Approximate Joint Diagonalization and Geometric Mean of Symmetric Positive Definite Matrices
Marco Congedo (GIPSA-VIBS), Bijan Afsari (JHU), Alexandre Barachant, (GIPSA-VIBS), Maher Moakher (LAMSIN)

TL;DR
This paper introduces an efficient method to approximate the Fisher information geometric mean of symmetric positive definite matrices using an approximate joint diagonalization algorithm, offering fast convergence and invariance properties.
Contribution
It presents a novel approximation technique for the Fisher information geometric mean of SPD matrices based on AJD, with guaranteed convergence and low computational complexity.
Findings
Approximation closely matches the Fisher information geometric mean.
Method guarantees convergence with quadratic rate.
Demonstrated effectiveness through simulations.
Abstract
We explore the connection between two problems that have arisen independently in the signal processing and related fields: the estimation of the geometric mean of a set of symmetric positive definite (SPD) matrices and their approximate joint diagonalization (AJD). Today there is a considerable interest in estimating the geometric mean of a SPD matrix set in the manifold of SPD matrices endowed with the Fisher information metric. The resulting mean has several important invariance properties and has proven very useful in diverse engineering applications such as biomedical and image data processing. While for two SPD matrices the mean has an algebraic closed form solution, for a set of more than two SPD matrices it can only be estimated by iterative algorithms. However, none of the existing iterative algorithms feature at the same time fast convergence, low computational complexity per…
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