Speech signal filtration using double-density dual-tree complex wavelet transform


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Abstract

We consider the task of increasing the quality of speech signal cleaning from additive noise by means of double-density dual-tree complex wavelet transform (DDCWT) as compared to the standard method of wavelet filtration based on a multiscale analysis using discrete wavelet transform (DWT) with real basis set functions such as Daubechies wavelets. It is shown that the use of DDCWT instead of DWT provides a significant increase in the mean opinion score (MOS) rating at a high additive noise and makes it possible to reduce the number of expansion levels for the subsequent correction of wavelet coefficients.

About the authors

A. S. Yasin

Saratov State University; University of Technology

Email: pavlov.alexeyn@gmail.com
Russian Federation, Saratov, 410012; Baghdad

O. N. Pavlova

Saratov State University

Email: pavlov.alexeyn@gmail.com
Russian Federation, Saratov, 410012

A. N. Pavlov

Saratov State University; Yuri Gagarin State Technical University of Saratov; Kotelnikov Institute of Radio Engineering and Electronics (Saratov Branch)

Author for correspondence.
Email: pavlov.alexeyn@gmail.com
Russian Federation, Saratov, 410012; Saratov, 410054; Saratov, 410019

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