We describe the modelling of articulatory movements using (hidden) dynamical system models trained on Electro-Magnetic Articulograph (EMA) data. These models can be used for automatic speech recognition and to give insights into articulatory behaviour. They belong to a class of continuous-state Markov models, which we believe can offer improved performance over conventional Hidden Markov Models (HMMs) by better accounting for the continuous nature of the underlying speech production process - that is, the movements of the articulators. To assess the performance of our models, a simple speech recognition task was used, on which the models show promising results.casl3pub2548pu
This paper reports experiments in synthesizing VCV sequences with French unvoiced stop or fricative ...
In this paper, we describe several approaches to integra-tion of the articulatory dynamic parameters...
The majority of automatic speech recognition (ASR) systems rely on hidden Markov models (HMM), in wh...
We describe the modelling of articulatory movements using (hidden) dynamical system models trained o...
We describe the modelling of articulatory movements using (hidden) dynamical system models trained o...
A Hidden-Articulator Markov Model (HAMM) is a Hidden Markov Model (HMM) in which each state represen...
We propose that using a continuous trajectory model to describe an articulatory-based feature set wi...
In this paper we investigate the use of articulatory data for speech recognition. Recordings of the ...
Abstract. A statistical generative model for the speech process is described that embeds a substanti...
In this paper we present a method to predict the movement of a speaker's mouth from text input using...
This paper presents a complete framework for articulatory inversion based on jump Markov linear syst...
We describe a speech recognition system which uses articulatory parameters as basic features and pho...
The human speech apparatus is a rich source of information and offers many cues in the speech signal...
We describe a speech recognition system which uses articulatory parameters as basic features and pho...
In this letter, we introduce an hidden Markov model (HMM)-based inversion system to recovery articul...
This paper reports experiments in synthesizing VCV sequences with French unvoiced stop or fricative ...
In this paper, we describe several approaches to integra-tion of the articulatory dynamic parameters...
The majority of automatic speech recognition (ASR) systems rely on hidden Markov models (HMM), in wh...
We describe the modelling of articulatory movements using (hidden) dynamical system models trained o...
We describe the modelling of articulatory movements using (hidden) dynamical system models trained o...
A Hidden-Articulator Markov Model (HAMM) is a Hidden Markov Model (HMM) in which each state represen...
We propose that using a continuous trajectory model to describe an articulatory-based feature set wi...
In this paper we investigate the use of articulatory data for speech recognition. Recordings of the ...
Abstract. A statistical generative model for the speech process is described that embeds a substanti...
In this paper we present a method to predict the movement of a speaker's mouth from text input using...
This paper presents a complete framework for articulatory inversion based on jump Markov linear syst...
We describe a speech recognition system which uses articulatory parameters as basic features and pho...
The human speech apparatus is a rich source of information and offers many cues in the speech signal...
We describe a speech recognition system which uses articulatory parameters as basic features and pho...
In this letter, we introduce an hidden Markov model (HMM)-based inversion system to recovery articul...
This paper reports experiments in synthesizing VCV sequences with French unvoiced stop or fricative ...
In this paper, we describe several approaches to integra-tion of the articulatory dynamic parameters...
The majority of automatic speech recognition (ASR) systems rely on hidden Markov models (HMM), in wh...