Research Article
BibTex RIS Cite
Year 2018, Volume: 5 Issue: 4, 159 - 171, 30.12.2018

Abstract

References

  • Chavan MS, Mastorakis N, Studies on implementation of Harr and Daubechies wavelet for denoising of speech signal. international journal of circuits, systems and signal processing, 4 (3), 83-96, 2010
  • Morlet J, Arens G, Fourgeau E, and Giard D, Wave propogation and sampling theory. Complex signal and scattering in multilayered media, Geophysics, 47(2), 203–221, 1982
  • Burrus CS, Gopinath RA, Guo H, Odegard JE, Selesnick IW, Introduction to wavelets and wavelet transforms: a primer (Vol. 1). New Jersey: Prentice hall, 1998
  • Debnath L, Shah FA, Wavelet transforms and their applications (pp. 12-14). Boston: Birkhäuser, 2002
  • Meyer Y, Wavelets and operators (Vol. 1). Cambridge university press., 1992
  • Luna AEV, Nuñez AJ, Lucero DS, Lima CMO, Soto JGA, Gil AF, Alarcon MM, De-noising audio signals using Matlab wavelets toolbox. In Engineering education and research using Matlab,. InTech., 2011
  • Munegowda BK, Performance and Comparative Analysis of Wavelet Transform in Denoising Audio Signal from Various Realistic Noise. Doctoral dissertation, Napier University, Edinburgh, Scotland, United Kingdom, 2016
  • Verma N, Verma AK, Performance analysis of wavelet thresholding methods in denoising of audio signals of some Indian Musical Instruments. International Journal of Engineering Science and Technology, 4 (5), 2040-2045, 2012
  • Cornish CR, Bretherton CS, Maximal Overlap Wavelet Statistical Analysis with Application to Atmospheric Turbulence. Journal of Boundary-Layer Meteorology, 119, 339–374, 2006
  • Percival DB, Burnell AC, Walden AT, Wavelet Methods for Time Series Analysis. Cambridge University Press, 2000
  • Polikar R, The wavelet tutorial. 1996
  • Yuan X, Auditory model-based bionic wavelet transform for speech enhancement. Doctoral dissertation, Marquette University, 2003
  • Venkateswarlu SC, Reddy AS, Prasad KS, Speech Enhancement in terms of Objective Quality Measures Based on Wavelet Hybrid Thresholding the Multitaper Spectrum. International Journal of Advanced Research in Electrical, Electronics and Instrumentation Engineering, 5 (1), 201-219, 2016
  • Kim E, A Wavelet Transform Module for a Speech Recognition Virtual Machine. Doctoral dissertation, Minnesota State University, Mankato, 2016
  • Kumari VSR, Devarakonda DK, A wavelet based denoising of speech signal. International Journal of Engineering Trends and Technology (IJETT), Vol.5, 107-115, 2013
  • Donoho DL, Johnstone IM, Ideal Denoising In an Orthonormal Basis Chosen From A Library of Bases. Comptes Rendus De L Academie Des Sciences Serie I-Mathematique, 319 (12), 1317-1322, 1994
  • Donoho DL, Johnstone IM, Ideal spatial adaptation by wavelet shrinkage. Biometrika, 81 ( 3), 425–455, 1994
  • Misiti M, Misiti Y, Oppenheim G, Poggi JM, Wavelet toolbox. The MathWorks Inc., Natick, MA, 15, 21, 1996
  • Loizou P, NOIZEUS: A noisy speech corpus for evaluation of speech enhancement algorithms. Speech Communication, 49, 588-601, 2017
  • Hirsch HG, Pearce D, The Aurora experimental framework for the performance evaluation of speech recognition systems under noisy conditions. ISCA Tutorial and Research Workshop (ITRW) ASR2000, September 2000
  • Daubechies I, Orthonormal bases of compactly supported wavelets. Comm. Pure Appl. Math., 41, 909-996, 1988

Speech Enhancement using Maximal Overlap Discrete Wavelet Transform

Year 2018, Volume: 5 Issue: 4, 159 - 171, 30.12.2018

Abstract

Signal denoising for non-stationary digital signals can be effectively
succeeded by using discrete wavelet transform. Selecting of a suitable thresholding
method is important to minimize the loss of useful signal information. This
paper demonstrates the application of the maximal overlap wavelet transform
(Modwt) technique in speech signal denoising. The analysis algorithm was performed
on Matlab platform. In this algorithm, different kinds of input noisy speech signals
including environmental background noises such as restaurant, car, street or
station were tested. The noisy signals were filtered from the speech signal by thresholding
of wavelet coefficients with threshold estimation methods known as sgtwolog, modwtsqtwolog,
heursure, rigrsure and minimaxi. The performance of the Modwt in denoising
process was evaluated by comparing signal-to noise ratio (SNR) and mean square
error (MSE) results to those of well-known threshold estimation methods. First,
denoising effectiveness of a Modwt based threshold method was tested in
different scenarios and very important improvements in denoising process were
achieved by Modwt based scenarios. Next, the influence of the different
wavelets families on Modwt based threshold estimation method was evaluated by experimental
results. The results revealed that Modwt based method outperforms conventional threshold
methods while providing nearly up to a %24 increase in SNR value.

