Three neural network models were trained on the forward mapping from articulatory positions to acoustic outputs for a single speaker of the Edinburgh multi-channel articulatory speech database. The model parameters (i.e., connection weights) were learned via the backpropagation of error signals generated by the difference between acoustic outputs of the models, and their acoustic targets. Efficacy of the trained models was assessed by subjecting the models' acoustic outputs to speech intelligibility tests. The results of these tests showed that enough phonetic information was captured by the models to support rates of word identification as high as 84%, approaching an identification rate of 92% for the actual target stimuli. These forward m...
International audienceDeriving articulatory dynamics from the acoustic speech signal has been addres...
We design a neural network model of first language acquisi-tion to explore the relationship between ...
A full 3D physiological articulatory model was developed to simulate the mechanism of human speech p...
Neural network (NN) applications have recently been employed to extract the parameters of an articul...
This paper describes a mapping problem that tests and validates the findings from our analytical ana...
We describe a speech recognition system which uses articulatory parameters as basic features and pho...
This article describes a neural network model that addresses the acquisition of speaking skills by i...
We describe a neural based articulatory phonetic inversion model to improve the recognition of the a...
International audienceWe propose a computational model of speech production combining a pre-trained ...
This article describes a neural network model that addresses the acquisition of speaking skills by i...
This paper presents a deep neural network (DNN) to extract articulatory information from the speech ...
We describe a speech recognition system which uses articulatory parameters as basic features and pho...
Within the past decades advances in neural networks have improved the performance of a vast area of ...
Speech recognition has become common in many application domains. Incorporating acoustic-phonetic kn...
Hybrid deep neural network-hidden Markov model (DNN-HMM) systems have become the state-of-the-art in...
International audienceDeriving articulatory dynamics from the acoustic speech signal has been addres...
We design a neural network model of first language acquisi-tion to explore the relationship between ...
A full 3D physiological articulatory model was developed to simulate the mechanism of human speech p...
Neural network (NN) applications have recently been employed to extract the parameters of an articul...
This paper describes a mapping problem that tests and validates the findings from our analytical ana...
We describe a speech recognition system which uses articulatory parameters as basic features and pho...
This article describes a neural network model that addresses the acquisition of speaking skills by i...
We describe a neural based articulatory phonetic inversion model to improve the recognition of the a...
International audienceWe propose a computational model of speech production combining a pre-trained ...
This article describes a neural network model that addresses the acquisition of speaking skills by i...
This paper presents a deep neural network (DNN) to extract articulatory information from the speech ...
We describe a speech recognition system which uses articulatory parameters as basic features and pho...
Within the past decades advances in neural networks have improved the performance of a vast area of ...
Speech recognition has become common in many application domains. Incorporating acoustic-phonetic kn...
Hybrid deep neural network-hidden Markov model (DNN-HMM) systems have become the state-of-the-art in...
International audienceDeriving articulatory dynamics from the acoustic speech signal has been addres...
We design a neural network model of first language acquisi-tion to explore the relationship between ...
A full 3D physiological articulatory model was developed to simulate the mechanism of human speech p...