We propose a way of integrating likelihood ratio (LR) decision criterion with nuisance attribute projection (NAP) for Gaussian mixture model- (GMM-) based speaker verification. The experiments on the core test of the NIST speaker recognition evaluation (SRE) 2005 data show that the performance of the proposed approach is comparable to that of the standard approach of NAP which uses support vector machines (SVMs) as a decision criterion. Furthermore, we demonstrate that the two criteria provide complementary information that can significantly improve the verification performance if a score-level fusion of both approaches is carried out
This paper presents a text-independent speaker verification method using Gaussian mixture models (GM...
Computing the likelihood-ratio (LR) score of a test utterance is an important step in speaker verifi...
Abstract. In a log-likelihood ratio (LLR)-based speaker verification system, the alternative hypothe...
The performance of a likelihood ratio-based speaker verification system is highly dependent on model...
This paper explores the possibility to replace the usual thresholding decision rule of log likelihoo...
Abstract. Speaker recognition systems frequently use GMM-MAP method for modeling speakers. This meth...
Most of current state-of-the-art speaker verification (SV) systems use Gaussian mixture model (GMM) ...
Despite intuitive expectation and experimental evidence that phonemes contain useful speaker discrim...
This paper discusses speaker verification (SV) using Gaussian mixture models (GMMs), where only utte...
The introduction of Gaussian Mixture Models (GMMs) in the field of speaker verification has led to v...
This paper presents a comparison between Support Vector Ma-chines (SVM) speaker verification systems...
In speaker verification (SV) systems that employ a support vector machine (SVM) classifier to make d...
Abstract. Generative Gaussian Mixture Models (GMMs) are known to be the dominant approach for modeli...
Abstract-In this paper, we study the general verification problem from a Bayesian viewpoint. In the ...
Abstract—This paper addresses the issue of speaker variability and session variability in text-indep...
This paper presents a text-independent speaker verification method using Gaussian mixture models (GM...
Computing the likelihood-ratio (LR) score of a test utterance is an important step in speaker verifi...
Abstract. In a log-likelihood ratio (LLR)-based speaker verification system, the alternative hypothe...
The performance of a likelihood ratio-based speaker verification system is highly dependent on model...
This paper explores the possibility to replace the usual thresholding decision rule of log likelihoo...
Abstract. Speaker recognition systems frequently use GMM-MAP method for modeling speakers. This meth...
Most of current state-of-the-art speaker verification (SV) systems use Gaussian mixture model (GMM) ...
Despite intuitive expectation and experimental evidence that phonemes contain useful speaker discrim...
This paper discusses speaker verification (SV) using Gaussian mixture models (GMMs), where only utte...
The introduction of Gaussian Mixture Models (GMMs) in the field of speaker verification has led to v...
This paper presents a comparison between Support Vector Ma-chines (SVM) speaker verification systems...
In speaker verification (SV) systems that employ a support vector machine (SVM) classifier to make d...
Abstract. Generative Gaussian Mixture Models (GMMs) are known to be the dominant approach for modeli...
Abstract-In this paper, we study the general verification problem from a Bayesian viewpoint. In the ...
Abstract—This paper addresses the issue of speaker variability and session variability in text-indep...
This paper presents a text-independent speaker verification method using Gaussian mixture models (GM...
Computing the likelihood-ratio (LR) score of a test utterance is an important step in speaker verifi...
Abstract. In a log-likelihood ratio (LLR)-based speaker verification system, the alternative hypothe...