In this paper, a framework for discriminative training of acoustic models based on Generalised Probabilistic Descent (GPD) method is presented. The key feature of our proposal, Maximum Likelihood based Discriminative Training of Acoustic Models (MLDT), is the use of maximum likelihood trained HMM's instead of the original speech signal. We focus our attention in performing discriminative training applied to a discrete hidden Markov models continuos speech recogniser, achieving a 4.6% error rate reduction on a Spanish speaker-independent phoneme recognition task.Peer ReviewedPostprint (published version
AbstractIn this paper, the use of discriminative criteria such as minimum phone error (MPE) and maxi...
APSIPA Annual Summit and Conference 2010, December 14-17, 2010, Biopolis, Singapore.This paper pr...
Hidden Markov Models (HMMs) are one of the most powerful speech recognition tools available today. E...
In this paper, a framework for discriminative training of acoustic models based on Generalised Proba...
Discriminative training techniques for Hidden-Markov Models were recently proposed and successfully ...
Discriminative training techniques for Hidden-Markov Models were recently proposed and successfully ...
Speech Recognition is becoming more important in our daily life. Many applications are starting to u...
In this book, we introduce the background and mainstream methods of probabilistic modeling and discr...
This paper presents an approach that improves discriminative training criterion for Hidden Markov Mo...
Abstract—Today’s speech recognition systems are based on hidden Markov models (HMMs) with Gaussian m...
The design of acoustic models involves two main tasks: feature ex-traction and data modeling; and hi...
This paper presents a new discriminative approach for training Gaussian mixture models (GMMs)of hidd...
Although having revealed to be a very powerful tool in acoustic modelling, discriminative training p...
In this work, a framework for efficient discriminative training and modeling is developed and implem...
Discriminative training has become an important means for estimating model parameters in many statis...
AbstractIn this paper, the use of discriminative criteria such as minimum phone error (MPE) and maxi...
APSIPA Annual Summit and Conference 2010, December 14-17, 2010, Biopolis, Singapore.This paper pr...
Hidden Markov Models (HMMs) are one of the most powerful speech recognition tools available today. E...
In this paper, a framework for discriminative training of acoustic models based on Generalised Proba...
Discriminative training techniques for Hidden-Markov Models were recently proposed and successfully ...
Discriminative training techniques for Hidden-Markov Models were recently proposed and successfully ...
Speech Recognition is becoming more important in our daily life. Many applications are starting to u...
In this book, we introduce the background and mainstream methods of probabilistic modeling and discr...
This paper presents an approach that improves discriminative training criterion for Hidden Markov Mo...
Abstract—Today’s speech recognition systems are based on hidden Markov models (HMMs) with Gaussian m...
The design of acoustic models involves two main tasks: feature ex-traction and data modeling; and hi...
This paper presents a new discriminative approach for training Gaussian mixture models (GMMs)of hidd...
Although having revealed to be a very powerful tool in acoustic modelling, discriminative training p...
In this work, a framework for efficient discriminative training and modeling is developed and implem...
Discriminative training has become an important means for estimating model parameters in many statis...
AbstractIn this paper, the use of discriminative criteria such as minimum phone error (MPE) and maxi...
APSIPA Annual Summit and Conference 2010, December 14-17, 2010, Biopolis, Singapore.This paper pr...
Hidden Markov Models (HMMs) are one of the most powerful speech recognition tools available today. E...