An enhanced descriptor extraction algorithm for power line detection from point clouds

IF 2.9 2区 社会学 Q1 GEOGRAPHY Geographical Research Pub Date : 2023-05-29 DOI:10.1111/1745-5871.12604
Danesh Shokri, Heidar Rastiveis, Wayne A. Sarasua, Saeid Homayouni, Benyamin Hosseiny, Alireza Shams
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引用次数: 1

Abstract

Mobile terrestrial laser scanning (MTLS) systems provide a safe and efficient means to survey roadway corridors at high speed. MTLS point clouds are rich in planimetric data. However, manual extraction of useful information from these point clouds can be time consuming and laborious and automated object extraction from MTLS point clouds has become a hot topic in the remote sensing community. This study proposes an automated method for power line extraction from MTLS point clouds based on a multilayer perceptron (MLP) neural network. The proposed method consists of three main steps: (i) point cloud preprocessing, (ii) descriptor extraction and selection, and (iii) point classification. The preprocessing step involves filtering out more than 90% of the point cloud by eliminating the vast majority of unneeded points. Next, various descriptors are extracted from the remaining points including planarity, linearity, and verticality, and the descriptor standard deviation is used to select the best-suited descriptors for power line extraction. Finally, an MLP neural network is trained using the selected descriptors from several cable and noncable sample points. The proposed algorithm was evaluated in three MTLS point clouds in urban and nonurban environments totalling 5.5 kilometres in length. An average precision of 94% and a recall of 94% showed the algorithm’s reliability and feasibility.

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基于点云的电力线检测增强描述子提取算法
移动地面激光扫描(MTLS)系统提供了一种安全、高效的高速道路走廊测量手段。MTLS点云具有丰富的平面数据。然而,人工从这些点云中提取有用信息既耗时又费力,自动从MTLS点云中提取目标已成为遥感界的研究热点。提出了一种基于多层感知器(MLP)神经网络的MTLS点云电力线自动提取方法。该方法包括三个主要步骤:(i)点云预处理,(ii)描述符提取和选择,以及(iii)点分类。预处理步骤包括通过消除绝大多数不需要的点来过滤掉90%以上的点云。接下来,从剩余的点中提取各种描述符,包括平面性、线性性和垂直性,并使用描述符标准差选择最适合的描述符进行电力线提取。最后,使用从多个电缆和非电缆样本点中选择的描述符来训练MLP神经网络。在长度为5.5 km的城市和非城市环境的3个MTLS点云中对该算法进行了评价。平均准确率为94%,召回率为94%,表明了该算法的可靠性和可行性。
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