International audienceThis contribution is devoted to the estimation of the parameters of multivariate Gaussian mixture where the covariance matrices are constrained to have a linear structure such as Toeplitz, Hankel, or circular constraints. We propose a simple modification of the expectation-maximization (EM) algorithm to take into account the structure constraints. The basic modification consists of virtually updating the observed covariance matrices in a first stage. Then, in a second stage, the estimated covariances undergo the reversed updating. The proposed algorithm is called the inverse EM algorithm. The increasing property of the likelihood through the algorithm iterations is proved. The strict increasing for nonstationary points...
In this paper, a space-alternating generalized expectation-maximization (SAGE) algorithm is presente...
In these notes, we present and review dierent methods based on maximum-likelihood estimation for lea...
The problem of estimating parameters of Gaussian vector when only its (nonlinear) transformation is ...
International audienceThis contribution is devoted to the estimation of the parameters of multivaria...
Abstract —This contribution is devoted to the estimation of the parameters of multivariate Gaussian ...
The expectation-maximization iterative algorithm is widely used in parameter estimation when dealing...
Gaussian mixture models (GMM), commonly used in pattern recognition and machine learning, provide a ...
EM algorithms for multivariate normal mixture decomposition have been recently proposed in order to ...
We describe a new iterative method for parameter estimation of Gaussian mixtures. The new method is ...
The likelihood function for normal multivariate mixtures may present both local spurious maxima and ...
Presented at MaxEnt01. To appear in Bayesian Inference and Maximum Entropy Methods, B. Fry (Ed.), AI...
ICASSP Conference, 4 pages, 8 figuresExpectation-Maximization (EM) algorithm is a widely used iterat...
Abstract—In this paper, we consider simple and fast ap-proaches to initialize the Expectation-Maximi...
As an extremely powerful probability model, Gaussian mixture model (GMM) has been widely used in fie...
International audienceUnbounded likelihood for multivariate Gaussian mixture is an important theoret...
In this paper, a space-alternating generalized expectation-maximization (SAGE) algorithm is presente...
In these notes, we present and review dierent methods based on maximum-likelihood estimation for lea...
The problem of estimating parameters of Gaussian vector when only its (nonlinear) transformation is ...
International audienceThis contribution is devoted to the estimation of the parameters of multivaria...
Abstract —This contribution is devoted to the estimation of the parameters of multivariate Gaussian ...
The expectation-maximization iterative algorithm is widely used in parameter estimation when dealing...
Gaussian mixture models (GMM), commonly used in pattern recognition and machine learning, provide a ...
EM algorithms for multivariate normal mixture decomposition have been recently proposed in order to ...
We describe a new iterative method for parameter estimation of Gaussian mixtures. The new method is ...
The likelihood function for normal multivariate mixtures may present both local spurious maxima and ...
Presented at MaxEnt01. To appear in Bayesian Inference and Maximum Entropy Methods, B. Fry (Ed.), AI...
ICASSP Conference, 4 pages, 8 figuresExpectation-Maximization (EM) algorithm is a widely used iterat...
Abstract—In this paper, we consider simple and fast ap-proaches to initialize the Expectation-Maximi...
As an extremely powerful probability model, Gaussian mixture model (GMM) has been widely used in fie...
International audienceUnbounded likelihood for multivariate Gaussian mixture is an important theoret...
In this paper, a space-alternating generalized expectation-maximization (SAGE) algorithm is presente...
In these notes, we present and review dierent methods based on maximum-likelihood estimation for lea...
The problem of estimating parameters of Gaussian vector when only its (nonlinear) transformation is ...