In this paper we experiment with methods based on Deep Belief Networks (DBNs) to recover measured articulatory data from speech acoustics. Our acoustic-to-articulatory mapping (AAM) processes go through multi-layered and hierarchical (i.e., deep) representations of the acoustic and the articulatory domains obtained through unsupervised learning of DBNs. The unsupervised learning of DBNs can serve two purposes: (i) pre-training of the Multi-layer Perceptrons that perform AAM; (ii) transformation of the articulatory domain that is recovered from acoustics through AAM. The recovered articulatory features are combined with MFCCs to compute phone posteriors for phone recognition. Tested on the MOCHA-TIMIT corpus, the recovered articulatory featu...
Recently, deep learning techniques have been successfully applied to automatic speech recognition (A...
We describe a speech recognition system which uses articulatory parameters as basic features and pho...
This paper proposes using tandem DBN approach — a hier-archical architecture that consists of two or...
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...
The problem of nonlinear acoustic to articulatory inversion mapping is investigated in the feature s...
Articulatory information has been argued to be useful for several speech tasks. However, in most pra...
This paper presents a deep neural network (DNN) to extract articulatory information from the speech ...
Recent advances in real-time magnetic resonance imaging (rtMRI) of the vocal tract provides opportun...
In this work, we propose a modular combination of two pop-ular applications of neural networks to la...
Humans make use of more than just the audio signal to perceive speech. Behavioral and neurological r...
This thesis makes three main contributions to the area of speech recognition with Deep Neural Networ...
We studied the effect of pre-training and fine-tuning on a well-known deep architecture for phone re...
This paper investigates the use of Multi-Distribution Deep Neu-ral Networks (MD-DNNs) for integratin...
This paper presents a method for describing the effect of articulatory trajectories on phoneme recog...
Recently, deep learning techniques have been successfully applied to automatic speech recognition (A...
We describe a speech recognition system which uses articulatory parameters as basic features and pho...
This paper proposes using tandem DBN approach — a hier-archical architecture that consists of two or...
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...
The problem of nonlinear acoustic to articulatory inversion mapping is investigated in the feature s...
Articulatory information has been argued to be useful for several speech tasks. However, in most pra...
This paper presents a deep neural network (DNN) to extract articulatory information from the speech ...
Recent advances in real-time magnetic resonance imaging (rtMRI) of the vocal tract provides opportun...
In this work, we propose a modular combination of two pop-ular applications of neural networks to la...
Humans make use of more than just the audio signal to perceive speech. Behavioral and neurological r...
This thesis makes three main contributions to the area of speech recognition with Deep Neural Networ...
We studied the effect of pre-training and fine-tuning on a well-known deep architecture for phone re...
This paper investigates the use of Multi-Distribution Deep Neu-ral Networks (MD-DNNs) for integratin...
This paper presents a method for describing the effect of articulatory trajectories on phoneme recog...
Recently, deep learning techniques have been successfully applied to automatic speech recognition (A...
We describe a speech recognition system which uses articulatory parameters as basic features and pho...
This paper proposes using tandem DBN approach — a hier-archical architecture that consists of two or...