经验小波变换在语音信号压缩中的应用

R. Odarchenko, Oleksander Lavrynenko, Denis Bakhtiiarov, Serhii Dorozhynskyi, Veniamin Antonov Olena Zharova
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引用次数: 2

摘要

在本科学研究中,提出了一种基于自适应小波函数族构造的现代经验小波变换方法,以提高语音信号的频谱分析及其后续压缩或滤波的效率。如果我们把傅里叶语音信号的频谱特征作为基,那么这个任务就相当于构造一组带小波滤波器。实现自适应性的一种方法是要记住,小波滤波器的紧凑性直接依赖于,我们需要的信息在语音信号的频谱中,也就是说,傅立叶频谱的振幅越大,所携带的信息对恢复函数越重要,因此对于语音的可理解性来说,较小的振幅就不那么重要了。实际上,内部经验模态函数的性质相当于该函数的频谱具有紧凑的载波,并根据所研究的信号集中在某一频率附近,这使得该方法具有自适应性,提高了语音信号的压缩和滤波效率。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Empirical Wavelet Transform in Speech Signal Compression Problems
In this scientific research it is proposed to apply a modern method of empirical wavelet transform based on the construction of a family of adaptive wavelet functions to increase the efficiency of spectral analysis of speech signals, and their subsequent compression or filtering. If we take as a basis the features of the frequency spectrum of the Fourier speech signal, then the task is equivalent to the construction of a set of band wavelet filters. One way to achieve adaptability is to keep in mind that compact wavelet filter media is directly dependent on, where is the information we need in the spectrum of the speech signal, that is, the larger amplitudes of the Fourier spectrum carry more important information to restore function, and hence for speech intelligibility, and small amplitudes are less important. Indeed, the properties of the function of the internal empirical mode are equivalent to the statement, that the spectrum of this function has a compact carrier and is concentrated around a certain frequency depending on the signal under study, which makes this approach adaptive and increases the efficiency of compression and filtering of speech signals.
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