International audienceWe consider the framework of uncertainty propagation for automatic speech recognition (ASR) in highly non-stationary noise environments. Uncertainty is considered as the variance of speech distortion. Yet, its accurate estimation in the spectral domain and its propagation to the feature domain remain difficult. Existing methods typically rely on a single uncertainty estimator and propagator fixed by mathematical approximation. In this paper, we propose a new paradigm where we seek to learn more powerful mappings to predict uncertainty from data.We investigate two such possible mappings: linear fusion of multiple uncertainty estimators/propagators and nonparametric uncertainty estimation/propagation. In addition, a proc...
The performance of automatic speaker recognition systems degrades when facing distorted speech data ...
Speech enhancement in the time-frequency domain is often performed by estimating a multiplicative ma...
We consider the problem of Gaussian mixture model (GMM)-based classification of noisy data, where th...
International audienceUncertainty decoding has been successfully used for speech recognition in high...
International audienceAutomatic speech recognition (ASR) in noisy environments remains a challenging...
International audienceWe consider the problem of robust automatic speech recognition (ASR) in noisy ...
Cette thèse se focalise sur la reconnaissance automatique de la parole (RAP) robuste au bruit. Elle ...
This thesis focuses on noise robust automatic speech recognition (ASR). It includes twoparts. First,...
International audienceThe uncertainty decoding framework is known to improve deep neural network (DN...
International audienceWe consider the problem of uncertainty estimation for noise-robust ASR. Existi...
International audienceIn order to improve the ASR performance in noisy environments , distorted spee...
The use of feature enhancement techniques to obtain estimates of the clean parameters is a common ap...
Revised version including a bugfix in the computation of the Wiener uncertainty estimator and in the...
The term uncertainty decoding has been phrased for a class of robustness enhancing algorithms in aut...
Motivated by the human ability to maintain a high level of speech recognition when large parts of th...
The performance of automatic speaker recognition systems degrades when facing distorted speech data ...
Speech enhancement in the time-frequency domain is often performed by estimating a multiplicative ma...
We consider the problem of Gaussian mixture model (GMM)-based classification of noisy data, where th...
International audienceUncertainty decoding has been successfully used for speech recognition in high...
International audienceAutomatic speech recognition (ASR) in noisy environments remains a challenging...
International audienceWe consider the problem of robust automatic speech recognition (ASR) in noisy ...
Cette thèse se focalise sur la reconnaissance automatique de la parole (RAP) robuste au bruit. Elle ...
This thesis focuses on noise robust automatic speech recognition (ASR). It includes twoparts. First,...
International audienceThe uncertainty decoding framework is known to improve deep neural network (DN...
International audienceWe consider the problem of uncertainty estimation for noise-robust ASR. Existi...
International audienceIn order to improve the ASR performance in noisy environments , distorted spee...
The use of feature enhancement techniques to obtain estimates of the clean parameters is a common ap...
Revised version including a bugfix in the computation of the Wiener uncertainty estimator and in the...
The term uncertainty decoding has been phrased for a class of robustness enhancing algorithms in aut...
Motivated by the human ability to maintain a high level of speech recognition when large parts of th...
The performance of automatic speaker recognition systems degrades when facing distorted speech data ...
Speech enhancement in the time-frequency domain is often performed by estimating a multiplicative ma...
We consider the problem of Gaussian mixture model (GMM)-based classification of noisy data, where th...