Evaluation of Signal Processing Methods for Speech Enhancement
Dubey, Mahika
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https://hdl.handle.net/2142/90373
Description
Title
Evaluation of Signal Processing Methods for Speech Enhancement
Author(s)
Dubey, Mahika
Contributor(s)
Smaragdis, Paris
Issue Date
2016-05
Keyword(s)
Signal processing
Speech enhancement
Abstract
This thesis explores some of the main approaches to the problem of speech
signal enhancement. Traditional signal processing techniques including
spectral subtraction, Wiener filtering, and subspace methods are very widely used
and can produce very good results, especially in the cases of constant ambient
noise, or noise that is predictable over the course of the signal. We first study
these methods and their results, and conclude with an analysis of the
successes and failures of each. Comparisons are based on the effectiveness of the
methods of removing disruptive noise, the speech quality and intelligibility of
the enhanced signals, and whether or not they introduce some new artifacts
into the signal. These characteristics are analyzed using the perceptual
evaluation of speech quality (PESQ) measure, the segmental
signal-to-noise ratio
(SNR), the log likelihood ratio (LLR), and weighted spectral slope distance.
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