Minimizing word error rate in a dyslexic reading-oriented ASR engine using phoneme refinement and alternative pronunciation

Little attention has been given to detecting miscues in the text space read by dyslexic children over an automatic speech recognition (ASR) engine. In an ASR system, the miscues are represented by word error rate (WER) and miscue detection rate (MDR). At all time, WER must be kept low, and MDR high...

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Main Authors: Husni, Husniza, Jamaludin, Zulikha
Format: Book Section
Language:English
Published: IATED publication 2010
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Online Access:http://repo.uum.edu.my/1339/1/Abrack_view_Zulaikha%2C_J..pdf
http://repo.uum.edu.my/1339/
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spelling my.uum.repo.13392010-10-17T07:34:31Z http://repo.uum.edu.my/1339/ Minimizing word error rate in a dyslexic reading-oriented ASR engine using phoneme refinement and alternative pronunciation Husni, Husniza Jamaludin, Zulikha QA75 Electronic computers. Computer science Little attention has been given to detecting miscues in the text space read by dyslexic children over an automatic speech recognition (ASR) engine. In an ASR system, the miscues are represented by word error rate (WER) and miscue detection rate (MDR). At all time, WER must be kept low, and MDR high so as to achieve better recognition. This paper focus on minimizing word error rate by formulating a better model for perspicuous representation of input data. Such representation takes into account phoneme refinement and alternative pronunciation for a particular Bahasa Melayu (BM) speech data uttered by dyslexic children. Based on literature, a few other optimal models of input data and their recognition results were compared. It is found that phoneme refinement and alternative pronunciation produced better recognition results as evidenced in the performance metrics --lower WER and higher MDR-- which are 25% and 80.77% respectively. IATED publication 2010 Book Section NonPeerReviewed application/pdf en http://repo.uum.edu.my/1339/1/Abrack_view_Zulaikha%2C_J..pdf Husni, Husniza and Jamaludin, Zulikha (2010) Minimizing word error rate in a dyslexic reading-oriented ASR engine using phoneme refinement and alternative pronunciation. In: EDULEARN10 Proceedings CD. IATED publication, Madrid. ISBN 9788461393862 (In Press) http://www.iated.org
institution Universiti Utara Malaysia
building UUM Library
collection Institutional Repository
continent Asia
country Malaysia
content_provider Universiti Utara Malaysia
content_source UUM Institutionali Repository
url_provider http://repo.uum.edu.my/
language English
topic QA75 Electronic computers. Computer science
spellingShingle QA75 Electronic computers. Computer science
Husni, Husniza
Jamaludin, Zulikha
Minimizing word error rate in a dyslexic reading-oriented ASR engine using phoneme refinement and alternative pronunciation
description Little attention has been given to detecting miscues in the text space read by dyslexic children over an automatic speech recognition (ASR) engine. In an ASR system, the miscues are represented by word error rate (WER) and miscue detection rate (MDR). At all time, WER must be kept low, and MDR high so as to achieve better recognition. This paper focus on minimizing word error rate by formulating a better model for perspicuous representation of input data. Such representation takes into account phoneme refinement and alternative pronunciation for a particular Bahasa Melayu (BM) speech data uttered by dyslexic children. Based on literature, a few other optimal models of input data and their recognition results were compared. It is found that phoneme refinement and alternative pronunciation produced better recognition results as evidenced in the performance metrics --lower WER and higher MDR-- which are 25% and 80.77% respectively.
format Book Section
author Husni, Husniza
Jamaludin, Zulikha
author_facet Husni, Husniza
Jamaludin, Zulikha
author_sort Husni, Husniza
title Minimizing word error rate in a dyslexic reading-oriented ASR engine using phoneme refinement and alternative pronunciation
title_short Minimizing word error rate in a dyslexic reading-oriented ASR engine using phoneme refinement and alternative pronunciation
title_full Minimizing word error rate in a dyslexic reading-oriented ASR engine using phoneme refinement and alternative pronunciation
title_fullStr Minimizing word error rate in a dyslexic reading-oriented ASR engine using phoneme refinement and alternative pronunciation
title_full_unstemmed Minimizing word error rate in a dyslexic reading-oriented ASR engine using phoneme refinement and alternative pronunciation
title_sort minimizing word error rate in a dyslexic reading-oriented asr engine using phoneme refinement and alternative pronunciation
publisher IATED publication
publishDate 2010
url http://repo.uum.edu.my/1339/1/Abrack_view_Zulaikha%2C_J..pdf
http://repo.uum.edu.my/1339/
http://www.iated.org
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score 13.15806