Summarization: The recognition accuracy in recent large vocabulary Automatic Speech Recognition (ASR) systems is highly related to the existing mismatch between the training and test sets. For example, dialect differences across the training and testing speakers result to a significant degradation in recognition performance. Some popular adaptation approaches improve the recognition performance of speech recognizers based on hidden Markov models with continuous mixture densities by using linear transforms to adapt the means, and possibly the covariances of the mixture Gaussians. In this paper, we propose a novel adaptation technique that adapts the means and, optionally, the covariances of the mixture Gaussians by using multiple stochastic ...
[[abstract]]© 1997 Institute of Electrical and Electronics Engineers - We present a hybrid algorithm...
State-of-the-art automatic speech recognition (ASR) techniques are typically based on hidden Markov ...
Abstract-In this paper, a theoretical framework for Bayesian adaptive training of the parameters of ...
Summarization: The recognition accuracy in previous large vocabulary automatic speech recognition (A...
Summarization: Speaker adaptation is recognized as an essential part of today’s large-vocabulary aut...
Summarization: A trend in automatic speech recognition systems is the use of continuous mixture-dens...
Automatic speech recognition is very sensitive to mismatch between training and testing condition, e...
We present a non-linear model transformation for adapting Gaussian Mixture HMMs using both static an...
Summarization: The mismatch that frequently occurs between the training and testing conditions of an...
On-line adaptation of semi-continuous (or tied mixture) hidden Markov model (SCHMM) is studied. A th...
Nowadays, almost all speaker-independent (SI) speech recognition systems use CDHMM with multivariate...
Summarization: An algorithm is proposed that achieves a good tradeoff between modeling resolution an...
This paper deals with a combination of basic adaptation techniques of Hidden Markov Model used in th...
The challenge of speaker adaptation is to reliably fine-tune models of a general population to fit t...
In the past decade, semi-continuous hidden Markov models (SC-HMMs) have not attracted much attention...
[[abstract]]© 1997 Institute of Electrical and Electronics Engineers - We present a hybrid algorithm...
State-of-the-art automatic speech recognition (ASR) techniques are typically based on hidden Markov ...
Abstract-In this paper, a theoretical framework for Bayesian adaptive training of the parameters of ...
Summarization: The recognition accuracy in previous large vocabulary automatic speech recognition (A...
Summarization: Speaker adaptation is recognized as an essential part of today’s large-vocabulary aut...
Summarization: A trend in automatic speech recognition systems is the use of continuous mixture-dens...
Automatic speech recognition is very sensitive to mismatch between training and testing condition, e...
We present a non-linear model transformation for adapting Gaussian Mixture HMMs using both static an...
Summarization: The mismatch that frequently occurs between the training and testing conditions of an...
On-line adaptation of semi-continuous (or tied mixture) hidden Markov model (SCHMM) is studied. A th...
Nowadays, almost all speaker-independent (SI) speech recognition systems use CDHMM with multivariate...
Summarization: An algorithm is proposed that achieves a good tradeoff between modeling resolution an...
This paper deals with a combination of basic adaptation techniques of Hidden Markov Model used in th...
The challenge of speaker adaptation is to reliably fine-tune models of a general population to fit t...
In the past decade, semi-continuous hidden Markov models (SC-HMMs) have not attracted much attention...
[[abstract]]© 1997 Institute of Electrical and Electronics Engineers - We present a hybrid algorithm...
State-of-the-art automatic speech recognition (ASR) techniques are typically based on hidden Markov ...
Abstract-In this paper, a theoretical framework for Bayesian adaptive training of the parameters of ...