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Gaussian selection algorithm in Continuous Speech Recognition

Authors :
Vlado Delic
Branislav Z. Popovic
Marko Janev
Source :
2012 20th Telecommunications Forum (TELFOR).
Publication Year :
2012
Publisher :
IEEE, 2012.

Abstract

Clustering of Gaussian mixture components, i.e. Hierarchical Gaussian mixture model clustering (HGMMC) is a key component of Gaussian selection (GS) algorithm, used in order to increase the speed of a Continuous Speech Recognition (CSR) system, without any significant degradation of its recognition accuracy. In this paper a novel Split-and-Merge (S&M) HGMMC algorithm is applied to GS, in order to achieve a better trade-off between speed and accuracy in a CSR task. The algorithm is further improved by introducing model selection in order to obtain the best possible trade-off between recognition accuracy and computational load in a GS task applied within an actual recognition system. At the end of the paper we discuss additional improvements towards finding the optimal setting for the Gaussian selection scheme.

Details

Database :
OpenAIRE
Journal :
2012 20th Telecommunications Forum (TELFOR)
Accession number :
edsair.doi...........ac7784ae0625ddbc9a91f3f769ed52ef