International audienceThe estimation of covariance matrices is a core problem in many modern adaptive signal processing applications. For matrix-and array-valued data, e.g., MIMO communication, EEG/MEG (time versus channel), the covariance matrix of vectorized data may belong to the non-convex set of Kronecker product structure. In addition, the Kronecker factors can also exhibit an additional linear structure. Taking this prior knowledge into account during the estimation process drastically reduces the amount of unknown parameters, and then improves the estimation accuracy. On the other hand, the broad class of complex elliptically symmetric distributions, as well as the related complex angular elliptical distribution, are particularly su...
International audienceIn many statistical signal processing applications, the estimation of nuisance...
This paper deals with the maximum likelihood (ML) estimation of scatter matrix of complex elliptical...
Abstract—In many statistical signal processing applications, the estimation of nuisance parameters a...
International audienceThe estimation of covariance matrices is a core problem in many modern adaptiv...
International audienceThe estimation of covariance matrices is a core problem in many modern adaptiv...
International audienceThe estimation of covariance matrices is a core problem in many modern adaptiv...
International audienceThis paper addresses structured scatter matrix estimation within the non conve...
International audienceThis paper addresses structured scatter matrix estimation within the non conve...
International audienceThis paper addresses structured scatter matrix estimation within the non conve...
International audienceThis paper addresses structured scatter matrix estimation within the non conve...
International audienceCovariance matrix estimation is a ubiquitous problem in signal processing. In ...
International audienceCovariance matrix estimation is a ubiquitous problem in signal processing. In ...
International audienceCovariance matrix estimation is a ubiquitous problem in signal processing. In ...
International audienceIn many statistical signal processing applications, the estimation of nuisance...
International audienceIn many statistical signal processing applications, the estimation of nuisance...
International audienceIn many statistical signal processing applications, the estimation of nuisance...
This paper deals with the maximum likelihood (ML) estimation of scatter matrix of complex elliptical...
Abstract—In many statistical signal processing applications, the estimation of nuisance parameters a...
International audienceThe estimation of covariance matrices is a core problem in many modern adaptiv...
International audienceThe estimation of covariance matrices is a core problem in many modern adaptiv...
International audienceThe estimation of covariance matrices is a core problem in many modern adaptiv...
International audienceThis paper addresses structured scatter matrix estimation within the non conve...
International audienceThis paper addresses structured scatter matrix estimation within the non conve...
International audienceThis paper addresses structured scatter matrix estimation within the non conve...
International audienceThis paper addresses structured scatter matrix estimation within the non conve...
International audienceCovariance matrix estimation is a ubiquitous problem in signal processing. In ...
International audienceCovariance matrix estimation is a ubiquitous problem in signal processing. In ...
International audienceCovariance matrix estimation is a ubiquitous problem in signal processing. In ...
International audienceIn many statistical signal processing applications, the estimation of nuisance...
International audienceIn many statistical signal processing applications, the estimation of nuisance...
International audienceIn many statistical signal processing applications, the estimation of nuisance...
This paper deals with the maximum likelihood (ML) estimation of scatter matrix of complex elliptical...
Abstract—In many statistical signal processing applications, the estimation of nuisance parameters a...