We describe a dynamic Bayesian network for articulatory feature recognition. The model is intended to be a component of a speech recognizer that avoids the problems of conventional ``beads-on-a-string'' phoneme-based models. We demonstrate that the model gives superior recognition of articulatory features from the speech signal compared with a state of- the art neural network system. We also introduce a training algorithm that offers two major advances: it does not require time-aligned feature labels and it allows the model to learn a set of asynchronous feature changes in a data-driven manner
Speech recognition has become common in many application domains. Incorporating acoustic-phonetic kn...
We describe a speech recognition system which uses articulatory parameters as basic features and pho...
Improving the performance of Automated Speech Recognition system requires incorporating more knowled...
This paper describes the use of dynamic Bayesian networks for the task of articulatory feature recog...
This paper builds on previous work where dynamic Bayesian networks (DBN) were proposed as a model f...
Abstract This paper builds on previous work where dynamic Bayesian networks (DBN) were proposed as a...
Current technology for automatic speech recognition (ASR) uses hidden Markov models (HMMs) that reco...
Artificial neural networks (ANN) have proven to be well suited to the task of articulatory feature (...
Artificial neural networks (ANN) have proven to be well suited to the task of articulatory feature (...
We study the problem of automatic visual speech recognition (VSR) using dynamic Bayesian network (DB...
We report on investigations, conducted at the 2006 JHU Summer Workshop, of the use of articulatory f...
We report on investigations, conducted at the 2006 Johns HopkinsWorkshop, into the use of articulato...
Abstract Most of the current state-of-the-art speech recognition systems are based on speech signal ...
We propose that using a continuous trajectory model to describe an articulatory-based feature set wi...
This paper describes the application of Bayesian networks to automatic speech recognition. Bayesian ...
Speech recognition has become common in many application domains. Incorporating acoustic-phonetic kn...
We describe a speech recognition system which uses articulatory parameters as basic features and pho...
Improving the performance of Automated Speech Recognition system requires incorporating more knowled...
This paper describes the use of dynamic Bayesian networks for the task of articulatory feature recog...
This paper builds on previous work where dynamic Bayesian networks (DBN) were proposed as a model f...
Abstract This paper builds on previous work where dynamic Bayesian networks (DBN) were proposed as a...
Current technology for automatic speech recognition (ASR) uses hidden Markov models (HMMs) that reco...
Artificial neural networks (ANN) have proven to be well suited to the task of articulatory feature (...
Artificial neural networks (ANN) have proven to be well suited to the task of articulatory feature (...
We study the problem of automatic visual speech recognition (VSR) using dynamic Bayesian network (DB...
We report on investigations, conducted at the 2006 JHU Summer Workshop, of the use of articulatory f...
We report on investigations, conducted at the 2006 Johns HopkinsWorkshop, into the use of articulato...
Abstract Most of the current state-of-the-art speech recognition systems are based on speech signal ...
We propose that using a continuous trajectory model to describe an articulatory-based feature set wi...
This paper describes the application of Bayesian networks to automatic speech recognition. Bayesian ...
Speech recognition has become common in many application domains. Incorporating acoustic-phonetic kn...
We describe a speech recognition system which uses articulatory parameters as basic features and pho...
Improving the performance of Automated Speech Recognition system requires incorporating more knowled...