References

  • Chavan MS, Mastorakis N, Studies on implementation of Harr and Daubechies wavelet for denoising of speech signal. international journal of circuits, systems and signal processing, 4 (3), 83-96, 2010
  • Morlet J, Arens G, Fourgeau E, and Giard D, Wave propogation and sampling theory. Complex signal and scattering in multilayered media, Geophysics, 47(2), 203–221, 1982
  • Burrus CS, Gopinath RA, Guo H, Odegard JE, Selesnick IW, Introduction to wavelets and wavelet transforms: a primer (Vol. 1). New Jersey: Prentice hall, 1998
  • Debnath L, Shah FA, Wavelet transforms and their applications (pp. 12-14). Boston: Birkhäuser, 2002
  • Meyer Y, Wavelets and operators (Vol. 1). Cambridge university press., 1992
  • Luna AEV, Nuñez AJ, Lucero DS, Lima CMO, Soto JGA, Gil AF, Alarcon MM, De-noising audio signals using Matlab wavelets toolbox. In Engineering education and research using Matlab,. InTech., 2011
  • Munegowda BK, Performance and Comparative Analysis of Wavelet Transform in Denoising Audio Signal from Various Realistic Noise. Doctoral dissertation, Napier University, Edinburgh, Scotland, United Kingdom, 2016
  • Verma N, Verma AK, Performance analysis of wavelet thresholding methods in denoising of audio signals of some Indian Musical Instruments. International Journal of Engineering Science and Technology, 4 (5), 2040-2045, 2012
  • Cornish CR, Bretherton CS, Maximal Overlap Wavelet Statistical Analysis with Application to Atmospheric Turbulence. Journal of Boundary-Layer Meteorology, 119, 339–374, 2006
  • Percival DB, Burnell AC, Walden AT, Wavelet Methods for Time Series Analysis. Cambridge University Press, 2000
  • Polikar R, The wavelet tutorial. 1996
  • Yuan X, Auditory model-based bionic wavelet transform for speech enhancement. Doctoral dissertation, Marquette University, 2003
  • Venkateswarlu SC, Reddy AS, Prasad KS, Speech Enhancement in terms of Objective Quality Measures Based on Wavelet Hybrid Thresholding the Multitaper Spectrum. International Journal of Advanced Research in Electrical, Electronics and Instrumentation Engineering, 5 (1), 201-219, 2016
  • Kim E, A Wavelet Transform Module for a Speech Recognition Virtual Machine. Doctoral dissertation, Minnesota State University, Mankato, 2016
  • Kumari VSR, Devarakonda DK, A wavelet based denoising of speech signal. International Journal of Engineering Trends and Technology (IJETT), Vol.5, 107-115, 2013
  • Donoho DL, Johnstone IM, Ideal Denoising In an Orthonormal Basis Chosen From A Library of Bases. Comptes Rendus De L Academie Des Sciences Serie I-Mathematique, 319 (12), 1317-1322, 1994
  • Donoho DL, Johnstone IM, Ideal spatial adaptation by wavelet shrinkage. Biometrika, 81 ( 3), 425–455, 1994
  • Misiti M, Misiti Y, Oppenheim G, Poggi JM, Wavelet toolbox. The MathWorks Inc., Natick, MA, 15, 21, 1996
  • Loizou P, NOIZEUS: A noisy speech corpus for evaluation of speech enhancement algorithms. Speech Communication, 49, 588-601, 2017
  • Hirsch HG, Pearce D, The Aurora experimental framework for the performance evaluation of speech recognition systems under noisy conditions. ISCA Tutorial and Research Workshop (ITRW) ASR2000, September 2000
  • Daubechies I, Orthonormal bases of compactly supported wavelets. Comm. Pure Appl. Math., 41, 909-996, 1988
There are 21 citations in total.

Details

Primary Language English
Journal Section Electrical & Electronics Engineering
Authors

Selma Özaydın

İman Khalil Alak This is me

Publication Date December 30, 2018
Submission Date August 7, 2018
Published in Issue Year 2018 Volume: 5 Issue: 4

Cite

APA Özaydın, S., & Alak, İ. K. (2018). Speech Enhancement using Maximal Overlap Discrete Wavelet Transform. Gazi University Journal of Science Part A: Engineering and Innovation, 5(4), 159-171.