Iqro Reading Learning System through Speech Recognition Using Mel Frequency Cepstral Coefficient (MFCC) and Vector Quantization (VQ) Method

Y. Nurhasanah, Irma Amelia Dewi, Bagus Ade Saputro
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Abstract

Historically, the study of Qur'an in Indonesia evolved along with the spread of Islam. Learning methods of reading the Qur'an have been found ranging from al-Baghdadi, al-Barqi, Qiraati, Iqro', Human, Tartila, and others, which can make it easier to learn to read the Qur'an. Currently, the development of speech recognition technology can be used for the detection of Iqro vol 3 reading pronunciations. Speech recognition consists of two general stages of feature extraction and speech matching. The feature extraction step is used to derive speech-feature and speech-matching stages to compare compatibility between test sound and train voice. The speech recognition method used to recognize Iqro readings is extracting speech signal features using Mel Frequency Cepstral Coefficient (MFCC) and classifying them using Vector Quantization (VQ) to get the appropriate speech results. The result of testing for speech recognition system of Iqro reading has been tested for 30 peoples as a sample of data and there are 6 utterances indicating the information failed, so the system has a success rate of 80%.
基于频率倒谱系数(MFCC)和矢量量化(VQ)方法的语音识别Iqro阅读学习系统
从历史上看,印尼的古兰经研究是随着伊斯兰教的传播而发展的。从巴格达迪、巴尔齐、齐拉提、伊克罗、哈曼、塔尔提拉等各种诵读《古兰经》的学习方法已经被发现,这使得学习阅读《古兰经》变得更加容易。目前,语音识别技术的发展可以用于Iqro卷3阅读语音的检测。语音识别主要包括特征提取和语音匹配两个阶段。特征提取步骤用于导出语音特征和语音匹配阶段,以比较测试声音和训练声音的兼容性。用于Iqro读数识别的语音识别方法是利用Mel频率倒谱系数(MFCC)提取语音信号特征,并利用矢量量化(VQ)对其进行分类,得到相应的语音结果。Iqro阅读语音识别系统的测试结果以30人作为数据样本进行了测试,其中有6个话语表示信息失败,因此系统的成功率为80%。
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