语音识别与分类采用压缩感知方法

Sombat Buakhlai, S. Udomsiri
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引用次数: 0

摘要

本研究旨在利用压缩感知方法对语音信号进行识别和分类,以减少语音信号相互关联的数据,并比较参考语音信号(研究者的信号)与比较信号之间的相似度和差异。语音信号重构方法是基于对欠定线性逆问题的求解。测量的方程数小于数据维数(m1/ 2范数和正则化值(λ)),以获得零范数(l0 =||x||0),即数值稀疏测量。该研究还表明了基于参考语音信号(研究者的语音信号)、比较语音信号和正则化值(λ)之间信噪比(SNR)测量的语音信号重构的有效性。该研究成果将用于对单个语音信号进行安全分类。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Speech recognition and classification using the compressive sensing method
The research is aimed to present speech signal recognition and classification using the compressive sensing method to reduce the data from speech signal cross-correlation and to compare similarity and difference between the reference speech signal (the researcher's signal) and comparative signals. The speech signal reconstruction method is based on the solution to the underdetermined linear inverse problem. The number of equations measured is less than that of data dimensions (m<1/ ℓ2 norms and regularization values (λ) to acquire the zero norm (ℓ0 =||x||0) that means numerical sparse measurement. The research also indicates the effectiveness of speech signal reconstruction based on measurement of signal to noise ratio (SNR) between the reference speech signal (the researcher's speech signal), comparative speech signals and regularization values (λ). The benefit of the research will be applied to classifying individual speech signals for security.
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