Scatter matrix estimation and hypothesis testing are fundamental inference problems in a wide variety of signal processing applications. In this paper, we investigate and compare the matched, mismatched, and robust approaches to solve these problems in the context of the complex elliptically symmetric (CES) distributions. The matched approach is when the estimation and detection algorithms are tailored on the correct data distribution, whereas the mismatched approach refers to the case when the scatter matrix estimator and the decision rule are derived under a model assumption that is not correct. The robust approach aims at providing good estimation and detection performance, even if suboptimal, over a large set of possible data models, ir...
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 audienceIn many statistical signal processing applications, the estimation of nuisance...
Scatter matrix estimation and hypothesis testing are fundamental inference problems in a wide variet...
Scatter matrix estimation and hypothesis testing are fundamental inference problems in a wide variet...
Scatter matrix estimation and hypothesis testing in Complex Elliptically Symmetric (CES) distributio...
Scatter matrix estimation and hypothesis testing in Complex Elliptically Symmetric (CES) distributio...
This paper deals with the maximum likelihood (ML) estimation of scatter matrix of complex elliptical...
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 ...
In this paper, a Constrained Mismatched Maximum Likelihood (CMML) estimator for the joint estimation...
In this paper, a Constrained Mismatched Maximum Likelihood (CMML) estimator for the joint estimation...
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 audienceThe estimation of covariance matrices is a core problem in many modern adaptiv...
International audienceIn many statistical signal processing applications, the estimation of nuisance...
Scatter matrix estimation and hypothesis testing are fundamental inference problems in a wide variet...
Scatter matrix estimation and hypothesis testing are fundamental inference problems in a wide variet...
Scatter matrix estimation and hypothesis testing in Complex Elliptically Symmetric (CES) distributio...
Scatter matrix estimation and hypothesis testing in Complex Elliptically Symmetric (CES) distributio...
This paper deals with the maximum likelihood (ML) estimation of scatter matrix of complex elliptical...
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 ...
In this paper, a Constrained Mismatched Maximum Likelihood (CMML) estimator for the joint estimation...
In this paper, a Constrained Mismatched Maximum Likelihood (CMML) estimator for the joint estimation...
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 audienceThe estimation of covariance matrices is a core problem in many modern adaptiv...
International audienceIn many statistical signal processing applications, the estimation of nuisance...