Self-supervised learning of deep despeckling networks with MERLIN: ensuring the statistical independence of the real and imaginary parts
Konferenz: EUSAR 2024 - 15th European Conference on Synthetic Aperture Radar
23.04.2024-26.04.2024 in Munich, Germany
Tagungsband: EUSAR 2024
Seiten: 6Sprache: EnglischTyp: PDF
Autoren:
Dalsasso, Emanuele; Brigui, Frederic; Denis, Loic; Abergel, Remy; Tupin, Florence
Inhalt:
Due to the wide variety of sensors, with different spatial resolutions, operating frequency bands, as well as acquisition modes (Stripmap, Spotlight, TOPS...), despeckling neural networks trained on a given type of SAR images do not generalize well. By directly training on images from the sensor and acquisition mode of interest, self-supervised learning is a very appealing solution. This paper analyses the preprocessing requirements of the MERLIN strategy that assumes statistical independence of the real and imaginary parts of single-look-complex SAR images to perform the self-supervised training. Adequate spectral corrections are proposed to handle asymmetrical spectra and moving Doppler centroids.