Urban Flood Observations (UFO): A hand-labeled training and validation dataset of post-flood inundation
arXiv cs.CV / 4/28/2026
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Key Points
- The Urban Flood Observations (UFO) dataset provides a globally sourced, hand-labeled collection of post-flood inundation imagery to address challenges in mapping urban flooding from satellites.
- UFO contains 215 labeled 1024×1024 image chips covering 14 flood events from 2017–2021, created from 3 m PlanetScope imagery and annotated with 'inundated' versus 'non-inundated' classes.
- A segmentation model trained with leave-one-event-out cross-validation using UFO achieved a mean Intersection over Union (IoU) of 77.3, demonstrating the dataset’s effectiveness for inundation segmentation.
- UFO was further used to evaluate existing surface-water products—NASA’s IMPACT (Sentinel-1-based) and Google’s Dynamic World (10 m)—showing substantially lower IoUs of 44.1 and 48.1, respectively.
- The dataset is publicly available to help researchers develop and validate methods for urban inundation mapping in complex city environments.
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