Structured precision modelling is an important approach to improve the intra-frame correlation modelling of the standard HMM, where Gaussian mixture model with diagonal covariance are used. Previous work has all been focused on direct structured representation of the precision matrices. In this paper, a new framework is proposed, where the structure of the Cholesky square root of the precision matrix is investigated, referred to as Cholesky Basis Superposition (CBS). Each Cholesky matrix associated with a particular Gaussian distribution is represented as a linear combination of a set of Gaussian independent basis upper-triangular matrices. Efficient optimization methods are derived for both combination weights and basis matrices. Experimen...
Prior to publication, please maintain the enclosed paper in confidence and use it only for purposes ...
Supervectors represent speaker-specific Gaussian Mixture Models which are enrolled from a Universal ...
We describe a new approach to speech recognition, in which all Hidden Markov Model (HMM) states shar...
Abstract — Gaussian Mixture Models (GMMs) are commonly used as the output density function for large...
In this paper, we present a Hierarchical Correlation Compensation (HCC) scheme to reliably estimate ...
In most HMM-based recognition systems, a mixture of diagonal covariance gaussians is used to model t...
Recently various techniques to improve the correlation model of feature vector elements in speech re...
Recently various techniques to improve the correlation model of feature vector elements in speech re...
The linear dynamic model (LDM), also known as the Kalman filter model, has been the subject of resea...
An estimation of parameters of a multivariate Gaussian Mixture Model is usually based on a criterion...
Most HMM-based speech recognition systems use Gaussian mixtures as observation probability density f...
We address the problem of learning the structure of Gaussian graphical models for use in automatic s...
We discuss the applicability of large margin techniques to the prob-lem of estimating linear transfo...
Includes bibliographical references (pages [109]-111)This thesis employs line spectral pairs (LSPs) ...
We propose to use sparse inverse covariance matrices for acoustic model training when there is insuf...
Prior to publication, please maintain the enclosed paper in confidence and use it only for purposes ...
Supervectors represent speaker-specific Gaussian Mixture Models which are enrolled from a Universal ...
We describe a new approach to speech recognition, in which all Hidden Markov Model (HMM) states shar...
Abstract — Gaussian Mixture Models (GMMs) are commonly used as the output density function for large...
In this paper, we present a Hierarchical Correlation Compensation (HCC) scheme to reliably estimate ...
In most HMM-based recognition systems, a mixture of diagonal covariance gaussians is used to model t...
Recently various techniques to improve the correlation model of feature vector elements in speech re...
Recently various techniques to improve the correlation model of feature vector elements in speech re...
The linear dynamic model (LDM), also known as the Kalman filter model, has been the subject of resea...
An estimation of parameters of a multivariate Gaussian Mixture Model is usually based on a criterion...
Most HMM-based speech recognition systems use Gaussian mixtures as observation probability density f...
We address the problem of learning the structure of Gaussian graphical models for use in automatic s...
We discuss the applicability of large margin techniques to the prob-lem of estimating linear transfo...
Includes bibliographical references (pages [109]-111)This thesis employs line spectral pairs (LSPs) ...
We propose to use sparse inverse covariance matrices for acoustic model training when there is insuf...
Prior to publication, please maintain the enclosed paper in confidence and use it only for purposes ...
Supervectors represent speaker-specific Gaussian Mixture Models which are enrolled from a Universal ...
We describe a new approach to speech recognition, in which all Hidden Markov Model (HMM) states shar...