Lee Junhyuk, Ohtake Yutaka, Nakano Takashi, Sato Daisuke
School of Precision Engineering, The University of Tokyo, Tokyo 113-8654, Japan.
DataLabs, Inc., Tokyo 103-0024, Japan.
Sensors (Basel). 2025 May 10;25(10):3012. doi: 10.3390/s25103012.
Point clouds from laser scanners have been widely used in recent research on indoor modeling methods. Currently, particularly in data-driven modeling methods, data preprocessing for dividing structural components and nonstructural components is required before modeling. In this paper, we propose an indoor modeling method without the classification of structural and nonstructural components. A pre-mesh is generated for constructing the adjacency relations of point clouds, and plane components are extracted using planar-based region growing. Then, the distance fields of each plane are calculated, and voxel data referred to as a surface confidence map are obtained. Subsequently, the inside and outside of the indoor model are classified using a graph-cut algorithm. Finally, indoor models with watertight meshes are generated via dual contouring and mesh refinement. The experimental results showed that the point-to-mesh error ranged from approximately 2 mm to 50 mm depending on the dataset. Furthermore, completeness-measured as the proportion of original point-cloud data successfully reconstructed into the mesh-approached 1.0 for single-room datasets and reached around 0.95 for certain multiroom and synthetic datasets. These results demonstrate the effectiveness of the proposed method in automatically removing non-structural components and generating clean structural meshes.
激光扫描仪的点云已在近期的室内建模方法研究中得到广泛应用。目前,特别是在数据驱动的建模方法中,建模前需要进行数据预处理以划分结构组件和非结构组件。在本文中,我们提出了一种无需对结构和非结构组件进行分类的室内建模方法。生成一个预网格来构建点云的邻接关系,并使用基于平面的区域生长方法提取平面组件。然后,计算每个平面的距离场,并获得称为表面置信度图的体素数据。随后,使用图割算法对室内模型的内部和外部进行分类。最后,通过双轮廓和网格细化生成具有封闭网格的室内模型。实验结果表明,根据数据集的不同,点到网格的误差范围约为2毫米至50毫米。此外,对于单房间数据集,作为成功重建到网格中的原始点云数据比例衡量的完整性接近1.0,对于某些多房间和合成数据集达到约0.95。这些结果证明了所提方法在自动去除非结构组件和生成干净结构网格方面的有效性。