eprints.utm.my/id/eprint/63428/ High performance embedded system for wearable augmented reality of eye blinks, movement, muscle stress detection and observation Alias, Norma Mohamad Mohsin, Husna Mustaffa, Maizatul Nadirah Farhah, Hafizah Mohamed, Mohini QA Mathematics Abstract—Eyes blinking and its movement can portray many reasons of the body and health state. Eyes can blink intentionally and sometimes randomly even in sleeping mode. Thus, the aim of this paper is to discover and observe the relationship between the frequency of eye blink and the level of eye muscle stress. The eye track data is fed directly into the electroencephalogram (EEG) record for parameter classification and identification. The EEG signal might have an artifact that has been analyzed and converted the observation into the mathematical library and repository software (HPC). The artificial neural network (ANN) is integrated with EEG digital data by the derivation of the mathematical modelling. The function of ANN is to train a large sparse digital data for future prediction of eye condition associated with the stress level. In order to validate the model and simulation, the numerical analysis and performance evaluation are compared to the real data set of eye therapy industry, IC Herbz Sdn Bhd. A library and repository software of mathematical model using EEG record data is developed to integrate with wearable augmented reality (WAR) based on EEG sensor device for predicting and monitoring the real time eye blinks, movement and muscle stress. 2015 Conference or Workshop Item PeerReviewed Alias, Norma and Mohamad Mohsin, Husna and Mustaffa, Maizatul Nadirah and Farhah, Hafizah and Mohamed, Mohini (2015) High performance embedded system for wearable augmented reality of eye blinks, movement, muscle stress detection and observation. In: The 12th Learning and Technology Conference "Wearable Tech / Wearable Learning", 12-13 April, 2015, Saudi Arabia. http://www.wherevent.com/detail/Effat-University-The-12th-Learning-and-Technology-Conference-Wearable-Tech-Wearable-Learning
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/
topic QA Mathematics
spellingShingle QA Mathematics
Alias, Norma
Mohamad Mohsin, Husna
Mustaffa, Maizatul Nadirah
Farhah, Hafizah
Mohamed, Mohini
High performance embedded system for wearable augmented reality of eye blinks, movement, muscle stress detection and observation
description Abstract—Eyes blinking and its movement can portray many reasons of the body and health state. Eyes can blink intentionally and sometimes randomly even in sleeping mode. Thus, the aim of this paper is to discover and observe the relationship between the frequency of eye blink and the level of eye muscle stress. The eye track data is fed directly into the electroencephalogram (EEG) record for parameter classification and identification. The EEG signal might have an artifact that has been analyzed and converted the observation into the mathematical library and repository software (HPC). The artificial neural network (ANN) is integrated with EEG digital data by the derivation of the mathematical modelling. The function of ANN is to train a large sparse digital data for future prediction of eye condition associated with the stress level. In order to validate the model and simulation, the numerical analysis and performance evaluation are compared to the real data set of eye therapy industry, IC Herbz Sdn Bhd. A library and repository software of mathematical model using EEG record data is developed to integrate with wearable augmented reality (WAR) based on EEG sensor device for predicting and monitoring the real time eye blinks, movement and muscle stress.
format Conference or Workshop Item
author Alias, Norma
Mohamad Mohsin, Husna
Mustaffa, Maizatul Nadirah
Farhah, Hafizah
Mohamed, Mohini
author_facet Alias, Norma
Mohamad Mohsin, Husna
Mustaffa, Maizatul Nadirah
Farhah, Hafizah
Mohamed, Mohini
author_sort Alias, Norma
title High performance embedded system for wearable augmented reality of eye blinks, movement, muscle stress detection and observation
title_short High performance embedded system for wearable augmented reality of eye blinks, movement, muscle stress detection and observation
title_full High performance embedded system for wearable augmented reality of eye blinks, movement, muscle stress detection and observation
title_fullStr High performance embedded system for wearable augmented reality of eye blinks, movement, muscle stress detection and observation
title_full_unstemmed High performance embedded system for wearable augmented reality of eye blinks, movement, muscle stress detection and observation
title_sort high performance embedded system for wearable augmented reality of eye blinks, movement, muscle stress detection and observation
publishDate 2015
url http://eprints.utm.my/id/eprint/63428/
http://www.wherevent.com/detail/Effat-University-The-12th-Learning-and-Technology-Conference-Wearable-Tech-Wearable-Learning
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score 13.160551