This paper presents a detailed framework for Gaussian mixture model (GMM)-based articulatory inversion equipped with special postprocessing smoothers, and with the capability to perform audio-visual information fusion. The effects of different acoustic features on the GMM inversion performance are investigated and it is shown that the integration of various types of acoustic (and visual) features improves the performance of the articulatory inversion process. Dynamic Kalman smoothers are proposed to adapt the cutoff frequency of the smoother to data and noise characteristics; Kalman smoothers also enable the incorporation of auxiliary information such as phonetic transcriptions to improve articulatory estimation. Two types of dynamic Kalman...
In this letter, we introduce an hidden Markov model (HMM)-based inversion system to recovery articul...
International audienceVisual biofeedback is the process of gaining awareness of physiological functi...
International audienceIn this paper, we present recent developments on the HMMbased acoustic-to-arti...
This thesis presents an all-inclusive framework on how the current formant tracking and audio (and/o...
It is well-known that the performance of the Gaussian mixture model (GMM) based acoustic-to-articula...
International audienceTwo speech inversion methods are implemented and compared. In the first, multi...
The article presents a statistical mapping approach for cross-speaker acoustic-to-articulatory inver...
International audienceThis paper addresses the adaptation of an acoustic-articulatory model of a ref...
We propose a unified framework to recover articulation from au-diovisual speech. The nonlinear audio...
International audienceThe article presents a method for adapting a GMM-based acoustic-articulatory i...
International audienceThe article presents a statistical mapping approach for crossspeaker acoustic-...
This work proposes a maximum a posteriori (MAP) based parameter learning algorithm for acoustic-to-a...
This paper presents a complete framework for articulatory inversion based on jump Markov linear syst...
Within the past decades advances in neural networks have improved the performance of a vast area of ...
We are interested in recovering aspects of vocal tract’s geometry and dynamics from auditory and vis...
In this letter, we introduce an hidden Markov model (HMM)-based inversion system to recovery articul...
International audienceVisual biofeedback is the process of gaining awareness of physiological functi...
International audienceIn this paper, we present recent developments on the HMMbased acoustic-to-arti...
This thesis presents an all-inclusive framework on how the current formant tracking and audio (and/o...
It is well-known that the performance of the Gaussian mixture model (GMM) based acoustic-to-articula...
International audienceTwo speech inversion methods are implemented and compared. In the first, multi...
The article presents a statistical mapping approach for cross-speaker acoustic-to-articulatory inver...
International audienceThis paper addresses the adaptation of an acoustic-articulatory model of a ref...
We propose a unified framework to recover articulation from au-diovisual speech. The nonlinear audio...
International audienceThe article presents a method for adapting a GMM-based acoustic-articulatory i...
International audienceThe article presents a statistical mapping approach for crossspeaker acoustic-...
This work proposes a maximum a posteriori (MAP) based parameter learning algorithm for acoustic-to-a...
This paper presents a complete framework for articulatory inversion based on jump Markov linear syst...
Within the past decades advances in neural networks have improved the performance of a vast area of ...
We are interested in recovering aspects of vocal tract’s geometry and dynamics from auditory and vis...
In this letter, we introduce an hidden Markov model (HMM)-based inversion system to recovery articul...
International audienceVisual biofeedback is the process of gaining awareness of physiological functi...
International audienceIn this paper, we present recent developments on the HMMbased acoustic-to-arti...