This paper proposes innovative multi-channel bayesian estimators in the feature-domain for robust speech recognition. Both minimum-mean-squared-error (MMSE) and maximum-a-posteriori (MAP) criteria have been explored: the related algorithms extend the multi-channel frequency-domain counterparts and generalize the single-channel feature-domain MMSE solution, recently appeared in the literature. Computer simulations conducted on a modified AURORA2 database show the efficacy of the frequency-domain multi-channel estimators when used as a pre-processing stage of a speech recognition engine, and that the proposed multi-channel MAP approach outperforms single-channel estimators by at least 3% on average
Dans cette thèse nous élaborons quatre composantes fondamentales d'un système de reconnaissance auto...
Abstract—In this paper, we study a category of robust speech recognition problem in which mismatches...
This paper addresses the problem of robust speech recognition in noisy conditions in the framework o...
This paper proposes innovative multi-channel bayesian estimators in the feature-domain for robust sp...
This paper proposes innovative multi-channel bayesian estimators in the feature-domain for robust sp...
The use of a speech recognition system with telephone channel environments, or different microphones...
This article provides a unifying Bayesian view on various approaches for acoustic model adaptation, ...
In this paper, we motivate the introduction of multiple feature streams to cover the gap between the...
In this paper we present an approach that makes use of both Bayesian predictive classification (BPC)...
Feature statistics normalization in the cepstral domain is one of the most performing approaches for...
Feature statistics normalization in the cepstral domain is one of the most performing approaches for...
Feature statistics normalization in the cepstral domain is one of the most performing approaches for...
Feature statistics normalization in the cepstral domain is one of the most performing approaches for...
Texte intégral accessible uniquement aux membres de l'Université de LorraineIn this thesis we focus ...
Maintaining a high level of robustness for Automatic Speech Recognition (ASR) systems is especially ...
Dans cette thèse nous élaborons quatre composantes fondamentales d'un système de reconnaissance auto...
Abstract—In this paper, we study a category of robust speech recognition problem in which mismatches...
This paper addresses the problem of robust speech recognition in noisy conditions in the framework o...
This paper proposes innovative multi-channel bayesian estimators in the feature-domain for robust sp...
This paper proposes innovative multi-channel bayesian estimators in the feature-domain for robust sp...
The use of a speech recognition system with telephone channel environments, or different microphones...
This article provides a unifying Bayesian view on various approaches for acoustic model adaptation, ...
In this paper, we motivate the introduction of multiple feature streams to cover the gap between the...
In this paper we present an approach that makes use of both Bayesian predictive classification (BPC)...
Feature statistics normalization in the cepstral domain is one of the most performing approaches for...
Feature statistics normalization in the cepstral domain is one of the most performing approaches for...
Feature statistics normalization in the cepstral domain is one of the most performing approaches for...
Feature statistics normalization in the cepstral domain is one of the most performing approaches for...
Texte intégral accessible uniquement aux membres de l'Université de LorraineIn this thesis we focus ...
Maintaining a high level of robustness for Automatic Speech Recognition (ASR) systems is especially ...
Dans cette thèse nous élaborons quatre composantes fondamentales d'un système de reconnaissance auto...
Abstract—In this paper, we study a category of robust speech recognition problem in which mismatches...
This paper addresses the problem of robust speech recognition in noisy conditions in the framework o...