BinaLab/3DAeroRelief
3DAeroRelief is a high-resolution 3D point cloud benchmark dataset designed for semantic segmentation in post-disaster scenarios. It includes 3D data for eight distinct areas, COLMAP configuration files for reconstruction, and Python utility scripts for merging and processing semantic labels and geometry.
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Python
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Last pushed
Feb 13, 2026
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