基于HMM分类器的古典阿拉伯语音素语境分析

Y. Alotaibi, A. Meftah, S. Selouani
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引用次数: 1

摘要

本文利用隐马尔可夫模型分类器及其混淆矩阵对阿拉伯语语音音位进行了语音分析。为此,设计了一个新的古典阿拉伯语语料库。该语料库是基于对《古兰经》特定文本的背诵。对音频文件进行半手工标注和分词,并结合单词词典等语言资源进行分词。《古兰经》的背诵高度反映了阿拉伯音素的发音。分类器结果表明,频率最低的音素通常具有最高的错误率。总体而言,单声部、左右双声部和三声部系统的分类正确率分别为76.04%、93.01%、93.59%和92.81%。
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Classical Arabic phoneme contextual analysis using HMM classifiers
This paper presents a phonetic analysis of Arabic speech language phonemes using hidden Markov model classifiers and their confusion matrices. For this purpose, a new classical Arabic speech corpus was planned and designed. The corpus is based on recitations from The Holy Quran of specific scripts. Semi-manual labeling and segmentation of the audio files along with other language resources such as a word dictionary were prepared. Recitations from The Holy Quran are highly indicative of the pronunciation of Arabic phonemes. The classifier results show that phonemes with the lowest frequencies in general have the highest error rates. Overall, the rates of correct classification are 76.04%, 93.01%, 93.59%, and 92.81% for monophone, left and right context biphone, and triphone systems, respectively.
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