Covariance Symmetries Classification in Multitemporal/Multipass PolSAR Images
Dehbia Hanis, Luca Pallotta, Augusto Aubry, Aichouche Belhadj-Aissa, Antonio De Maio

TL;DR
This paper introduces a framework for classifying covariance matrix symmetries in multipass PolSAR images by leveraging temporal and polarimetric data, improving scene interpretation accuracy.
Contribution
It proposes a novel methodology combining Kronecker product modeling and an alternating maximization algorithm for symmetry classification in PolSAR data.
Findings
Achieves over 94% accuracy in symmetry classification on simulated data.
Outperforms existing methods that do not utilize temporal correlations.
Demonstrates effectiveness on real RADARSAT-2 data.
Abstract
A polarimetric synthetic aperture radar (PolSAR) system, which uses multiple images acquired with different polarizations in both transmission and reception, has the potential to improve the description and interpretation of the observed scene. This is typically achieved by exploiting the polarimetric covariance or coherence matrix associated with each pixel, which is processed to meet a specific goal in Earth observation. This paper presents a design framework for selecting the structure of the polarimetric covariance matrix that accurately reflects the symmetry associated with the analyzed pixels. The proposed methodology leverages both polarimetric and temporal information from multipass PolSAR images to enhance the retrieval of information from the acquired data. To accomplish this, it is assumed that the covariance matrix (of the overall acquired data) is given as the Kronecker…
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