Artificial Intelligence-Assisted Segmentation of Flood Water from a Drone Imagery: A Use Case

Read the full article See related articles

Listed in

This article is not in any list yet, why not save it to one of your lists.
Log in to save this article

Abstract

As a proof of concept, this paper demonstrates Artificial Intelligence-based segmenta-tion and inundation of flood water on a drone imagery captured at Kachulu Trading Centre along Lake Chilwa, Malawi. Kachulu experienced lakeshore flooding due to heavy rains from Tropical Cyclone Freddy in March 2023. Leveraging recent advance-ments in Artificial Intelligence (AI) and a high spatial resolution drone imagery, flood water at Kachulu is detected, and its extent estimated using the segment-geospatial (samgeo), which is a Segment Anything Model (SAM) image encoder in Python. The results show that samgeo performed reasonably well in extracting about 84.1% (80,276 sq.m) of flood water from 95, 399 sq.m of flooded area in a 3 m spatial resolution im-agery. Rapid estimation of flood water extent is vital for damage assessment, disaster response and, more importantly, future disaster preparedness in climate change sensi-tive and vulnerable regions.

Article activity feed