Current technology for automatic speech recognition (ASR) uses hidden Markov models (HMMs) that recognize spoken speech using the acoustic signal. However, no use is made of the causes of the acoustic signal: the articula-tors. We present here a dynamic Bayesian network (DBN) model that utilizes an additional variable for representing the state of the articulators. A particular strength of the system is that, while it uses measured articulatory data during its training, it does not need to know these values during recognition. As Bayesian networks are not used often in the speech community, we give an introduction to them. After describing how they can be used in ASR, we present a system to do isolated word recognition using articulatory in...
In standard automatic speech recognition (ASR), hidden Markov models (HMMs) calculate their emission...
We report on investigations, conducted at the 2006 JHU Summer Workshop, of the use of articulatory f...
We propose that using a continuous trajectory model to describe an articulatory-based feature set wi...
Abstract Most of the current state-of-the-art speech recognition systems are based on speech signal ...
This paper describes the application of Bayesian networks to automatic speech recognition. Bayesian ...
We describe a dynamic Bayesian network for articulatory feature recognition. The model is intended t...
This paper describes the use of dynamic Bayesian networks for the task of articulatory feature recog...
Automatic speech recognition bases its models on the acoustic features derived from the speech signa...
Abstract This paper builds on previous work where dynamic Bayesian networks (DBN) were proposed as a...
This paper describes the theory and implementation of Bayesian networks in the context of automatic ...
Improving the performance of Automated Speech Recognition system requires incorporating more knowled...
Bayesian networks are an extremely general prob-abilistic modeling framework, and are increasingly b...
This article provides a unifying Bayesian view on various approaches for acoustic model adaptation, ...
In this paper, we describe several approaches to integra-tion of the articulatory dynamic parameters...
This paper builds on previous work where dynamic Bayesian networks (DBN) were proposed as a model f...
In standard automatic speech recognition (ASR), hidden Markov models (HMMs) calculate their emission...
We report on investigations, conducted at the 2006 JHU Summer Workshop, of the use of articulatory f...
We propose that using a continuous trajectory model to describe an articulatory-based feature set wi...
Abstract Most of the current state-of-the-art speech recognition systems are based on speech signal ...
This paper describes the application of Bayesian networks to automatic speech recognition. Bayesian ...
We describe a dynamic Bayesian network for articulatory feature recognition. The model is intended t...
This paper describes the use of dynamic Bayesian networks for the task of articulatory feature recog...
Automatic speech recognition bases its models on the acoustic features derived from the speech signa...
Abstract This paper builds on previous work where dynamic Bayesian networks (DBN) were proposed as a...
This paper describes the theory and implementation of Bayesian networks in the context of automatic ...
Improving the performance of Automated Speech Recognition system requires incorporating more knowled...
Bayesian networks are an extremely general prob-abilistic modeling framework, and are increasingly b...
This article provides a unifying Bayesian view on various approaches for acoustic model adaptation, ...
In this paper, we describe several approaches to integra-tion of the articulatory dynamic parameters...
This paper builds on previous work where dynamic Bayesian networks (DBN) were proposed as a model f...
In standard automatic speech recognition (ASR), hidden Markov models (HMMs) calculate their emission...
We report on investigations, conducted at the 2006 JHU Summer Workshop, of the use of articulatory f...
We propose that using a continuous trajectory model to describe an articulatory-based feature set wi...