Transformer-based Flood Scene Segmentation for Developing Countries
Floods are large-scale natural disasters that often induce a massive number of deaths, extensive material damage, and economic turmoil. The effects are more extensive and longer-lasting in high-population and low-resource developing countries. Early Warning Systems (EWS) constantly assess water leve...
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Zusammenfassung: | Floods are large-scale natural disasters that often induce a massive number
of deaths, extensive material damage, and economic turmoil. The effects are
more extensive and longer-lasting in high-population and low-resource
developing countries. Early Warning Systems (EWS) constantly assess water
levels and other factors to forecast floods, to help minimize damage.
Post-disaster, disaster response teams undertake a Post Disaster Needs
Assessment (PDSA) to assess structural damage and determine optimal strategies
to respond to highly affected neighbourhoods. However, even today in developing
countries, EWS and PDSA analysis of large volumes of image and video data is
largely a manual process undertaken by first responders and volunteers. We
propose FloodTransformer, which to the best of our knowledge, is the first
visual transformer-based model to detect and segment flooded areas from aerial
images at disaster sites. We also propose a custom metric, Flood Capacity (FC)
to measure the spatial extent of water coverage and quantify the segmented
flooded area for EWS and PDSA analyses. We use the SWOC Flood segmentation
dataset and achieve 0.93 mIoU, outperforming all other methods. We further show
the robustness of this approach by validating across unseen flood images from
other flood data sources. |
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DOI: | 10.48550/arxiv.2210.04218 |