从点云生成桥梁几何数字双胞胎

Ruodan Lu, I. Brilakis
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引用次数: 7

摘要

从点云对现有桥梁进行数字孪生的自动化仍然没有解决。从点云中提取目标点簇需要大量的手工工作,然后用精确的3D形状拟合它们。先前的研究产生了可以自动生成表面基元的方法,结合基于规则的分类来创建标记的长方体和圆柱体。虽然这些方法在合成数据集或简化情况下工作得很好,但在处理现实世界的点云时,它们遇到了巨大的挑战。此外,桥的几何形状,定义为弯曲的排列和不同的高度,比理想情况下要复杂得多。现有的方法都不能可靠地处理这些困难。提出的框架采用桥梁工程知识,模仿人类建模者的智能,在不完美的点云中检测和建模钢筋混凝土桥梁对象。它直接在工业基础类格式中生成标记的3D对象,而不生成低级形状原语。在10个桥点云上的实验表明,该框架的整体检测f1得分为98.4%,平均建模精度为7.05 cm,平均建模时间仅为37.8秒。这是同类框架中第一个实现现有桥梁几何数字生成高可靠性能的框架。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Generating bridge geometric digital twins from point clouds
The automation of digital twinning for existing bridges from point clouds remains unsolved. Extensive manual effort is required to extract object point clusters from point clouds followed by fitting them with accurate 3D shapes. Previous research yielded methods that can automatically generate surface primitives combined with rule-based classification to create labelled cuboids and cylinders. While these methods work well in synthetic datasets or simplified cases, they encounter huge challenges when dealing with realworld point clouds. In addition, bridge geometries, defined with curved alignments and varying elevations, are much more complicated than idealized cases. None of the existing methods can handle these difficulties reliably. The proposed framework employs bridge engineering knowledge that mimics the intelligence of human modellers to detect and model reinforced concrete bridge objects in imperfect point clouds. It directly produces labelled 3D objects in Industry Foundation Classes format without generating low-level shape primitives. Experiments on ten bridge point clouds indicate the framework achieves an overall detection F1-score of 98.4%, an average modelling accuracy of 7.05 cm, and an average modelling time of merely 37.8 seconds. This is the first framework of its kind to achieve high and reliable performance of geometric digital twin generation of existing bridges.
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