This paper proposes a class of covariance estimators based on information divergences in heterogeneous environments. In particular, the problem of covariance estimation is reformulated on the Riemannian manifold of Hermitian positive-definite (HPD) matrices. The means associated with information divergences are derived and used as the estimators. Without resorting to the complete knowledge of the probability distribution of the sample data, the geometry of the Riemannian manifold of HPD matrices is considered in mean estimators. Moreover, the robustness of mean estimators is analyzed using the influence function. Simulation results indicate the robustness and superiority of an adaptive normalized matched filter with our proposed estimators ...
International audienceThe information geometry of the zero-mean tdistribution with Kronecker-product...
International audienceThe information geometry of the zero-mean tdistribution with Kronecker-product...
Cramér-Rao bounds on estimation accuracy are established for estimation problems on arbitrary manifo...
This paper proposes a class of covariance estimators based on information divergences in heterogeneo...
This paper presents a covariance matrix estimation method based on information geometry in a heterog...
International audienceThis paper aims at providing an original Riemannian geometry to derive robust ...
International audienceThis paper aims at providing an original Riemannian geometry to derive robust ...
International audienceThis paper aims at providing an original Riemannian geometry to derive robust ...
International audienceThis paper aims at providing an original Riemannian geometry to derive robust ...
The statistical analysis of data belonging to Riemannian man- ifolds is becoming increasingly import...
The statistical analysis of data belonging to Riemannian man- ifolds is becoming increasingly import...
The statistical analysis of data belonging to Riemannian man- ifolds is becoming increasingly import...
The statistical analysis of data belonging to Riemannian man- ifolds is becoming increasingly import...
International audienceThe information geometry of the zero-mean tdistribution with Kronecker-product...
International audienceThe information geometry of the zero-mean tdistribution with Kronecker-product...
International audienceThe information geometry of the zero-mean tdistribution with Kronecker-product...
International audienceThe information geometry of the zero-mean tdistribution with Kronecker-product...
Cramér-Rao bounds on estimation accuracy are established for estimation problems on arbitrary manifo...
This paper proposes a class of covariance estimators based on information divergences in heterogeneo...
This paper presents a covariance matrix estimation method based on information geometry in a heterog...
International audienceThis paper aims at providing an original Riemannian geometry to derive robust ...
International audienceThis paper aims at providing an original Riemannian geometry to derive robust ...
International audienceThis paper aims at providing an original Riemannian geometry to derive robust ...
International audienceThis paper aims at providing an original Riemannian geometry to derive robust ...
The statistical analysis of data belonging to Riemannian man- ifolds is becoming increasingly import...
The statistical analysis of data belonging to Riemannian man- ifolds is becoming increasingly import...
The statistical analysis of data belonging to Riemannian man- ifolds is becoming increasingly import...
The statistical analysis of data belonging to Riemannian man- ifolds is becoming increasingly import...
International audienceThe information geometry of the zero-mean tdistribution with Kronecker-product...
International audienceThe information geometry of the zero-mean tdistribution with Kronecker-product...
International audienceThe information geometry of the zero-mean tdistribution with Kronecker-product...
International audienceThe information geometry of the zero-mean tdistribution with Kronecker-product...
Cramér-Rao bounds on estimation accuracy are established for estimation problems on arbitrary manifo...