Evaluation of intonation features on emphasized Malay words / Syazwani Nasaruddin

Detection of emphasized has become one active research in speech processing. Nowadays, in automatic speech recognition, listeners not only want to be able automatically understand which words the speakers have said but also how the speakers deliver the speech. This paper presents detection of emphas...

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Main Author: Nasaruddin, Syazwani
Format: Thesis
Language:English
Published: 2017
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Online Access:https://ir.uitm.edu.my/id/eprint/98181/1/98181.pdf
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spelling my-uitm-ir.981812024-07-29T09:41:55Z Evaluation of intonation features on emphasized Malay words / Syazwani Nasaruddin 2017 Nasaruddin, Syazwani Language and languages Detection of emphasized has become one active research in speech processing. Nowadays, in automatic speech recognition, listeners not only want to be able automatically understand which words the speakers have said but also how the speakers deliver the speech. This paper presents detection of emphasis in Malay sentences. Thus, the purpose of this research is consisting, to construct emphasized Malay speech, to evaluate pitch and intensity features on Malay words and lastly to classify the Malay words using intonation features. First step to construct emphasized Malay speech is by listening to 96 sentences and 314 words by 2 different speakers. In this step, user hear the speech and used the hand labelling method discuss in chapter 2. User listened to the speech audio and mark the words that the user finds the speaker voice is high. If the voice of speaker is high, user classified the word as emphasized words. This step is to determine the emphasized and non-emphasized words. All the features of emphasized words detect by user is extracted. After detection of emphasized and non-emphasized words for speakerl and speaker2, intensity and pitch features need to be evaluated. Intensity and pitch features that need to be evaluated are minimum value of pitch and intensity, maximum value of pitch and intensity and mean value of pitch and intensity. In this research, all 314 words from 2 different male speakers' speeches are clustered manually based on features of intensity and pitch pattern. The pattern of the features such as intensity and pitch are observed and clustered to find out how many patterns can be identified from all the words. Result from the intensity and pitch features can classify Malay phrases. Activities in this section are, for testing part, 314 words from 2 different speakers are evaluated by using clustering method. WEKA is a set of machine learning algorithm for data mining task. The data are clustered to determine emphasized and non-emphasized words. From the research done shows that he highest percentage in detecting emphasized words in Malay words is by combination of all features such as intensity and pitch features. 2017 Thesis https://ir.uitm.edu.my/id/eprint/98181/ https://ir.uitm.edu.my/id/eprint/98181/1/98181.pdf text en public masters Universiti Teknologi MARA (UiTM) Faculty of Computer and Mathematical Sciences Mohamed Hanum, Haslizatul Fairuz
institution Universiti Teknologi MARA
collection UiTM Institutional Repository
language English
advisor Mohamed Hanum, Haslizatul Fairuz
topic Language and languages
spellingShingle Language and languages
Nasaruddin, Syazwani
Evaluation of intonation features on emphasized Malay words / Syazwani Nasaruddin
description Detection of emphasized has become one active research in speech processing. Nowadays, in automatic speech recognition, listeners not only want to be able automatically understand which words the speakers have said but also how the speakers deliver the speech. This paper presents detection of emphasis in Malay sentences. Thus, the purpose of this research is consisting, to construct emphasized Malay speech, to evaluate pitch and intensity features on Malay words and lastly to classify the Malay words using intonation features. First step to construct emphasized Malay speech is by listening to 96 sentences and 314 words by 2 different speakers. In this step, user hear the speech and used the hand labelling method discuss in chapter 2. User listened to the speech audio and mark the words that the user finds the speaker voice is high. If the voice of speaker is high, user classified the word as emphasized words. This step is to determine the emphasized and non-emphasized words. All the features of emphasized words detect by user is extracted. After detection of emphasized and non-emphasized words for speakerl and speaker2, intensity and pitch features need to be evaluated. Intensity and pitch features that need to be evaluated are minimum value of pitch and intensity, maximum value of pitch and intensity and mean value of pitch and intensity. In this research, all 314 words from 2 different male speakers' speeches are clustered manually based on features of intensity and pitch pattern. The pattern of the features such as intensity and pitch are observed and clustered to find out how many patterns can be identified from all the words. Result from the intensity and pitch features can classify Malay phrases. Activities in this section are, for testing part, 314 words from 2 different speakers are evaluated by using clustering method. WEKA is a set of machine learning algorithm for data mining task. The data are clustered to determine emphasized and non-emphasized words. From the research done shows that he highest percentage in detecting emphasized words in Malay words is by combination of all features such as intensity and pitch features.
format Thesis
qualification_level Master's degree
author Nasaruddin, Syazwani
author_facet Nasaruddin, Syazwani
author_sort Nasaruddin, Syazwani
title Evaluation of intonation features on emphasized Malay words / Syazwani Nasaruddin
title_short Evaluation of intonation features on emphasized Malay words / Syazwani Nasaruddin
title_full Evaluation of intonation features on emphasized Malay words / Syazwani Nasaruddin
title_fullStr Evaluation of intonation features on emphasized Malay words / Syazwani Nasaruddin
title_full_unstemmed Evaluation of intonation features on emphasized Malay words / Syazwani Nasaruddin
title_sort evaluation of intonation features on emphasized malay words / syazwani nasaruddin
granting_institution Universiti Teknologi MARA (UiTM)
granting_department Faculty of Computer and Mathematical Sciences
publishDate 2017
url https://ir.uitm.edu.my/id/eprint/98181/1/98181.pdf
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