[[abstract]]© 2008 Institute of Electrical and Electronics Engineers-In this paper, we develop a new class of parameter estimation techniques for the Gaussian continuous-density hidden Markov model (CDHMM), where the discriminative margin among a set of HMMs is used as the objective function for optimization. In addition to optimizing the mean parameters of the large-margin CDHMM, which was attempted in the past, our new technique is able to optimize the variance parameters as well. We show that the joint mean and variance estimation problem is a difficult optimization problem but can be approximated by a convex relaxation method. We provide some simulation results using synthetic data which possess key properties of speech signals to valid...
Abstract-In this paper, a theoretical framework for Bayesian adaptive training of the parameters of ...
Abstract—We consider regularized covariance estimation in scaled Gaussian settings, e.g., elliptical...
Infinite hidden Markov models (iHMMs) are nonparametric Bayesian extensions of hidden Markov models ...
We study the problem of parameter estimation in continuous density hidden Markov models (CD-HMMs) fo...
In this work, motivated by large margin classifiers in machine learning, we propose a novel method t...
Abstract—In this paper, we propose to use a new optimiza-tion method, i.e., semidefinite programming...
Automatic speech recognition (ASR) depends critically on building acoustic models for linguistic uni...
International audienceLarge margin learning of Continuous Density HMMs with a partially labeled data...
Speech dynamic feature are routinely used in current speech recognition systems in combination with ...
We study parameter estimation in linear Gaussian covariance models, which are p-dimensional Gaussian...
We study parameter estimation in linear Gaussian covariance models, which are p-dimensional Gaussian...
Speech dynamic features are routinely used in current speech recognition systems in combination with...
In this paper, we present a formulation of minimum classification error linear regression (MCELR) fo...
Nowadays, HMM-based speech recognition systems are used in many real time processing applications, f...
© Copyright 2001 IEEEIn this article, we consider hidden Markov model (HMM) parameter estimation in ...
Abstract-In this paper, a theoretical framework for Bayesian adaptive training of the parameters of ...
Abstract—We consider regularized covariance estimation in scaled Gaussian settings, e.g., elliptical...
Infinite hidden Markov models (iHMMs) are nonparametric Bayesian extensions of hidden Markov models ...
We study the problem of parameter estimation in continuous density hidden Markov models (CD-HMMs) fo...
In this work, motivated by large margin classifiers in machine learning, we propose a novel method t...
Abstract—In this paper, we propose to use a new optimiza-tion method, i.e., semidefinite programming...
Automatic speech recognition (ASR) depends critically on building acoustic models for linguistic uni...
International audienceLarge margin learning of Continuous Density HMMs with a partially labeled data...
Speech dynamic feature are routinely used in current speech recognition systems in combination with ...
We study parameter estimation in linear Gaussian covariance models, which are p-dimensional Gaussian...
We study parameter estimation in linear Gaussian covariance models, which are p-dimensional Gaussian...
Speech dynamic features are routinely used in current speech recognition systems in combination with...
In this paper, we present a formulation of minimum classification error linear regression (MCELR) fo...
Nowadays, HMM-based speech recognition systems are used in many real time processing applications, f...
© Copyright 2001 IEEEIn this article, we consider hidden Markov model (HMM) parameter estimation in ...
Abstract-In this paper, a theoretical framework for Bayesian adaptive training of the parameters of ...
Abstract—We consider regularized covariance estimation in scaled Gaussian settings, e.g., elliptical...
Infinite hidden Markov models (iHMMs) are nonparametric Bayesian extensions of hidden Markov models ...