Despeckling Sentinel-1 GRD images by deep learning and application to narrow river segmentation
About
This paper presents a despeckling method for Sentinel-1 GRD images based on the recently proposed framework "SAR2SAR": a self-supervised training strategy. Training the deep neural network on collections of Sentinel 1 GRD images leads to a despeckling algorithm that is robust to space-variant spatial correlations of speckle. Despeckled images improve the detection of structures like narrow rivers. We apply a detector based on exogenous information and a linear features detector and show that rivers are better segmented when the processing chain is applied to images pre-processed by our despeckling neural network.
Nicolas Gasnier, Emanuele Dalsasso, Lo\"ic Denis, Florence Tupin• 2021
Related benchmarks
| Task | Dataset | Result | Rank | |
|---|---|---|---|---|
| River Detection | Sentinel-1 GRD Des Moines | Precision92.54 | 2 | |
| River Detection | Sentinel-1 GRD Gaoual | Precision93.9 | 2 | |
| River Detection | Sentinel-1 GRD Garonne | Precision97.69 | 2 | |
| River Detection | Sentinel-1 GRD Régina | Precision90.92 | 2 | |
| River Detection | Sentinel-1 GRD Sunar | Precision79.12 | 2 | |
| River Detection | Sentinel-1 GRD (Redon) | Precision90.41 | 2 |
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