IEEE Journal of Selected Topics in Applied Earth Observations and Remote Sensing (Jan 2024)

Integration of Remote Sensing and Crowdsourced Data for Fine-Grained Urban Flood Detection

  • Zhenjie Liu,
  • Jun Li,
  • Lizhe Wang,
  • Antonio Plaza

DOI
https://doi.org/10.1109/JSTARS.2024.3433010
Journal volume & issue
Vol. 17
pp. 13523 – 13532

Abstract

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In the context of frequent global flood disasters, flood detection is of great significance for emergency management and human sustainable development, especially in urban areas with increasing population and socio-economic activities. However, there are similar reflection/scattering characteristics between flooded and nonflooded land use and land cover (LULC) classes in complex urban environments, which limit the accurate detection of floods. In this study, we develop a new method for fine-grained and accurate flood detection by integrating multitemporal Sentinel-1 synthetic aperture radar images, OpenStreetMap data, and convolutional neural networks. We take the 2017 Houston flood event as a test case, where the study areas are divided into six fine-grained LULC classes, i.e., residential areas, service areas, main roads, forest, grassland, and waterways. Based on the information of fine-grained LULC classification, the proposed method performs more prominently than the baseline methods for urban flood detection. Specifically, compared with such baseline methods, F1 score, overall accuracy, and Kappa increase by more than 3.96%, 4.53%, and 9.26%, respectively. The integration of remote sensing and crowdsourced data provides a new perspective for flood detection in complex urban environments, thus supporting emergency management.

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