FORWARD MASKING THRESHOLD ESTIMATION USING NEURAL NETWORKS AND ITS APPLICATION TO PARALLEL SPEECH ENHANCEMENT

Authors

  • T. S. Gunawan
  • O. O. Khalifa
  • E. Ambikairajah

DOI:

https://doi.org/10.31436/iiumej.v11i1.41

Abstract

Forward masking models have been used successfully in speech enhancement and audio coding. Presently, forward masking thresholds are estimated using simplified masking models which have been used for audio coding and speech enhancement applications. In this paper, an accurate approximation of forward masking threshold estimation using neural networks is proposed. A performance comparison to the other existing masking models in speech enhancement application is presented. Objective measures using PESQ demonstrates that our proposed forward masking model, provides significant improvements (5-15 %) over four existing models, when tested with speech signals corrupted by various noises at very low signal to noise ratios. Moreover, a parallel implementation of the speech enhancement algorithm was developed using Matlab parallel computing toolbox.

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Published

2010-05-26

How to Cite

Gunawan, T. S., Khalifa, O. O., & Ambikairajah, E. (2010). FORWARD MASKING THRESHOLD ESTIMATION USING NEURAL NETWORKS AND ITS APPLICATION TO PARALLEL SPEECH ENHANCEMENT. IIUM Engineering Journal, 11(1), 15–26. https://doi.org/10.31436/iiumej.v11i1.41

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Section

Articles