Remote sensing of rainfall events is critical for both operational and
scientific needs, including for example weather forecasting, extreme flood
mitigation, water cycle monitoring, etc. Ground-based weather radars, such as
NOAA's Next-Generation Radar (NEXRAD), provide reflectivity and precipitation
measurements of rainfall events. However, the observation range of such radars
is limited to a few hundred kilometers, prompting the exploration of other
remote sensing methods, paricularly over the open ocean, that represents large
areas not covered by land-based radars. For a number of decades, C-band SAR
imagery such a such as Sentinel-1 imagery has been known to exhibit rainfall
signatures over the sea surface. However, the development of SAR-derived
rainfall products remains a challenge. Here we propose a deep learning approach
to extract rainfall information from SAR imagery. We demonstrate that a
convolutional neural network, such as U-Net, trained on a colocated and
preprocessed Sentinel-1/NEXRAD dataset clearly outperforms state-of-the-art
filtering schemes. Our results indicate high performance in segmenting
precipitation regimes, delineated by thresholds at 1, 3, and 10 mm/h. Compared
to current methods that rely on Koch filters to draw binary rainfall maps,
these multi-threshold learning-based models can provide rainfall estimation for
higher wind speeds and thus may be of great interest for data assimilation
weather forecasting or for improving the qualification of SAR-derived wind
field data.Comment: 25 pages, 10 figure