Method of Semantic Coding of Speech Signals based on Empirical Wavelet Transform

O. Lavrynenko, R. Odarchenko, G. Konakhovych, A. Taranenko, D. Bakhtiiarov, T. Dyka
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引用次数: 2

Abstract

The result of this work is to solve the current scientific and practical problem of developing and researching new effective methods of semantic coding of speech signals. A known method of semantic coding of speech signals based on mel-frequency cepstral coefficients, which does not comply with the condition of adaptability to the studied signal, which is a significant disadvantage of the existing method. A method of semantic coding of speech signals based on empirical wavelet transform is developed, which constructs sets of adaptive Meyer wavelet filters with subsequent application of Hilbert spectral analysis to find instantaneous amplitudes and frequencies of functions of internal empirical modes, which will determine semantic efficiency coding. It is proposed to use the method of adaptive empirical wavelet transform in problems of multiplescale analysis and semantic coding of speech signals, which will increase the efficiency of spectral analysis by decomposing high- frequency speech oscillations into its low-frequency components, namely internal empirical modes. An algorithm for semantic coding of speech signals based on empirical wavelet transform and its software implementation in the MATLAB R2020b programming language has been developed.
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基于经验小波变换的语音信号语义编码方法
这项工作的结果是解决当前开发和研究新的有效的语音信号语义编码方法的科学和实际问题。已知的基于mel-frequency倒谱系数的语音信号语义编码方法,不符合对所研究信号的自适应条件,这是现有方法的一大缺点。提出了一种基于经验小波变换的语音信号语义编码方法,该方法构造自适应Meyer小波滤波器集,然后应用Hilbert谱分析来寻找内部经验模态函数的瞬时幅值和频率,从而确定语义编码效率。将自适应经验小波变换方法应用于语音信号的多尺度分析和语义编码问题,将高频语音振荡分解为其低频分量,即内部经验模态,提高了频谱分析的效率。提出了一种基于经验小波变换的语音信号语义编码算法,并在MATLAB R2020b编程语言下进行了软件实现。
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