학술논문

A Riemannian Framework for Low-Rank Structured Elliptical Models
Document Type
Periodical
Source
IEEE Transactions on Signal Processing IEEE Trans. Signal Process. Signal Processing, IEEE Transactions on. 69:1185-1199 2021
Subject
Signal Processing and Analysis
Communication, Networking and Broadcast Technologies
Computing and Processing
Manifolds
Geometry
Estimation
Covariance matrices
Signal processing algorithms
Tools
Standards
Riemannian geometry
elliptical distributions
robust estimation
covariance matrix
low-rank structure
Cramér-rao bounds
Language
ISSN
1053-587X
1941-0476
Abstract
This paper proposes an original Riemmanian geometry for low-rank structured elliptical models, i.e., when samples are elliptically distributed with a covariance matrix that has a low-rank plus identity structure. The considered geometry is the one induced by the product of the Stiefel manifold and the manifold of Hermitian positive definite matrices, quotiented by the unitary group. One of the main contribution is to consider an original Riemannian metric, leading to new representations of tangent spaces and geodesics. From this geometry, we derive a new Riemannian optimization framework for robust covariance estimation, which is leveraged to minimize the popular Tyler's cost function on the considered quotient manifold. We also obtain a new divergence function, which is exploited to define a geometrical error measure on the quotient, and the corresponding intrinsic Cramér-Rao lower bound is derived. Thanks to the structure of the chosen parametrization, we further consider the subspace estimation error on the Grassmann manifold and provide its intrinsic Cramér-Rao lower bound. Our theoretical results are illustrated on some numerical experiments, showing the interest of the proposed optimization framework and that performance bounds can be reached.