Dates of Images:<\/b><\/p>
Post-Event: <\/i>Dec 10, 2025<\/span><\/span><\/p>Pre-Event:<\/i> Dec 7, 2025<\/span><\/span><\/p>Date of Next Image:<\/span><\/p>Dec 11, 2025<\/span><\/span><\/p>Summary:<\/span><\/p>We developed a rapid-response workflow to map flooded areas during this emergency event using multi-temporal Sentinel-1 SAR data. Sentinel-1\u2019s SAR backscatter characteristics are particularly effective for detecting surface water: water surfaces typically exhibit low backscatter, whereas non-water areas show higher backscatter. Leveraging this physical property, we distinguished between water and non-water surfaces from both pre- and post-flood observations.<\/span><\/p>To highlight flood-induced surface changes, we computed the differenced co-polarized VV backscatter (dVV = VV_post \u2013 VV_pre). This change detection technique enhances the visibility of newly inundated areas. We then applied a simple threshold to the dVV image to separate flooded from non-flooded areas.<\/span><\/p>Suggested Use:<\/span><\/p>The final output is a binary raster product, where pixels with a value of 1 represent flooded areas (dark blue color).<\/span><\/p>A permanent water body layer and a binary layer incorporating land cover are also included.<\/span><\/p>Satellite/Sensor:<\/span><\/p>Sentinel-1 /Synthetic Aperture Radar (SAR)<\/span><\/p>Resolution:<\/b><\/span><\/p>10 meters<\/span><\/p>Credits:<\/b><\/span><\/p>Dr. Khuong H. Tran (Khuong.tran@nasa.gov)<\/span><\/p>Esri REST Endpoint:<\/b><\/span><\/p>See URL section on right side of page<\/span><\/p>WMS Endpoint:<\/b><\/span><\/p>https://gis.earthdata.nasa.gov/gis05/services/DISASTERS_202512_FLOOD_WA/sentinel1_FloodDetection/MapServer/WMSServer<\/a><\/p><\/div>",
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