一些Tajweed规则的自动检测

Dahlia Omran, S. Fawzi, A. Kandil
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引用次数: 0

摘要

正确理解《古兰经》是所有穆斯林的基本责任。塔伊weed规则指导诵读者按照先知穆罕默德所说的诵读《古兰经》。这项工作的重点是承认一个古兰经背诵规则。Qalqalah规则适用于阿拉伯字母(Baa/Daal/Jeem/Qaaf/Taa)中有sukun元音的五个字母。该系统采用Mel频率倒谱系数(MFCC)作为特征提取技术,并采用卷积神经网络(CNN)模型进行识别。可用的数据集包括来自4位专业读者(Sheihk) AlHussary、AlMinshawy、Abdel Baset和Ayman shook的《古兰经》不同章节的3322个音频样本。使用艾曼摇摆音频样本获得最佳效果,验证准确率为90.8%。
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Automatic Detection of Some Tajweed Rules
correct understanding of the Holy Quran is an essential duty for all Muslims. Tajweed rules guide the reciter to perform Holy Quran reading exactly as it was uttered by Prophet Muhammad peace be upon him. This work focused on the recognition of one Quranic recitation rule. Qalqalah rule is applied to five letters of the Arabic Alphabet (Baa/Daal/Jeem/Qaaf/Taa) having sukun vowelization. The proposed system used the Mel Frequency Cepstral Coefficients (MFCC) as the feature extraction technique, and the Convolutional Neural Networks (CNN) model was used for recognition. The available dataset consists of 3322 audio samples from different surahs of the Quran for four professional readers (Sheihk) AlHussary, AlMinshawy, Abdel Baset, and Ayman Swayed. The best results were gained using Ayman Swayed audio samples with a validation accuracy of 90.8%.
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