Confidence-Driven Facade Refinement of 3D Building Models Using MLS Point Clouds
arXiv cs.CV / 4/7/2026
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Key Points
- The paper proposes an automated framework to refine coarse ALS-derived CityGML building models using high-precision MLS point clouds, focusing specifically on fixing facade geometric deficiencies caused by nadir sensor viewpoints.
- Instead of reconstructing models from scratch and discarding semantics, the method treats the existing coarse model as a geometric prior to perform targeted facade updates in complex urban scenes.
- It combines surface matching to find outdated facade regions with a binary integer optimization that selects the best candidate faces from MLS-derived data.
- The optimization includes hard constraints to preserve topological validity, and the output is guaranteed to be watertight and manifold.
- Experiments report substantial accuracy improvements, including about a 36% reduction in Cloud-to-Mesh RMSE and centimeter-level alignment, supporting reliable digital twin maintenance workflows.
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