识别古兰经诵读类型的语音识别系统

B. Yousfi, A. Zeki
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引用次数: 8

摘要

诵读《古兰经》和诵读《古兰经》的行为,属于诵读的类型。这些指的是沃什的背诵或哈夫斯的背诵。认识到诵读的类型是非常重要的,尤其是考虑到Qira'at在世界上的多样性和传播。本研究提出了一种语音识别系统,可以区分不同类型的古兰经背诵。本文的目的是设计和开发一种诵读《古兰经》的语音识别系统,以检测诵读的类型并纠正基本和一般错误。虽然,有几个分析仪已经检查了错误纠正,不幸的是,这些分析仪不适合背诵神圣的古兰经。因此,所建议的系统将能够识别,识别和指出任何不匹配。在学生背诵实验中,将专家教师的背诵内容存储在数据库中。使用Mel-Frequency倒谱系数(MFCC)进行特征提取,使用隐马尔可夫模型(HMM)进行特征分类。
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Holy Qur'an speech recognition system distinguishing the type of recitation
The act of reading Qur'an and pronouncing its sound dwells on the type of recitation. These are referring to the recitation of Warsh or the recitation of Hafss. It's very important to recognise the type of recitations, especially with the diversity and the spread of Qira'at in the world. This research presents a speech recognition system that distinguishes between the different types of the Qur'an recitation. The aim here is to design and developed a speech recognition for recitation of the Holy Qur'an for detecting the types of recitations and correction of fundamental and general errors. Although, there are several analysers that have been examined for error corrections, unfortunately, these analysers were not suitable for the act of recitation of the Holy Qur'an. Thus, the proposed system will be capable to recognize, identify and point out any mismatch. An experiment among student recitation with the recitation made by the expert teachers stored in a database has been done. Mel-Frequency Cepstral Coefficient (MFCC) for feature extraction and Hidden Markov Models (HMM) for feature classification are used.
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