Research on Automatic Denoising of LIDAR Point Cloud Data for Substation Equipment Based on Spatial Grid Density

Xinle Yu, Yong Du, Hao Wang, Jingsong Yao, Yuan-Chen Wang, Xiao-yun Shen
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Abstract

Aiming at the shortcomings of the existing 3D point cloud data automatic extraction methods of substation equipment, which are highly dependent on big data algorithms and low efficiency, this paper proposes a 3D LIDAR point cloud data segmentation method and process based on the multidimensional subspace grid density difference. The proposed method is based on eliminating the flying spots of 3D point cloud data, and is divided into equipment point cloud data and ground point cloud data based on point cloud data characteristics for 3D real-world modeling and accurate positioning of the model; Among them, the equipment point cloud data uses a multi-dimensional density difference segmentation method. The long-distance terrain is divided in the XOY and YOZ planes, and converted into a combination of multiple small-scale scale spaces. Effective segmentation, so that automatic extraction of substation equipment can be realized; The ground point cloud data uses a single-dimensional density difference segmentation method to dilute the ground point cloud data to obtain clear positioning points. The feasibility verification results of cloud data of a UHV substation show that the proposed method can effectively suppress the noise interference of interference points, realize accurate extraction and location of substation equipment, and the algorithm has high efficiency and strong engineering application.
基于空间网格密度的变电设备激光雷达点云数据自动去噪研究
针对现有变电站设备三维点云数据自动提取方法对大数据算法依赖程度高、效率低的缺点,本文提出了一种基于多维子空间网格密度差的三维LIDAR点云数据分割方法和流程。提出的方法基于消除三维点云数据的飞斑,并根据点云数据特征将其划分为设备点云数据和地面点云数据,用于三维真实世界建模和模型的精确定位;其中,设备点云数据采用了多维密度差分割方法。远距离地形被划分为XOY和YOZ平面,并转化为多个小尺度空间的组合。有效分割,实现变电站设备的自动提取;地面点云数据采用一维密度差分割方法对地面点云数据进行稀释,得到清晰的定位点。某特高压变电站云数据可行性验证结果表明,所提方法能有效抑制干扰点的噪声干扰,实现变电站设备的准确提取和定位,算法效率高,工程应用性强。
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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