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Online change detection in SAR time-series with Kronecker product structured scaled Gaussian models

Authors
  • Mian, Ammar
  • Ginolhac, Guillaume
  • Bouchard, Florent
  • Breloy, Arnaud
Publication Date
Nov 01, 2024
Identifiers
DOI: 10.1016/j.sigpro.2024.109589
OAI: oai:HAL:hal-04694905v1
Source
HAL
Keywords
Language
English
License
Unknown
External links

Abstract

We develop the information geometry of scaled Gaussian distributions for which the covariance matrix exhibits a Kronecker product structure. This model and its geometry are then used to propose an online change detection (CD) algorithm for multivariate image times series (MITS). The proposed approach relies mainly on the online estimation of the structured covariance matrix under the null hypothesis, which is performed through a recursive (natural) Riemannian gradient descent. This approach exhibits a practical interest compared to the corresponding offline version, as its computational cost remains constant for each new image added in the time series. Simulations show that the proposed recursive estimators reach the Intrinsic Cramér-Rao bound. The interest of the proposed online CD approach is demonstrated on both simulated and real data.

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