Abstract-In this paper, a theoretical framework for Bayesian adaptive training of the parameters of discrete hidden Markov model (DHMM) and of semi-continuous HMM (SCHMM) with Gaussian mixture state observation densities is presented. In addition to formulating the forward-backward MAP (maximum a posterion’) and the segmental MAP algorithms for estimating the above HMM parameters, a computationally efficient segmental quasi-Bayes algorithm for estimating the state-specific mixture coefficients in SCHMM is developed. For estimating the param-eters of the prior densities, a new empirical Bayes method based on the moment estimates is also proposed. The MAP algorithms and the prior parameter specification are directly applicable to training spe...
[[abstract]]© 1997 Elsevier - This paper presents an adaptation method of speech hidden Markov model...
We introduce a new adaptive Bayesian learning framework, called multiple-stream prior evolution and ...
Initially introduced in the late 1960's and early 1970's, hidden Markov models (HMMs) have become in...
On-line adaptation of semi-continuous (or tied mixture) hidden Markov model (SCHMM) is studied. A th...
This paper presents a new recursive Bayesian learning approach for transformation parameter estimati...
This paper presents a new recursive Bayesian learning approach for transformation parameter estimati...
[[abstract]]© 1997 Institute of Electrical and Electronics Engineers - We present a hybrid algorithm...
We extend our previously proposed quasi-Bayes adaptive learning framework to cope with the correlate...
In our previous works, a Switching Linear Gaussian Hidden Markov Model (SLGHMM) and its segmental de...
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...
We present new algorithms for parameter estimation of HMMs. By adapting a framework used for supervi...
[[abstract]]An algorithm for estimating the parameters of a hidden Markov model (HMM) is presented. ...
. In this work the output density functions of hidden Markov models are phoneme-wise tied mixture Ga...
This paper attempts to overcome the local convergence problem of the Expectation Maximization (EM) b...
[[abstract]]© 1997 Elsevier - This paper presents an adaptation method of speech hidden Markov model...
We introduce a new adaptive Bayesian learning framework, called multiple-stream prior evolution and ...
Initially introduced in the late 1960's and early 1970's, hidden Markov models (HMMs) have become in...
On-line adaptation of semi-continuous (or tied mixture) hidden Markov model (SCHMM) is studied. A th...
This paper presents a new recursive Bayesian learning approach for transformation parameter estimati...
This paper presents a new recursive Bayesian learning approach for transformation parameter estimati...
[[abstract]]© 1997 Institute of Electrical and Electronics Engineers - We present a hybrid algorithm...
We extend our previously proposed quasi-Bayes adaptive learning framework to cope with the correlate...
In our previous works, a Switching Linear Gaussian Hidden Markov Model (SLGHMM) and its segmental de...
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...
We present new algorithms for parameter estimation of HMMs. By adapting a framework used for supervi...
[[abstract]]An algorithm for estimating the parameters of a hidden Markov model (HMM) is presented. ...
. In this work the output density functions of hidden Markov models are phoneme-wise tied mixture Ga...
This paper attempts to overcome the local convergence problem of the Expectation Maximization (EM) b...
[[abstract]]© 1997 Elsevier - This paper presents an adaptation method of speech hidden Markov model...
We introduce a new adaptive Bayesian learning framework, called multiple-stream prior evolution and ...
Initially introduced in the late 1960's and early 1970's, hidden Markov models (HMMs) have become in...