研究目的
To address the challenges of automated reconstruction of detailed 3D models from point clouds in complex indoor environments by presenting a novel method that couples linear structures with three-dimensional geometric surfaces for automatic 3D model reconstruction using mobile laser scanning point clouds.
研究成果
The proposed method accurately reconstructs structured models from MLS point clouds, including ceilings, floors, walls, doors, windows, and pillars, with geometric errors within 0.1m for different indoor scenes. The combination of linear structures with 3D geometric surfaces improves computational efficiency and structural accuracy. Future work includes combining image and point clouds to enrich model results, reconstructing full volumetric models, and further investigating applications in optimal location for 5G small base stations.
研究不足
The detection of openings is highly dependent on the geometric quality of point clouds, curved walls are represented with many small polygons, and the output results are surface models which may limit the expression of model thickness in practice. Additionally, the type of wall materials was ignored in 5G signal simulation, which could lead to errors.