This paper proposes a diagonal covariance matrix approximation for Wide-Sense Stationary (WSS) signals with correlated Gaussian noise. Existing signal models that incorporate correlations often require regularization of the covariance matrix, so that the covariance matrix can be inverted. The disadvantage of this approach is that matrix inversion is computational intensive and regularization decreases precision. We use Bienayme's theorem to approximate the covariance matrix by a diagonal one, so that matrix inversion becomes trivial, even with nonuniform rather than only uniform sampling that was considered in earlier work. This approximation reduces the computational complexity of the estimator and estimation bound significantly. We numeri...
The need to estimate structured covariance matrices arises in a variety of applications and the prob...
Inference in matrix-variate Gaussian models has major applications for multi-output prediction and j...
An approach of regularizing Tyler\u27s robust M-estimator of the co-variance matrix is proposed. We ...
This paper proposes a diagonal covariance matrix approximation for Wide-Sense Stationary (WSS) signa...
Abstract—The so called “augmented ” statistics of complex random vari-ables has established that bot...
The so called augmented statistics of complex random variables has established that both the covaria...
This paper considers the problem of covariance matrix estimation from the viewpoint of statistical s...
International audienceThe Sample Covariance Matrix (SCM) is widely used in signal processing applica...
This paper considers estimating a covariance matrix of p variables from n observations by either ban...
In this paper, we aim to estimate block-diagonal covariance matrices for Gaussian data in high dimen...
Testing the independence of the entries of multidimensional Gaussian observations is a very importan...
Inference in matrix-variate Gaussian models has major applications for multioutput prediction and jo...
This work addresses the problem of covariance matrix estimation for adaptive radar detection in corr...
AbstractThe need to estimate structured covariance matrices arises in a variety of applications and ...
When inferring parameters from a Gaussian-distributed data set by computing a likelihood, a covarian...
The need to estimate structured covariance matrices arises in a variety of applications and the prob...
Inference in matrix-variate Gaussian models has major applications for multi-output prediction and j...
An approach of regularizing Tyler\u27s robust M-estimator of the co-variance matrix is proposed. We ...
This paper proposes a diagonal covariance matrix approximation for Wide-Sense Stationary (WSS) signa...
Abstract—The so called “augmented ” statistics of complex random vari-ables has established that bot...
The so called augmented statistics of complex random variables has established that both the covaria...
This paper considers the problem of covariance matrix estimation from the viewpoint of statistical s...
International audienceThe Sample Covariance Matrix (SCM) is widely used in signal processing applica...
This paper considers estimating a covariance matrix of p variables from n observations by either ban...
In this paper, we aim to estimate block-diagonal covariance matrices for Gaussian data in high dimen...
Testing the independence of the entries of multidimensional Gaussian observations is a very importan...
Inference in matrix-variate Gaussian models has major applications for multioutput prediction and jo...
This work addresses the problem of covariance matrix estimation for adaptive radar detection in corr...
AbstractThe need to estimate structured covariance matrices arises in a variety of applications and ...
When inferring parameters from a Gaussian-distributed data set by computing a likelihood, a covarian...
The need to estimate structured covariance matrices arises in a variety of applications and the prob...
Inference in matrix-variate Gaussian models has major applications for multi-output prediction and j...
An approach of regularizing Tyler\u27s robust M-estimator of the co-variance matrix is proposed. We ...