DocumentCode
951253
Title
Speech Enhancement Combining Optimal Smoothing and Errors-In-Variables Identification of Noisy AR Processes
Author
Bobillet, William ; Diversi, Roberto ; Grivel, Eric ; Guidorzi, Roberto ; Najim, Mohamed ; Soverini, Umberto
Author_Institution
Equipe Signal et Image-LAPS, Talence
Volume
55
Issue
12
fYear
2007
Firstpage
5564
Lastpage
5578
Abstract
In the framework of speech enhancement, several parametric approaches based on an a priori model for a speech signal have been proposed. When using an autoregressive (AR) model, three issues must be addressed. (1) How to deal with AR parameter estimation? Indeed, due to additive noise, the standard least squares criterion leads to biased estimates of AR parameters. (2) Can an estimation of the variance of the additive noise for each speech frame be obtained? A voice activity detector is often used for its estimation. (3) Which estimation rules and techniques (filtering, smoothing, etc.) can be considered to retrieve the speech signal? Our contribution in this paper is threefold. First, we propose to view the identification of the noisy AR process as an errors-in-variables problem. This blind method has the advantage of providing accurate estimations of both the AR parameters and the variance of the additive noise. Second, we propose an alternative algorithm to standard Kalman smoothing, based on a constrained minimum variance estimation procedure with a lower computational cost. Third, the combination of these two steps is investigated. It provides better results than some existing speech enhancement approaches in terms of signal-to-noise-ratio (SNR), segmental SNR, and informal subjective tests.
Keywords
Kalman filters; autoregressive processes; parameter estimation; smoothing methods; speech enhancement; error-in-variable identification; noisy autoregressive process; optimal Kalman smoothing method; parameter estimation; speech enhancement; voice activity detector; Autoregressive (AR) parameter estimation; Kalman filtering; smoothing; speech enhancement;
fLanguage
English
Journal_Title
Signal Processing, IEEE Transactions on
Publisher
ieee
ISSN
1053-587X
Type
jour
DOI
10.1109/TSP.2007.898787
Filename
4359512
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