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Riemannian geometry for Compound Gaussian distributions: application to recursive change detection

20 May 2020
Florent Bouchard
A. Mian
Jialun Zhou
Salem Said
G. Ginolhac
Y. Berthoumieu
ArXiv (abs)PDFHTML
Abstract

A new Riemannian geometry for the Compound Gaussian distribution is proposed. In particular, the Fisher information metric is obtained, along with corresponding geodesics and distance function. This new geometry is applied on a change detection problem on Multivariate Image Times Series: a recursive approach based on Riemannian optimization is developed. As shown on simulated data, it allows to reach optimal performance while being computationally more efficient.

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