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Extracting Structural Models through Computer Vision

机译:通过计算机视觉提取结构模型

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The ability to accurately and rapidly assess structural integrity after a disaster is critical from both a safety and economic perspective. Existing post-disaster inspection methods are time-consuming and expensive, requiring highly trained inspectors to travel to target sites and manually collect data. Automated analysis of civil structures from visual data through computer vision can be used to improve the level of accuracy in the condition assessment procedure. This paper presents a method of automated and systematic computer vision-based structural analysis. It uses a set of digital photographs to produce a 3D model through Structure from Motion (SfM) algorithms, followed by fully automated recognition and assembly of structural elements (e.g., columns and beams) from the image-based 3D dense reconstruction of the structure. There are three key challenges in this work: (ⅰ) proper 3D mesh segmentation, (ⅱ) robust computer vision algorithms for isolating different structural components, and (ⅲ) classification and localization of damage that is present in the 3D model. As the part of the proposed system, extracted information from the dense 3D model is used to assemble the structural elements and create a Finite-Element Method (FEM) model. Lastly, a supervised machine learning scheme built upon a large and comprehensive data set is used to automatically update the model to account for damage. The proposed methodology has applications beyond post-disaster condition assessment, from routine inspection to infrastructure management applications.
机译:在灾难之后准确和快速评估结构完整性的能力对于安全和经济的角度来说至关重要。现有的灾后检查方法是耗时和昂贵的,需要高度训练的检查员前往目标网站并手动收集数据。通过计算机视觉自动分析视觉数据的公民结构可用于提高条件评估程序中的准确性水平。本文介绍了一种自动化和系统的计算机视觉的结构分析方法。它使用一组数字照片通过来自运动(SFM)算法的结构来产生3D模型,然后通过结构的基于图像的3D密集重建完全自动识别和组装结构元件(例如,列和光束)。这项工作中有三个关键挑战:(Ⅰ)适当的3D网格分割,(Ⅱ)用于隔离不同结构部件的强大的计算机视觉算法,以及(Ⅲ)3D模型中存在的损坏分类和定位。作为所提出的系统的一部分,来自致密3D模型的提取信息用于组装结构元素并创建有限元方法(FEM)模型。最后,在大型和全面数据集上建立的监督机器学习方案用于自动更新模型以造成损坏。拟议的方法具有超越灾后条件评估的应用,从常规检查到基础设施管理应用。

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