Multi-temporal speckle reduction with self-supervised deep neural networks
In\`es Meraoumia, Emanuele Dalsasso, Lo\"ic Denis, R\'emy Abergel, and, Florence Tupin

TL;DR
This paper introduces a self-supervised deep learning method for multi-temporal speckle reduction in SAR images, eliminating the need for ground-truth images and outperforming existing approaches.
Contribution
It extends the MERLIN self-supervised training strategy to multi-temporal SAR filtering, modeling spatial, temporal, and complex component dependencies.
Findings
Improved speckle reduction with additional SAR images.
Outperforms competing multi-temporal filtering methods.
Demonstrated on TerraSAR-X datasets.
Abstract
Speckle filtering is generally a prerequisite to the analysis of synthetic aperture radar (SAR) images. Tremendous progress has been achieved in the domain of single-image despeckling. Latest techniques rely on deep neural networks to restore the various structures and textures peculiar to SAR images. The availability of time series of SAR images offers the possibility of improving speckle filtering by combining different speckle realizations over the same area. The supervised training of deep neural networks requires ground-truth speckle-free images. Such images can only be obtained indirectly through some form of averaging, by spatial or temporal integration, and are imperfect. Given the potential of very high quality restoration reachable by multi-temporal speckle filtering, the limitations of ground-truth images need to be circumvented. We extend a recent self-supervised training…
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Taxonomy
TopicsAdvanced Optical Sensing Technologies · Optical Coherence Tomography Applications · Advanced Image Processing Techniques
