Human Spontaneous Emotion Detection System

Having smart computerized system which can understand and instantly gives appropriate response to human is the utmost motive in human and computer interaction (HCI) field.It is argued either HCI is considered advance if human could not have natural and comfortable interaction like human to human int...

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Main Author: Radin Monawir, Radin Puteri Hazimah
Format: Thesis
Language:English
English
Published: 2018
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Online Access:http://eprints.utem.edu.my/id/eprint/23332/1/Human%20Spontaneous%20Emotion%20Detection%20System.pdf
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id my-utem-ep.23332
record_format uketd_dc
institution Universiti Teknikal Malaysia Melaka
collection UTeM Repository
language English
English
topic T Technology (General)
T Technology (General)
spellingShingle T Technology (General)
T Technology (General)
Radin Monawir, Radin Puteri Hazimah
Human Spontaneous Emotion Detection System
description Having smart computerized system which can understand and instantly gives appropriate response to human is the utmost motive in human and computer interaction (HCI) field.It is argued either HCI is considered advance if human could not have natural and comfortable interaction like human to human interaction.Besides,despite of several studies regarding emotion detection system, current system mostly tested in laboratory environment and using mimic emotion.Realizing the current system research lack of real life or genuine emotion input,this research work comes up with the idea of developing a system that able to recognize human emotion through facial expression.Therefore,the aims of this study are threefold which are to enhance the algorithm to detect spontaneous emotion,to develop spontaneous facial expression database and to verify the algorithm performance.This project used Matlab programming language,specifically Viola Jones method for features tracking and extraction,then pattern matching for emotion classification purpose.Mouth feature is used as main features to identify the emotion of the expression.For verification purpose,the mimic and spontaneous database which are obtained from internet,open source database or novel (own) developed databases are used.Basically,the performance of the system is indicated by emotion detection rate and average execution time.At the end of this study,it is found that this system is suitable for recognizing spontaneous facial expression (63.28%) compared to posed facial expression (51.46%).The verification even better for positive emotion with 71.02% detection rate compared to 48.09% for negative emotion detection rate.Finally,overall detection rate of 61.20% is considered good since this system can execute result within 3s and use spontaneous input data which known as highly susceptible to noise.
format Thesis
qualification_name Master of Philosophy (M.Phil.)
qualification_level Master's degree
author Radin Monawir, Radin Puteri Hazimah
author_facet Radin Monawir, Radin Puteri Hazimah
author_sort Radin Monawir, Radin Puteri Hazimah
title Human Spontaneous Emotion Detection System
title_short Human Spontaneous Emotion Detection System
title_full Human Spontaneous Emotion Detection System
title_fullStr Human Spontaneous Emotion Detection System
title_full_unstemmed Human Spontaneous Emotion Detection System
title_sort human spontaneous emotion detection system
granting_institution UTeM
granting_department Faculty Of Manufacturing Engineering
publishDate 2018
url http://eprints.utem.edu.my/id/eprint/23332/1/Human%20Spontaneous%20Emotion%20Detection%20System.pdf
http://eprints.utem.edu.my/id/eprint/23332/2/Human%20Spontaneous%20Emotion%20Detection%20System.pdf
_version_ 1747834036971110400
spelling my-utem-ep.233322022-02-21T11:36:16Z Human Spontaneous Emotion Detection System 2018 Radin Monawir, Radin Puteri Hazimah T Technology (General) TA Engineering (General). Civil engineering (General) Having smart computerized system which can understand and instantly gives appropriate response to human is the utmost motive in human and computer interaction (HCI) field.It is argued either HCI is considered advance if human could not have natural and comfortable interaction like human to human interaction.Besides,despite of several studies regarding emotion detection system, current system mostly tested in laboratory environment and using mimic emotion.Realizing the current system research lack of real life or genuine emotion input,this research work comes up with the idea of developing a system that able to recognize human emotion through facial expression.Therefore,the aims of this study are threefold which are to enhance the algorithm to detect spontaneous emotion,to develop spontaneous facial expression database and to verify the algorithm performance.This project used Matlab programming language,specifically Viola Jones method for features tracking and extraction,then pattern matching for emotion classification purpose.Mouth feature is used as main features to identify the emotion of the expression.For verification purpose,the mimic and spontaneous database which are obtained from internet,open source database or novel (own) developed databases are used.Basically,the performance of the system is indicated by emotion detection rate and average execution time.At the end of this study,it is found that this system is suitable for recognizing spontaneous facial expression (63.28%) compared to posed facial expression (51.46%).The verification even better for positive emotion with 71.02% detection rate compared to 48.09% for negative emotion detection rate.Finally,overall detection rate of 61.20% is considered good since this system can execute result within 3s and use spontaneous input data which known as highly susceptible to noise. 2018 Thesis http://eprints.utem.edu.my/id/eprint/23332/ http://eprints.utem.edu.my/id/eprint/23332/1/Human%20Spontaneous%20Emotion%20Detection%20System.pdf text en public http://eprints.utem.edu.my/id/eprint/23332/2/Human%20Spontaneous%20Emotion%20Detection%20System.pdf text en validuser http://plh.utem.edu.my/cgi-bin/koha/opac-detail.pl?biblionumber=112299 mphil masters UTeM Faculty Of Manufacturing Engineering 1. 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