We introduce a new adaptive Bayesian learning framework, called multiple-stream prior evolution and posterior pooling, for online adaptation of the continuous density hidden Markov model (CDHMM) parameters. Among three architectures we proposed for this framework, we study in detail a specific two stream system where linear transformations are applied to the mean vectors of the CDHMMs to control the evolution of their prior distribution. This new stream of prior distribution can be combined with another stream of prior distribution evolved without any constraints applied. In a series of speaker adaptation experiments on the task of continuous Mandarin speech recognition, we show that the new adaptation algorithm achieves a similar fast-adap...
In our previous works, a Segmental Switching Linear Gaussian Hidden Markov Model (SSLGHMM) was propo...
In this paper, we extend our proposed Viterbi Bayesian predictive classification (VBPC) algorithm to...
Recent advances in automatic speech recognition are accomplished by designing a plug-in maximum a po...
We extend our previously proposed quasi-Bayes adaptive learning framework to cope with the correlate...
We present an efficient maximum likelihood (ML) training procedure for Gaussian mixture continuous d...
Abstract-In this paper, a theoretical framework for Bayesian adaptive training of the parameters of ...
Summarization: The mismatch that frequently occurs between the training and testing conditions of an...
This paper presents a new recursive Bayesian learning approach for transformation parameter estimati...
This paper presents new results by using our previously proposed on-line Bayesian learning approach ...
This paper presents new results by using our previously proposed on-line Bayesian learning approach ...
On-line adaptation of semi-continuous (or tied mixture) hidden Markov model (SCHMM) is studied. A th...
We extend our previously proposed Viterbi Bayesian predictive classification (VBPC) algorithm to acc...
This paper presents a new recursive Bayesian learning approach for transformation parameter estimati...
In this paper, a new hierarchical Bayesian speaker adaptation method called HMAP is proposed that co...
In this paper, a new hierarchical Bayesian speaker adaptation method called HMAP is proposed that co...
In our previous works, a Segmental Switching Linear Gaussian Hidden Markov Model (SSLGHMM) was propo...
In this paper, we extend our proposed Viterbi Bayesian predictive classification (VBPC) algorithm to...
Recent advances in automatic speech recognition are accomplished by designing a plug-in maximum a po...
We extend our previously proposed quasi-Bayes adaptive learning framework to cope with the correlate...
We present an efficient maximum likelihood (ML) training procedure for Gaussian mixture continuous d...
Abstract-In this paper, a theoretical framework for Bayesian adaptive training of the parameters of ...
Summarization: The mismatch that frequently occurs between the training and testing conditions of an...
This paper presents a new recursive Bayesian learning approach for transformation parameter estimati...
This paper presents new results by using our previously proposed on-line Bayesian learning approach ...
This paper presents new results by using our previously proposed on-line Bayesian learning approach ...
On-line adaptation of semi-continuous (or tied mixture) hidden Markov model (SCHMM) is studied. A th...
We extend our previously proposed Viterbi Bayesian predictive classification (VBPC) algorithm to acc...
This paper presents a new recursive Bayesian learning approach for transformation parameter estimati...
In this paper, a new hierarchical Bayesian speaker adaptation method called HMAP is proposed that co...
In this paper, a new hierarchical Bayesian speaker adaptation method called HMAP is proposed that co...
In our previous works, a Segmental Switching Linear Gaussian Hidden Markov Model (SSLGHMM) was propo...
In this paper, we extend our proposed Viterbi Bayesian predictive classification (VBPC) algorithm to...
Recent advances in automatic speech recognition are accomplished by designing a plug-in maximum a po...