We extend our previously proposed quasi-Bayes adaptive learning framework to cope with the correlated continuous density hidden Markov models (HMMs) with Gaussian mixture state observation densities in which all mean vectors are assumed to be correlated and have a joint prior distribution. A successive approximation algorithm is proposed to implement the correlated mean vectors' updating. As an example, by applying the method to an on-line speaker adaptation application, the algorithm is experimentally shown to be asymptotically convergent as well as being able to enhance the efficiency and the effectiveness of the Bayes learning by taking into account the correlation information between different model parameters. The technique can be used...
Recent advances in automatic speech recognition are accomplished by designing a plug-in maximum a po...
This paper presents a new recursive Bayesian learning approach for transformation parameter estimati...
In our previous works, a Segmental Switching Linear Gaussian Hidden Markov Model (SSLGHMM) was propo...
We introduce a new adaptive Bayesian learning framework, called multiple-stream prior evolution and ...
On-line adaptation of semi-continuous (or tied mixture) hidden Markov model (SCHMM) is studied. A th...
Abstract-In this paper, a theoretical framework for Bayesian adaptive training of the parameters of ...
This paper presents a new recursive Bayesian learning approach for transformation parameter estimati...
Summarization: The mismatch that frequently occurs between the training and testing conditions of an...
Summarization: A trend in automatic speech recognition systems is the use of continuous mixture-dens...
Summarization: The recognition accuracy in previous large vocabulary automatic speech recognition (A...
Summarization: The recognition accuracy in recent large vocabulary Automatic Speech Recognition (ASR...
Continuous-density hidden Markov models (HMM) are a popular approach to the problem of modeling sequ...
Continuous-density hidden Markov models (HMM) are a popular approach to the problem of modeling sequ...
Continuous-density hidden Markov models (HMM) are a popular approach to the problem of modeling sequ...
This paper presents a new recursive Bayesian learning approach for transformation parameter estimati...
Recent advances in automatic speech recognition are accomplished by designing a plug-in maximum a po...
This paper presents a new recursive Bayesian learning approach for transformation parameter estimati...
In our previous works, a Segmental Switching Linear Gaussian Hidden Markov Model (SSLGHMM) was propo...
We introduce a new adaptive Bayesian learning framework, called multiple-stream prior evolution and ...
On-line adaptation of semi-continuous (or tied mixture) hidden Markov model (SCHMM) is studied. A th...
Abstract-In this paper, a theoretical framework for Bayesian adaptive training of the parameters of ...
This paper presents a new recursive Bayesian learning approach for transformation parameter estimati...
Summarization: The mismatch that frequently occurs between the training and testing conditions of an...
Summarization: A trend in automatic speech recognition systems is the use of continuous mixture-dens...
Summarization: The recognition accuracy in previous large vocabulary automatic speech recognition (A...
Summarization: The recognition accuracy in recent large vocabulary Automatic Speech Recognition (ASR...
Continuous-density hidden Markov models (HMM) are a popular approach to the problem of modeling sequ...
Continuous-density hidden Markov models (HMM) are a popular approach to the problem of modeling sequ...
Continuous-density hidden Markov models (HMM) are a popular approach to the problem of modeling sequ...
This paper presents a new recursive Bayesian learning approach for transformation parameter estimati...
Recent advances in automatic speech recognition are accomplished by designing a plug-in maximum a po...
This paper presents a new recursive Bayesian learning approach for transformation parameter estimati...
In our previous works, a Segmental Switching Linear Gaussian Hidden Markov Model (SSLGHMM) was propo...