Development and Research of a System for Automatic Recognition of the Digits Yemeni Dialect of Arabic Speech Using Neural Networks

N.H. Radan, K. Sidorov
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Abstract

The article describes the results of research on the development and testing of an automatic speech recognition system (SAR) in Arabic numerals using artificial neural networks. Sound recordings (speech signals) of the Arabic Yemeni dialect recorded in the Republic of Yemen were used for the research. SAR is an isolated system of recognition of whole words, it is implemented in two modes: "speaker-dependent system" (the same speakers are used for training and testing the system) and "speaker-independent system" (the speakers used for training the system differ from those used for testing it). In the process of speech recognition, the speech signal is cleared of noise using filters, then the signal is pre-localized, processed and analyzed by the Hamming window (a time alignment algorithm is used to compensate for differences in pronunciation). Informative features are extracted from the speech signal using mel-frequency cepstral coefficients. The developed SAR provides high accuracy of the recognition of Arabic numerals of the Yemeni dialect – 96.2 % (for a speaker-dependent system) and 98.8 % (for a speaker-independent system).
利用神经网络开发和研究阿拉伯语也门方言数字自动识别系统
文章介绍了利用人工神经网络开发和测试阿拉伯数字自动语音识别系统(SAR)的研究成果。研究使用了在也门共和国录制的阿拉伯语也门方言录音(语音信号)。SAR 是一个独立的全词识别系统,它以两种模式实现:"依赖扬声器的系统"(使用相同的扬声器对系统进行训练和测试)和 "独立于扬声器的系统"(用于训练系统的扬声器与用于测试系统的扬声器不同)。在语音识别过程中,首先使用滤波器清除语音信号中的噪音,然后用 Hamming 窗口对信号进行预定位、处理和分析(使用时间对齐算法补偿发音差异)。使用梅尔频率epstral系数从语音信号中提取信息特征。所开发的 SAR 对也门方言阿拉伯数字的识别准确率很高--96.2%(依赖于说话人的系统)和 98.8%(不依赖于说话人的系统)。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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