Abstract
Semantic 3D building models are widely available and used in numerous applications. Such 3D building models display rich semantics but no facąde openings, chiefly owing to their aerial acquisition techniques. Hence, refining models' facądes using dense, street-level, terrestrial point clouds seems a promising strategy. In this paper, we propose a method of combining visibility analysis and neural networks for enriching 3D models with window and door features. In the method, occupancy voxels are fused with classified point clouds, which provides semantics to voxels. Voxels are also used to identify conflicts between laser observations and 3D models. The semantic voxels and conflicts are combined in a Bayesian network to classify and delineate facąde openings, which are reconstructed using a 3D model library. Unaffected building semantics is preserved while the updated one is added, thereby upgrading the building model to LoD3. Moreover, Bayesian network results are back-projected onto point clouds to improve points' classification accuracy. We tested our method on a municipal CityGML LoD2 repository and the open point cloud datasets: TUM-MLS-2016 and TUM-FAÇADE. Validation results revealed that the method improves the accuracy of point cloud semantic segmentation and upgrades buildings with facąde elements. The method can be applied to enhance the accuracy of urban simulations and facilitate the development of semantic segmentation algorithms.
Original language | English |
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Pages (from-to) | 289-296 |
Number of pages | 8 |
Journal | ISPRS Annals of the Photogrammetry, Remote Sensing and Spatial Information Sciences |
Volume | 10 |
Issue number | 4/W2-2022 |
DOIs | |
State | Published - 14 Oct 2022 |
Event | 17th 3D GeoInfo Conference, 3DGeoInfo 2022 - Sydney, Australia Duration: 19 Oct 2022 → 21 Oct 2022 |
Keywords
- 3D reconstruction
- Building models refinement
- CityGML
- Deep learning
- LoD3 building models
- MLS point clouds
- Semantic 3D building models
- Window and door reconstruction