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QVR: Quranic Verses Recitation Recognition System using PocketSphinx
Author(s) -
Hasan Ali Gamal Al-Kaf,
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Muhammad Suhaimi Sulong,
Ariffuddin Joret,
Nuramin Fitri Aminuddin,
Che Adenan Mohammad,
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Publication year - 2021
Publication title -
journal of quranic sciences and research
Language(s) - English
Resource type - Journals
ISSN - 2773-5532
DOI - 10.30880/jqsr.2021.02.02.004
Subject(s) - computer science , pronunciation , arabic , graphical user interface , test (biology) , natural language processing , word (group theory) , speech recognition , human–computer interaction , artificial intelligence , linguistics , programming language , paleontology , philosophy , biology
The recitation of Quran verses according to the actual tajweed is obligatory and it must be accurate and precise in pronunciation. Hence, it should always be reviewed by an expert on the recitation of the Quran. Through the latest technology, this recitation review can be implemented through an application system and it is most appropriate in this current Covid-19 pandemic situation where system application online is deemed to be developed. In this empirical study, a recognition system so-called the Quranic Verse Recitation Recognition (QVR) system using PocketSphinx to convert the Quranic verse from Arabic sound to Roman text and determine the accuracy of reciters, has been developed. The Graphical User Interface (GUI) of the system with a user-friendly environment was designed using Microsoft Visual Basic 6 in an Ubuntu platform. A verse of surah al-Ikhlas has been chosen in this study and the data were collected by recording 855 audios as training data recorded by professional reciters. Another 105 audios were collected as testing data, to test the accuracy of the system. The results indicate that the system obtained a 100% accuracy with a 0.00% of word error rate (WER) for both training and testing data of the said audios via Quran Roman text. The system with automatic speech recognition (ASR) engine system demonstrates that it has been successfully designed and developed, and is significant to be extended further. Added, it will be improved with the addition of other Quran surahs.

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