Abstract—This paper addresses the issue of speaker variability and session variability in text-independent Gaussian mixture model (GMM) based speaker verification. A speaker model adaptation procedure is proposed which is based on a joint factor analysis approach to speaker verification. It is shown in the paper that this approach facilitates the implementation of a progressive unsupervised adaptation strategy which is able to produce an improved model of speaker identity while minimizing the influence of channel variability. The paper also deals with the interaction between this model adaptation approach and score normalization strategies which act to reduce the variation in likelihood ratio scores. This issue is particularly important in ...
This paper presents a text-independent speaker verification method using Gaussian mixture models (GM...
Abstract—This letter describes speaker verification using a covariance-modeling approach for speaker...
This paper examines combining both relevance MAP and subspace speaker adaptation processes to train ...
Abstract—This paper addresses the issue of speaker variability and session variability in text-indep...
This paper proposes a novel technique of incorporating factor-analysis-based inter-session variabili...
This paper proposes a novel technique of incorporating factor-analysis-based inter-session variabili...
This paper deals with the interaction between progressive model adaptation and score normalization s...
We explore how intrinsic variations (those associated with the speaker rather than the recording env...
Abstract — We propose a new approach to the problem of estimating the hyperparameters which define t...
Due to copyright restrictions, the access to the full text of this article is only available via sub...
This article describes a general and powerful approach to modelling mismatch in speaker recognition ...
Abstract — We compare two approaches to the problem of session variability in GMM-based speaker veri...
Despite intuitive expectation and experimental evidence that phonemes contain useful speaker discrim...
Presented is an approach to modelling session variability for GMM-based text-independent speaker ver...
Presented is an approach to modelling session variability for GMM-based text-independent speaker ver...
This paper presents a text-independent speaker verification method using Gaussian mixture models (GM...
Abstract—This letter describes speaker verification using a covariance-modeling approach for speaker...
This paper examines combining both relevance MAP and subspace speaker adaptation processes to train ...
Abstract—This paper addresses the issue of speaker variability and session variability in text-indep...
This paper proposes a novel technique of incorporating factor-analysis-based inter-session variabili...
This paper proposes a novel technique of incorporating factor-analysis-based inter-session variabili...
This paper deals with the interaction between progressive model adaptation and score normalization s...
We explore how intrinsic variations (those associated with the speaker rather than the recording env...
Abstract — We propose a new approach to the problem of estimating the hyperparameters which define t...
Due to copyright restrictions, the access to the full text of this article is only available via sub...
This article describes a general and powerful approach to modelling mismatch in speaker recognition ...
Abstract — We compare two approaches to the problem of session variability in GMM-based speaker veri...
Despite intuitive expectation and experimental evidence that phonemes contain useful speaker discrim...
Presented is an approach to modelling session variability for GMM-based text-independent speaker ver...
Presented is an approach to modelling session variability for GMM-based text-independent speaker ver...
This paper presents a text-independent speaker verification method using Gaussian mixture models (GM...
Abstract—This letter describes speaker verification using a covariance-modeling approach for speaker...
This paper examines combining both relevance MAP and subspace speaker adaptation processes to train ...