MFC peak based segmentation for continuous Arabic audio signal

M. S. Abdo, A. Kandil, S. Fawzy
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引用次数: 5

Abstract

This paper presents an algorithm for segmenting a subset of emphatic and non-emphatic sounds automatically from continuously spoken Arabic speech. The important contribution of this paper is to generate rules for automatic segmentation of these sounds which can be extended to the rest of Arabic sounds. In addition, the findings can be used for other speech analysis problems such as data training for speech recognizers, continuous speech segmentation systems, or to build and label Arabic databases. This study has been done in context of recited principles of the Holy Quran which commonly known as recitation rules. The method developed is based on peaks detection from delta function of Mel Frequency Cepstral Coefficients “MFCC”. The peaks position is used for boundaries locating of the target sounds within the speech signal. Medium vocabulary speech database was used to evaluate the system performance. The test database contained 80 recited words. Each word was recorded from six different speakers constituting total of 480 words. A significant increase in accuracy rate has been achieved compared to the prior work of [1, 2] by enhancing the developed algorithm. Results show that the enhanced algorithm achieved a segmentation accuracy of up to 90%.
基于MFC峰值的阿拉伯语连续音频信号分割
本文提出了一种从连续的阿拉伯语语音中自动分割重音和非重音子集的算法。本文的重要贡献是生成了这些语音的自动分割规则,这些规则可以扩展到其他阿拉伯语音。此外,研究结果可用于其他语音分析问题,如语音识别器的数据训练,连续语音分割系统,或建立和标记阿拉伯语数据库。这项研究是在《古兰经》的背诵原则的背景下进行的,这些原则通常被称为背诵规则。该方法基于Mel频率倒谱系数(MFCC)的δ函数进行峰值检测。峰值位置用于定位语音信号中目标声音的边界。采用中等词汇量语音数据库对系统性能进行评价。测试数据库包含80个背诵单词。每个单词从6个不同的说话者口中记录下来,总共有480个单词。通过改进所开发的算法,与之前的工作[1,2]相比,准确率有了显著提高。结果表明,改进算法的分割准确率达到90%以上。
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