Abstract. In this paper, we propose a model-based hierarchical clustering algorithm that automatically builds a regression class tree for the well-known speaker adaptation technique- Maximum Likelihood Linear Regression (MLLR). When building a regression class tree, the mean vectors of the Gaussian components of the model set of a speaker independent CDHMM-based speech recognition system are collected as the input data for clustering. The proposed algorithm comprises two stages. First, the input data (i.e., all the Gaussian mean vectors of the CDHMMs) is iteratively partitioned by a divisive hierarchical clustering strategy, and the Bayesian Information Criterion (BIC) is applied to determine the number of clusters (i.e., the base classes o...
This paper describes a new context clustering technique for average voice model, which is a set of s...
The process of manually labeling data is very expensive and sometimes infeasible due to privacy and ...
In the hidden Markov modeling framework with mixture Gaussians, adaptation is often done by modifyin...
A speaker clustering algorithm is presented that is based on an eigenspace representation of Maximum...
Conventional Speaker Identification(SI) Systems uses individual Gaussian Mixture Models(GMM) for eve...
Speaker clustering is one of the major methods for speaker adaptation. MLLR (Maximum Likelihood Line...
Recent Automatic Speech Recognition (ASR) studies have shown that Kullback-Leibler diverge based hid...
We present an approach to cluster the training data for automatic speech recognition (ASR). A relati...
Abstract—In this paper, a new hierarchical Bayesian speaker adaptation method called HMAP is propose...
International audienceIn this paper, we extend the recently introduced Maximum Like- lihood Linear R...
Abstract — In this paper an efficient speaker identification (SpkID) method is proposed. In GMM-base...
We propose a method of constructing regression trees within the framework of maximum likelihood. It ...
This paper presents a new recursive Bayesian learning approach for transformation parameter estimati...
This paper proposes Bayesian context clustering using cross validation for hidden Markov model (HMM)...
We propose a method of constructing regression trees within the framework of maximum likelihood. It ...
This paper describes a new context clustering technique for average voice model, which is a set of s...
The process of manually labeling data is very expensive and sometimes infeasible due to privacy and ...
In the hidden Markov modeling framework with mixture Gaussians, adaptation is often done by modifyin...
A speaker clustering algorithm is presented that is based on an eigenspace representation of Maximum...
Conventional Speaker Identification(SI) Systems uses individual Gaussian Mixture Models(GMM) for eve...
Speaker clustering is one of the major methods for speaker adaptation. MLLR (Maximum Likelihood Line...
Recent Automatic Speech Recognition (ASR) studies have shown that Kullback-Leibler diverge based hid...
We present an approach to cluster the training data for automatic speech recognition (ASR). A relati...
Abstract—In this paper, a new hierarchical Bayesian speaker adaptation method called HMAP is propose...
International audienceIn this paper, we extend the recently introduced Maximum Like- lihood Linear R...
Abstract — In this paper an efficient speaker identification (SpkID) method is proposed. In GMM-base...
We propose a method of constructing regression trees within the framework of maximum likelihood. It ...
This paper presents a new recursive Bayesian learning approach for transformation parameter estimati...
This paper proposes Bayesian context clustering using cross validation for hidden Markov model (HMM)...
We propose a method of constructing regression trees within the framework of maximum likelihood. It ...
This paper describes a new context clustering technique for average voice model, which is a set of s...
The process of manually labeling data is very expensive and sometimes infeasible due to privacy and ...
In the hidden Markov modeling framework with mixture Gaussians, adaptation is often done by modifyin...