基于深度学习的颜色点云分类在建筑室内元素三维重建中的应用

Shima Sahebdivani, H. Arefi, M. Maboudi
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引用次数: 3

摘要

在建筑和工程中,制作各种物体的3D模型,既简单又与现实密切相关,这一点尤为重要。在本文中,我们将对建筑物内部的不同方面进行建模,这分为三个一般步骤。第一步,使用PointNet深度学习网络对房间现有的点云进行语义分割。然后使用三种方法重建每一类物体,包括:泊松法、球旋转法和组合体积三角法以及行进立方体法。最后,采用二次误差的顶点聚类和边缘折叠方法对每个模型进行简化。对简单几何和复杂几何两类对象的结果进行了定量和定性评价。选择最优曲面重建方法并对其进行简化后,对所有目标进行建模。结果表明,采用简化边缘塌陷法的泊松曲面重建方法对于更简单的几何类别具有更好的几何精度,达到0.1 mm。此外,对于更复杂的几何问题,采用体积三角剖分法和简化边缘坍缩法的行进立方体相结合的模型更为合适,精度达到0.022 mm。
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Deep Learning based Classification of Color Point Cloud for 3D Reconstruction of Interior Elements of Buildings
In architecture and engineering, the production of 3D models of various objects that are both simple and most closely related to reality is of particular importance. In this article, we are going to model different aspects of the interior of a building, which is performed in three general steps. In the first step, the existing point clouds of a room are semantically segmented using the PointNet Deep Learning Network. Each class of objects is then reconstructed using three methods including: Poisson, ball-pivoting and combined volumetric triangulation method and marching cubes. In the last step, each model is simplified by the methods of vertex clustering and edge collapse with quadratic error. Results are quantitatively and qualitatively evaluated for two types of objects, one with simple geometry and one with complex geometry. After selecting the optimal surface reconstruction method and simplifying it, all the objects are modeled. According to the results, the Poisson surface reconstruction method with a simplified edge collapse method provides better geometric accuracy of 0.1 mm for simpler geometry classes. In addition, for more complex geometry problems, the model produced by combined volumetric triangulation method and marching cubes with simplified edge collapse method was more suitable due to a higher accuracy of 0.022 mm.
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