UrbanSARFloods: Sentinel-1 SLC-Based Benchmark Dataset for Urban and Open-Area Flood Mapping
Jie Zhao, Zhitong Xiong, Xiao Xiang Zhu

TL;DR
UrbanSARFloods introduces a comprehensive Sentinel-1 dataset for urban and open-area flood mapping, highlighting current deep learning challenges and guiding future research directions.
Contribution
The paper presents a new large-scale SAR flood dataset covering urban and open areas, and benchmarks CNN performance, revealing limitations of existing methods.
Findings
Prevalent CNN approaches struggle with imbalanced data.
Transfer learning and WCE loss are insufficient for urban flood detection.
Expanding the dataset could improve flood mapping techniques.
Abstract
Due to its cloud-penetrating capability and independence from solar illumination, satellite Synthetic Aperture Radar (SAR) is the preferred data source for large-scale flood mapping, providing global coverage and including various land cover classes. However, most studies on large-scale SAR-derived flood mapping using deep learning algorithms have primarily focused on flooded open areas, utilizing available open-access datasets (e.g., Sen1Floods11) and with limited attention to urban floods. To address this gap, we introduce \textbf{UrbanSARFloods}, a floodwater dataset featuring pre-processed Sentinel-1 intensity data and interferometric coherence imagery acquired before and during flood events. It contains 8,879 chips covering 807,500 across 20 land cover classes and 5 continents, spanning 18 flood events. We used UrbanSARFloods to benchmark existing…
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Taxonomy
TopicsFlood Risk Assessment and Management · Tropical and Extratropical Cyclones Research
