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KMID : 0917519970010010277
Journal of Speech Sciences
1997 Volume.1 No. 1 p.277 ~ p.283
Speech Recognition in Noisy Environments using Wiener Filtering
Kim Jin-Young

Eom Ki-Wan
Choi Hong-Sub
Abstract
In this paper, we present a robust recognition algorithm based on the Wiener filtering method as a research tool develop the Korean Speech recognition system. We especially used Wiener filtering method in cepstrum-domain, because the method in frequency-domain is computationally expensive and complex.
Evaluation of the effectiveness of this method has been conducted in speaker-independent isolated Korean digit recognition tasks using discrete HMM speech recognition systems. In these tasks, we used 12th order weighted cepstral as a feature vector and added computer simulated white gaussian noise of different levels to clean speech signals for recognition experiments under noisy conditions.
Experimental results show that the presented algorithm can provide an improvement in recognition of as much as from 5% to 20% in comparison to spectral subtraction method.
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