Supervectors represent speaker-specific Gaussian Mixture Models which are enrolled from a Universal Background Model (UBM) and approximate the unknown, underlying speech feature distributions. But as supervectors only consist of the stacked means of the Gaussian components, lowdimensional i-vectors which are derived from them do not completely capture the true feature distributions. In this work, the classical supervectors are extended with additional parameters before reducing their dimension to capture the feature distributions more accurately and complement the i-vectors more effectively. To extend a supervector, the mixture weights, the log-likelihood values of the UBM, a Bhattacharyya-distance based kernel and the Hellinger distance be...
This report proposes a novel approach for Gaussian Mixture Model (GMM) weights decomposition and ada...
GMM supervectors are among the most popular feature sets used in SVM-based text-independent speaker...
To alleviate the problem of severe degradation of speaker recognition performance under noisy enviro...
Gaussian mixture model (GMM) supervector is one of the effective techniques in text independent spea...
In this paper, we present a newmodeling approach for speaker recognition, which uses a kind of novel...
ii Speaker adaptation based on the Universal Background Model (UBM) has become a standard approach f...
Automatic speaker recognition in uncontrolled environments is a very challenging task due to channel...
Speaker recognition using support vector machines (SVMs) with features derived from generative model...
In recent years, adaptation techniques have been given special focus in speaker recognition tasks, m...
Automatic speaker recognition in uncontrolled environments is a very challenging task due to channel...
In speaker verification (SV) systems that employ a support vector machine (SVM) classifier to make d...
Abstract—Support vector machines (SVMs), and kernel classi-fiers in general, rely on the kernel func...
Over the last few years, i-vectors have been the state-of-the-art technique in speaker recognition. ...
Gaussian mixture model Universal background model iou ssio methods for text-independent speaker veri...
Template-matching and discriminative techniques, like support vector machines (SVMs), have been wide...
This report proposes a novel approach for Gaussian Mixture Model (GMM) weights decomposition and ada...
GMM supervectors are among the most popular feature sets used in SVM-based text-independent speaker...
To alleviate the problem of severe degradation of speaker recognition performance under noisy enviro...
Gaussian mixture model (GMM) supervector is one of the effective techniques in text independent spea...
In this paper, we present a newmodeling approach for speaker recognition, which uses a kind of novel...
ii Speaker adaptation based on the Universal Background Model (UBM) has become a standard approach f...
Automatic speaker recognition in uncontrolled environments is a very challenging task due to channel...
Speaker recognition using support vector machines (SVMs) with features derived from generative model...
In recent years, adaptation techniques have been given special focus in speaker recognition tasks, m...
Automatic speaker recognition in uncontrolled environments is a very challenging task due to channel...
In speaker verification (SV) systems that employ a support vector machine (SVM) classifier to make d...
Abstract—Support vector machines (SVMs), and kernel classi-fiers in general, rely on the kernel func...
Over the last few years, i-vectors have been the state-of-the-art technique in speaker recognition. ...
Gaussian mixture model Universal background model iou ssio methods for text-independent speaker veri...
Template-matching and discriminative techniques, like support vector machines (SVMs), have been wide...
This report proposes a novel approach for Gaussian Mixture Model (GMM) weights decomposition and ada...
GMM supervectors are among the most popular feature sets used in SVM-based text-independent speaker...
To alleviate the problem of severe degradation of speaker recognition performance under noisy enviro...