基于改进直通降维的点云轮廓提取方法

Dongni Liang, Zhufeng Jia, Bo Wang, Lihang Chen, Xiongjue Wang
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引用次数: 0

摘要

获取既考虑大型钢构件整体信息又考虑螺栓孔局部信息的点云模型是大型钢结构虚拟装配的重要方法。本文提出了一种点云提取方法,以提高降维分布的均匀性。首先,通过垂直三维激光扫描和手持三维激光扫描相结合的方法,获得表征大尺寸构件整体信息和螺栓孔组局部信息的点云数据;然后,基于改进的直通滤波方法,对点云进行三轴等距降维,并利用平面点云分布均匀性算法提取角点云;最后,将点云还原到同一空间,完成点云的轮廓提取。通过使用标准组件进行点云特征提取测试,验证了轮廓提取方法的准确性。与传统的特征提取方法相比,该方法对几何构型具有一定规律性的杆件进行了有针对性的局部特征提取,减少了特征提取所需的时间,并为钢桁架梁的虚拟装配提供了一个简要的数据库。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Point cloud contour extraction method based on improved pass-through dimensionality reduction
Obtaining a point cloud model that considers the overall information of large steel components as well as the local information of bolt holes is an important approach for the virtual assembly of large steel structures. This paper proposes a point cloud extraction method to improve the uniformity of the dimensionality reduction distribution. Firstly, the point cloud data characterizing the overall information of the large-size component and the local information of the bolt-hole group are obtained by combining vertical 3D laser scanning and handheld 3D laser scanning; the point cloud was then triaxially equidistant and reduced in dimension based on improved straight-pass filtering, and the corner point cloud extracted using a planar point cloud distribution uniformity algorithm; finally, the point cloud is restored to the same space to complete the contour extraction of the point cloud. The accuracy of the contour extraction method was verified by conducting point cloud feature extraction tests using standard components. Compared to conventional feature extraction, the method provides targeted local feature extraction for bars with a certain regularity of geometric configuration, reducing the time required for feature extraction and providing a brief database for the virtual assembly of steel joist beams.
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