New AI tool generates realistic satellite images of future flooding
Peer-Reviewed Publication
Updates every hour. Last Updated: 6-May-2025 12:09 ET (6-May-2025 16:09 GMT/UTC)
With help from AI, MIT scientists developed a method that generates satellite imagery from the future to depict how a region would look after a potential flooding event.
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