Hierarchical SVM for Semantic Segmentation of 3D Point Clouds for Infrastructure Scenes

Mohamed Mansour, Jan Martens, Jörg Blankenbach
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Abstract

The incorporation of building information modeling (BIM) has brought about significant advancements in civil engineering, enhancing efficiency and sustainability across project life cycles. The utilization of advanced 3D point cloud technologies such as laser scanning extends the application of BIM, particularly in operations and maintenance, prompting the exploration of automated solutions for labor-intensive point cloud modeling. This paper presents a demonstration of supervised machine learning—specifically, a support vector machine—for the analysis and segmentation of 3D point clouds, which is a pivotal step in 3D modeling. The point cloud semantic segmentation workflow is extensively reviewed to encompass critical elements such as neighborhood selection, feature extraction, and feature selection, leading to the development of an optimized methodology for this process. Diverse strategies are implemented at each phase to enhance the overall workflow and ensure resilient results. The methodology is then evaluated using diverse datasets from infrastructure scenes of bridges and compared with state-of-the-art deep learning models. The findings highlight the effectiveness of supervised machine learning techniques at accurately segmenting 3D point clouds, outperforming deep learning models such as PointNet and PointNet++ with smaller training datasets. Through the implementation of advanced segmentation techniques, there is a partial reduction in the time required for 3D modeling of point clouds, thereby further enhancing the efficiency and effectiveness of the BIM process.
用于基础设施场景三维点云语义分割的分层 SVM
建筑信息模型(BIM)的应用极大地推动了土木工程的发展,提高了整个项目生命周期的效率和可持续性。先进三维点云技术(如激光扫描)的使用扩展了 BIM 的应用范围,尤其是在运营和维护方面,这促使人们探索劳动密集型点云建模的自动化解决方案。本文展示了有监督机器学习--特别是支持向量机--用于分析和分割三维点云的方法,这是三维建模的关键步骤。本文对点云语义分割工作流程进行了广泛评述,涵盖了邻域选择、特征提取和特征选择等关键要素,从而为这一过程开发了优化方法。在每个阶段都实施了不同的策略,以增强整体工作流程并确保结果的弹性。然后,使用来自桥梁基础设施场景的各种数据集对该方法进行评估,并与最先进的深度学习模型进行比较。研究结果凸显了有监督机器学习技术在准确分割三维点云方面的有效性,在使用较小的训练数据集时,其表现优于 PointNet 和 PointNet++ 等深度学习模型。通过实施先进的分割技术,部分减少了点云三维建模所需的时间,从而进一步提高了 BIM 流程的效率和效果。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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