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.

Abstract

Urban flooding affects lives and infrastructure worldwide. Mapping inundation in complex urban environments from satellite imagery remains challenging due to limited spatial resolution, infrequent acquisitions, and cloud cover. We present Urban Flood Observations (UFO), a global, hand-labeled dataset of post-flood inundation in diverse urban settings. UFO comprises 215 image chips (1024 by 1024 pixels) from 14 flood events between 2017 and 2021, derived from 3 m PlanetScope imagery. Each chip is annotated with two classes: 'inundated' (all visible surface water, including floodwater and pre-existing water bodies (permanent or seasonal)) and 'non-inundated'. To demonstrate the dataset's utility, we trained a segmentation model using leave-one-event-out cross-validation, achieving a mean Intersection over Union (IoU) of 77.3. We also used UFO to evaluate two widely used surface water products, the Sentinel-1-based NASA IMPACT model and Google's 10 m Dynamic World water class, which yielded IoUs of 44.1 and 48.1, respectively. UFO is publicly available to support the development and validation of urban inundation mapping methods.