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A multi-filter system for speech enhancement under low signal-to-noise ratios

A multi-filter system for speech enhancement under low signal-to-noise ratios
A multi-filter system for speech enhancement under low signal-to-noise ratios
In this paper, the problem of deteriorating performance of speech recognition under very low signal-to-noise ratios (SNR) is considered. In particular, for a given pre-trained speech recognizer and for a finite set of speech commands, we show that popular noise reduction methods have a mixed performance in speech recognition accuracy under very low SNR. Although most noise reduction methods are attempting to reduce speech distortion or to increase noise suppression, it does not necessarily improve speech recognition accuracy very much due to the complexity of the recognizer. We propose a new hybrid algorithm to optimize on the speech recognition accuracy directly by mixing different noise reduction methods together. We show that this method can indeed improve the accuracy significantly
1547-5816
671-682
Yiu, K.F.C.
b47e9abf-e3f9-4096-b428-6747c552997e
Low, S.Y.
8fd903a4-b0b0-4c1c-9cc7-c2fe87109376
Chan, K.Y.
57cac3dc-eb44-4785-b696-1fe55b564b96
Nordholm, S.
d2441721-2cf0-4387-a95d-7cd2b956c014
Yiu, K.F.C.
b47e9abf-e3f9-4096-b428-6747c552997e
Low, S.Y.
8fd903a4-b0b0-4c1c-9cc7-c2fe87109376
Chan, K.Y.
57cac3dc-eb44-4785-b696-1fe55b564b96
Nordholm, S.
d2441721-2cf0-4387-a95d-7cd2b956c014

Yiu, K.F.C., Low, S.Y., Chan, K.Y. and Nordholm, S. (2009) A multi-filter system for speech enhancement under low signal-to-noise ratios. Journal of Industrial and Management Optimization, 5 (3), 671-682. (doi:10.3934/jimo.2009.5.671).

Record type: Article

Abstract

In this paper, the problem of deteriorating performance of speech recognition under very low signal-to-noise ratios (SNR) is considered. In particular, for a given pre-trained speech recognizer and for a finite set of speech commands, we show that popular noise reduction methods have a mixed performance in speech recognition accuracy under very low SNR. Although most noise reduction methods are attempting to reduce speech distortion or to increase noise suppression, it does not necessarily improve speech recognition accuracy very much due to the complexity of the recognizer. We propose a new hybrid algorithm to optimize on the speech recognition accuracy directly by mixing different noise reduction methods together. We show that this method can indeed improve the accuracy significantly

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Published date: August 2009

Identifiers

Local EPrints ID: 370674
URI: http://eprints.soton.ac.uk/id/eprint/370674
ISSN: 1547-5816
PURE UUID: aed46b14-2ada-4c66-9610-717a59bfa663

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Date deposited: 03 Nov 2014 14:12
Last modified: 14 Mar 2024 18:20

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Contributors

Author: K.F.C. Yiu
Author: S.Y. Low
Author: K.Y. Chan
Author: S. Nordholm

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