Emotion Recognition in Speech Using Neural Network

ABSTRACT<br /> Emotion recognition in speech studies has grown after the growing of speech recognition technologies. The aim of such studies is to make language interfaces in human-computer interaction applications more wide in use and to make it efficient. And it may help the studiers of the...

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Main Authors: Fatin B. Sofia, Sahar K. Ahmed, Abdul-basit K. Faeq
Format: Article
Language:Arabic
Published: College of Education for Pure Sciences 2008-03-01
Series:مجلة التربية والعلم
Subjects:
Online Access:https://edusj.mosuljournals.com/article_51255_1d5d361925afffc1bb3a3be8e2fb3fda.pdf
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spelling doaj-97c2d755b2bb4df48141932dd4ac7ea22020-11-25T02:22:13ZaraCollege of Education for Pure Sciencesمجلة التربية والعلم1812-125X2664-25302008-03-0121110311210.33899/edusj.2008.5125551255Emotion Recognition in Speech Using Neural NetworkFatin B. SofiaSahar K. AhmedAbdul-basit K. FaeqABSTRACT<br /> Emotion recognition in speech studies has grown after the growing of speech recognition technologies. The aim of such studies is to make language interfaces in human-computer interaction applications more wide in use and to make it efficient. And it may help the studiers of the human sound areas. <br /> This study deals with four spoken sentences of sixteen short utterance expressing five emotions: a happiness, anger, sadness, fear, and normal (unemotional) state. The feature extraction techniques are used to capture the most important information of the signal, this process is applied in the time domain. The extracted feature vector contain 12 LPC (linear predictive coding) parameters, the pitch, the power, and the three first formant frequencies. While in the second part of the system (the emotion recognizer) the artificial neural network technology is used, the designing network is with feedforward backpropagation. This design used ten separated nets. each one make a decision whether the spoken sentence is belong to one of only tow emotions. So the computational time is increased with this system, while such a system has better performance with respect to other systems. <br /> The designed system could recognize all emotions with ratio 75% except the fear one which recognized in ratio of 50%.https://edusj.mosuljournals.com/article_51255_1d5d361925afffc1bb3a3be8e2fb3fda.pdfrecognition in speechneural networkemotion recognition
collection DOAJ
language Arabic
format Article
sources DOAJ
author Fatin B. Sofia
Sahar K. Ahmed
Abdul-basit K. Faeq
spellingShingle Fatin B. Sofia
Sahar K. Ahmed
Abdul-basit K. Faeq
Emotion Recognition in Speech Using Neural Network
مجلة التربية والعلم
recognition in speech
neural network
emotion recognition
author_facet Fatin B. Sofia
Sahar K. Ahmed
Abdul-basit K. Faeq
author_sort Fatin B. Sofia
title Emotion Recognition in Speech Using Neural Network
title_short Emotion Recognition in Speech Using Neural Network
title_full Emotion Recognition in Speech Using Neural Network
title_fullStr Emotion Recognition in Speech Using Neural Network
title_full_unstemmed Emotion Recognition in Speech Using Neural Network
title_sort emotion recognition in speech using neural network
publisher College of Education for Pure Sciences
series مجلة التربية والعلم
issn 1812-125X
2664-2530
publishDate 2008-03-01
description ABSTRACT<br /> Emotion recognition in speech studies has grown after the growing of speech recognition technologies. The aim of such studies is to make language interfaces in human-computer interaction applications more wide in use and to make it efficient. And it may help the studiers of the human sound areas. <br /> This study deals with four spoken sentences of sixteen short utterance expressing five emotions: a happiness, anger, sadness, fear, and normal (unemotional) state. The feature extraction techniques are used to capture the most important information of the signal, this process is applied in the time domain. The extracted feature vector contain 12 LPC (linear predictive coding) parameters, the pitch, the power, and the three first formant frequencies. While in the second part of the system (the emotion recognizer) the artificial neural network technology is used, the designing network is with feedforward backpropagation. This design used ten separated nets. each one make a decision whether the spoken sentence is belong to one of only tow emotions. So the computational time is increased with this system, while such a system has better performance with respect to other systems. <br /> The designed system could recognize all emotions with ratio 75% except the fear one which recognized in ratio of 50%.
topic recognition in speech
neural network
emotion recognition
url https://edusj.mosuljournals.com/article_51255_1d5d361925afffc1bb3a3be8e2fb3fda.pdf
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