Evaluating endpoint detection algorithms for isolated word from Malay parliamentary speech
This paper presents the endpoint detection approaches specifically for an isolated word uses Malay spoken speeches from Malaysian Parliamentary session. Currently, there are 7,995 vocabularies of utterances in the database collection and for the purpose of this study; the vocabulary is limited to te...
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my.uniten.dspace-296582023-12-28T15:17:55Z Evaluating endpoint detection algorithms for isolated word from Malay parliamentary speech Seman N. Bakar Z.A. Bakar N.A. Mohamed H.F. Abdullah N.A.S. Ramakrisnan P. Ahmad S.M.S. 24825478400 6507862938 25824639200 57225099928 55433263000 24825389600 24721182400 Endpoint detection Infinite impulse response Mel frequency cepstral coefficient Short-time energy Short-time zero crossing Frequency response Hidden Markov models Impulse response Information retrieval Knowledge management End point detection Infinite impulse response Mel-frequency cepstral coefficients Short-time energy Zero-crossings Speech recognition This paper presents the endpoint detection approaches specifically for an isolated word uses Malay spoken speeches from Malaysian Parliamentary session. Currently, there are 7,995 vocabularies of utterances in the database collection and for the purpose of this study; the vocabulary is limited to ten words which are most frequently spoken selected from ten speakers. Endpoint detection, which aims to distinguish the speech and non-speech segments of digital speech signal, is considered as one of the key preprocessing steps in speech recognition system. Proper estimation of the start and end of the speech (versus silence or background noise) avoids the waste of speech recognition evaluations on preceding or ensuing silence. In this study, the endpoint detection and speech segmentation task is achieved by using the short-time energy (STE) and short-time zero crossing (STZC) measures and combination of both approaches. As a result, the Hidden Markov Model (HMM) recognizer derived the recognition accuracy rate of 91.4% for combination of both algorithms, if compared only 86.3% for STE and 82.1% for STZC rate alone. The experiments show that there are many problems arise where there are still misdetection of word boundaries for the words with weak fricative and nasal sounds. Other obstacles issues such as speaking styles or mood of speaking can also cause the recognition performance. �2010 IEEE. Final 2023-12-28T07:17:55Z 2023-12-28T07:17:55Z 2010 Conference paper 10.1109/INFRKM.2010.5466898 2-s2.0-77953879739 https://www.scopus.com/inward/record.uri?eid=2-s2.0-77953879739&doi=10.1109%2fINFRKM.2010.5466898&partnerID=40&md5=09742bf78ae947336c6796cdf8114a04 https://irepository.uniten.edu.my/handle/123456789/29658 5466898 291 296 Scopus |
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Endpoint detection Infinite impulse response Mel frequency cepstral coefficient Short-time energy Short-time zero crossing Frequency response Hidden Markov models Impulse response Information retrieval Knowledge management End point detection Infinite impulse response Mel-frequency cepstral coefficients Short-time energy Zero-crossings Speech recognition |
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Endpoint detection Infinite impulse response Mel frequency cepstral coefficient Short-time energy Short-time zero crossing Frequency response Hidden Markov models Impulse response Information retrieval Knowledge management End point detection Infinite impulse response Mel-frequency cepstral coefficients Short-time energy Zero-crossings Speech recognition Seman N. Bakar Z.A. Bakar N.A. Mohamed H.F. Abdullah N.A.S. Ramakrisnan P. Ahmad S.M.S. Evaluating endpoint detection algorithms for isolated word from Malay parliamentary speech |
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This paper presents the endpoint detection approaches specifically for an isolated word uses Malay spoken speeches from Malaysian Parliamentary session. Currently, there are 7,995 vocabularies of utterances in the database collection and for the purpose of this study; the vocabulary is limited to ten words which are most frequently spoken selected from ten speakers. Endpoint detection, which aims to distinguish the speech and non-speech segments of digital speech signal, is considered as one of the key preprocessing steps in speech recognition system. Proper estimation of the start and end of the speech (versus silence or background noise) avoids the waste of speech recognition evaluations on preceding or ensuing silence. In this study, the endpoint detection and speech segmentation task is achieved by using the short-time energy (STE) and short-time zero crossing (STZC) measures and combination of both approaches. As a result, the Hidden Markov Model (HMM) recognizer derived the recognition accuracy rate of 91.4% for combination of both algorithms, if compared only 86.3% for STE and 82.1% for STZC rate alone. The experiments show that there are many problems arise where there are still misdetection of word boundaries for the words with weak fricative and nasal sounds. Other obstacles issues such as speaking styles or mood of speaking can also cause the recognition performance. �2010 IEEE. |
author2 |
24825478400 |
author_facet |
24825478400 Seman N. Bakar Z.A. Bakar N.A. Mohamed H.F. Abdullah N.A.S. Ramakrisnan P. Ahmad S.M.S. |
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Conference paper |
author |
Seman N. Bakar Z.A. Bakar N.A. Mohamed H.F. Abdullah N.A.S. Ramakrisnan P. Ahmad S.M.S. |
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Seman N. |
title |
Evaluating endpoint detection algorithms for isolated word from Malay parliamentary speech |
title_short |
Evaluating endpoint detection algorithms for isolated word from Malay parliamentary speech |
title_full |
Evaluating endpoint detection algorithms for isolated word from Malay parliamentary speech |
title_fullStr |
Evaluating endpoint detection algorithms for isolated word from Malay parliamentary speech |
title_full_unstemmed |
Evaluating endpoint detection algorithms for isolated word from Malay parliamentary speech |
title_sort |
evaluating endpoint detection algorithms for isolated word from malay parliamentary speech |
publishDate |
2023 |
_version_ |
1806428181584936960 |
score |
13.214268 |