iamtekson/landslide4sense-solution
This repo is the solution for landslide4Sense challenge.
This project offers a solution for automatically identifying landslides in satellite imagery. It takes in multi-spectral Sentinel-2 satellite data combined with ALOS PALSAR slope and elevation data and outputs precise maps indicating landslide locations. Geologists, disaster management agencies, and remote sensing analysts can use this to quickly assess and monitor landslide-prone areas.
No commits in the last 6 months.
Use this if you need to accurately detect and map landslides from satellite imagery to support hazard assessment and environmental monitoring.
Not ideal if you require real-time, on-site landslide detection or if your input data is not satellite imagery with specific spectral and topographical bands.
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Last pushed
Jul 01, 2022
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