The application of adaptive neuro-fuzzy classifier using linguistic hedges in emotion recognition system

In human communication, expression and understanding of emotions facilitate the mutual sympathy. To approach this level of understanding in human-machine interaction, we need to equip machines with the means to interpret and understand human emotions without the input of the user’s translated intent...

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Main Author: Mand, Ali Afzalian
Format: Thesis
Published: 2013
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id my-mmu-ep.5533
record_format uketd_dc
spelling my-mmu-ep.55332014-05-20T06:17:49Z The application of adaptive neuro-fuzzy classifier using linguistic hedges in emotion recognition system 2013-02 Mand, Ali Afzalian TJ Mechanical Engineering and Machinery In human communication, expression and understanding of emotions facilitate the mutual sympathy. To approach this level of understanding in human-machine interaction, we need to equip machines with the means to interpret and understand human emotions without the input of the user’s translated intention. There are a variety of emerging applications that track physiological data associated with emotional states over periods of time using biosensors. Physiological signals have been largely neglected for emotion recognition as compared with audio-visual emotion sensors such as facial expression or speech. Classifiers are important for emotion recognition regardless of the type of signal. This paper presents an effective adaptive neuro-fuzzy classifier using the linguistic hedges (ANFC-LH) in human emotion classification and investigates the potential of physiological signals as reliable channels for this purpose. 2013-02 Thesis http://shdl.mmu.edu.my/5533/ http://library.mmu.edu.my/diglib/onlinedb/dig_lib.php masters Multimedia University Faculty of Information Science and Technology
institution Multimedia University
collection MMU Institutional Repository
topic TJ Mechanical Engineering and Machinery
spellingShingle TJ Mechanical Engineering and Machinery
Mand, Ali Afzalian
The application of adaptive neuro-fuzzy classifier using linguistic hedges in emotion recognition system
description In human communication, expression and understanding of emotions facilitate the mutual sympathy. To approach this level of understanding in human-machine interaction, we need to equip machines with the means to interpret and understand human emotions without the input of the user’s translated intention. There are a variety of emerging applications that track physiological data associated with emotional states over periods of time using biosensors. Physiological signals have been largely neglected for emotion recognition as compared with audio-visual emotion sensors such as facial expression or speech. Classifiers are important for emotion recognition regardless of the type of signal. This paper presents an effective adaptive neuro-fuzzy classifier using the linguistic hedges (ANFC-LH) in human emotion classification and investigates the potential of physiological signals as reliable channels for this purpose.
format Thesis
qualification_level Master's degree
author Mand, Ali Afzalian
author_facet Mand, Ali Afzalian
author_sort Mand, Ali Afzalian
title The application of adaptive neuro-fuzzy classifier using linguistic hedges in emotion recognition system
title_short The application of adaptive neuro-fuzzy classifier using linguistic hedges in emotion recognition system
title_full The application of adaptive neuro-fuzzy classifier using linguistic hedges in emotion recognition system
title_fullStr The application of adaptive neuro-fuzzy classifier using linguistic hedges in emotion recognition system
title_full_unstemmed The application of adaptive neuro-fuzzy classifier using linguistic hedges in emotion recognition system
title_sort application of adaptive neuro-fuzzy classifier using linguistic hedges in emotion recognition system
granting_institution Multimedia University
granting_department Faculty of Information Science and Technology
publishDate 2013
_version_ 1747829578992189440