International audienceWe consider Gaussian mixture model (GMM)-based classification from noisy features, where the uncertainty over each feature is represented by a Gaussian distribution. For that purpose, we first propose a new GMM training and decoding criterion called log-likelihood integration which, as opposed to the conventional likelihood integration criterion, does not rely on any assumption regarding the distribution of the data. Secondly, we introduce two new Expectation Maximization (EM) algorithms for the two criteria, that allow to learn GMMs directly from noisy features. We then evaluate and compare the behaviors of two proposed algorithms with a categorization task on artificial data and speech data with additive artificial n...
We address the problem of learning a Gaussian mixture from a set of noisy data points. Each input po...
This paper addresses the problem of robust speech recognition in noisy conditions in the framework o...
Joint uncertainty decoding (JUD) is an effective model-based noise compensation technique for conven...
International audienceWe consider Gaussian mixture model (GMM)-based classification from noisy featu...
International audienceWe consider Gaussian mixture model (GMM)-based classification from noisy featu...
We consider the problem of Gaussian mixture model (GMM)-based classification of noisy data, where th...
We consider the problem of Gaussian mixture model (GMM)-based classification of noisy data, where th...
We consider the problem of Gaussian mixture model (GMM)-based classification of noisy data, where th...
We consider the problem of Gaussian mixture model (GMM)-based classification of noisy data, where th...
Revised version including a bugfix in the computation of the Wiener uncertainty estimator and in the...
Revised version including a bugfix in the computation of the Wiener uncertainty estimator and in the...
Revised version including a bugfix in the computation of the Wiener uncertainty estimator and in the...
Revised version including a bugfix in the computation of the Wiener uncertainty estimator and in the...
Abstract—In this paper, we propose a new expectation-maximization (EM) algorithm, named GMM-EM, to b...
We address the problem of learning a Gaussian mixture from a set of noisy data points. Each input po...
We address the problem of learning a Gaussian mixture from a set of noisy data points. Each input po...
This paper addresses the problem of robust speech recognition in noisy conditions in the framework o...
Joint uncertainty decoding (JUD) is an effective model-based noise compensation technique for conven...
International audienceWe consider Gaussian mixture model (GMM)-based classification from noisy featu...
International audienceWe consider Gaussian mixture model (GMM)-based classification from noisy featu...
We consider the problem of Gaussian mixture model (GMM)-based classification of noisy data, where th...
We consider the problem of Gaussian mixture model (GMM)-based classification of noisy data, where th...
We consider the problem of Gaussian mixture model (GMM)-based classification of noisy data, where th...
We consider the problem of Gaussian mixture model (GMM)-based classification of noisy data, where th...
Revised version including a bugfix in the computation of the Wiener uncertainty estimator and in the...
Revised version including a bugfix in the computation of the Wiener uncertainty estimator and in the...
Revised version including a bugfix in the computation of the Wiener uncertainty estimator and in the...
Revised version including a bugfix in the computation of the Wiener uncertainty estimator and in the...
Abstract—In this paper, we propose a new expectation-maximization (EM) algorithm, named GMM-EM, to b...
We address the problem of learning a Gaussian mixture from a set of noisy data points. Each input po...
We address the problem of learning a Gaussian mixture from a set of noisy data points. Each input po...
This paper addresses the problem of robust speech recognition in noisy conditions in the framework o...
Joint uncertainty decoding (JUD) is an effective model-based noise compensation technique for conven...