pagraf/Swin-BathyUNet
Quick start guide for Swin-BathyUNet.
This tool helps oceanographers, coastal managers, and environmental scientists accurately map shallow seabed depths. By inputting remote sensing imagery and existing 3D seabed models (even with gaps), it outputs detailed and complete bathymetric maps. This is for professionals who need precise depth data for surveying, environmental monitoring, or hazard assessment.
Use this if you need to create accurate and complete bathymetric maps of shallow waters using aerial or satellite imagery, especially when traditional fieldwork or existing 3D models have limitations or gaps.
Not ideal if you require bathymetry for deep-sea environments or lack access to remote sensing imagery or Structure-from-Motion (SfM-MVS) data.
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Last pushed
Mar 02, 2026
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