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Performance analysis of classical MAP adaptation based methods in speaker and channel adaptation in GMM-based speaker verification systems

Authors :
Koşunda, Serol
Yeşil, Fatih
Ayazoğlu, Yaprak
Demiroğlu, Cenk
Özyeğin University
Demiroğlu, Cenk
Koşunda, Serol
Yeşil, Fatih
Ayazoğlu, Yaprak
Publication Year :
2011
Publisher :
IEEE, 2011.

Abstract

Due to copyright restrictions, the access to the full text of this article is only available via subscription. In this paper, performance of Gaussian mixture models (GMM) based algorithms implemented in Speech Processing Laboratory at Ozyegin University, within NIST SRE2004 and 2006 database was reported. Gaussian mixture models (GMM) is one of the most commonly used methods in text-independent speaker verification systems. In this paper, performance of the GMM approach has been measured with different parameters and settings. It has also been observed that eigenchannel-MAP and JFA methods both have increased the performance of the system against session variability which is one of the most challenging problem in text-independent speaker verification systems. Santez

Details

Language :
Turkish
Database :
OpenAIRE
Accession number :
edsair.od......1862..6a15ee32d2b1d4bbd5ee0528d0d66ff6