We describe a neural based articulatory phonetic inversion model to improve the recognition of the acoustically varying vowels and the syllable initial plosives. The model uses a set of continuous valued articulatory phonetic features (APFs) to explore the interactions between the motor control of articulators and the acoustic phonetic events. We demonstrate that the neural model gives more accurate and robust recognition performance on the TIMIT sentences. The model offers two salient properties: it allows asynchronous feature changes at phoneme boundaries, and it accounts for the dual aspects of human speech production and perception through a heuristic learning algorithm during APFs mapping
This paper presents a method for describing the effect of articulatory trajectories on phoneme recog...
We describe a speech recognition system which uses articulatory parameters as basic features and pho...
International audienceDeriving articulatory dynamics from the acoustic speech signal has been addres...
We describe a neural based articulatory phonetic inversion model to improve the recognition of the a...
In this paper, we examined the feasibility of articulatory phonetic inversion (API) conditioned on t...
This thesis elaborates the use of speech production knowledge in the form of articulatory phonetic f...
Three neural network models were trained on the forward mapping from articulatory positions to acous...
We describe a speech recognition system which uses articulatory parameters as basic features and pho...
This paper studies the dual aspects of speech recognition and synthesis using the consonant-vowel sp...
Within the past decades advances in neural networks have improved the performance of a vast area of ...
We present an adaptive control scheme in a neural based model to improve the performance of articula...
Speech recognition has become common in many application domains. Incorporating acoustic-phonetic kn...
This paper presents a speech recognition technique based on inhibition/enhancement (In/En) of articu...
We investigate the use of phonetic motor invariants (MIs), that is, recurring kinematic patterns of ...
We report on investigations, conducted at the 2006 JHU Summer Workshop, of the use of articulatory f...
This paper presents a method for describing the effect of articulatory trajectories on phoneme recog...
We describe a speech recognition system which uses articulatory parameters as basic features and pho...
International audienceDeriving articulatory dynamics from the acoustic speech signal has been addres...
We describe a neural based articulatory phonetic inversion model to improve the recognition of the a...
In this paper, we examined the feasibility of articulatory phonetic inversion (API) conditioned on t...
This thesis elaborates the use of speech production knowledge in the form of articulatory phonetic f...
Three neural network models were trained on the forward mapping from articulatory positions to acous...
We describe a speech recognition system which uses articulatory parameters as basic features and pho...
This paper studies the dual aspects of speech recognition and synthesis using the consonant-vowel sp...
Within the past decades advances in neural networks have improved the performance of a vast area of ...
We present an adaptive control scheme in a neural based model to improve the performance of articula...
Speech recognition has become common in many application domains. Incorporating acoustic-phonetic kn...
This paper presents a speech recognition technique based on inhibition/enhancement (In/En) of articu...
We investigate the use of phonetic motor invariants (MIs), that is, recurring kinematic patterns of ...
We report on investigations, conducted at the 2006 JHU Summer Workshop, of the use of articulatory f...
This paper presents a method for describing the effect of articulatory trajectories on phoneme recog...
We describe a speech recognition system which uses articulatory parameters as basic features and pho...
International audienceDeriving articulatory dynamics from the acoustic speech signal has been addres...