Extraction of Forest Power lines From LiDAR point cloud Data

Nosheen Munir, M. Awrangjeb, Bela Stantic
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引用次数: 3

Abstract

This paper presents a hierarchical method for high voltage power lines extraction and reconstruction. To begin, the potential power lines points are differentiated from the pylons and other plants using visual-based characteristics, i.e., power lines are non-vertical objects since they dangle above the ground and have space between them, while vegetation and pylons are vertical objects. The power line points are further refined from noise and surrounding vegetation points using the Hough transform. The pylons are detected from vertical points using their shape and area properties and used to obtain the power lines in the form of span points at their locations. For bundles extraction, the span points are divided into several segments and binary mask is produced from each segment. Each binary mask is utilised to link up the bundle segments using image-based techniques and to rebuild the broken/missing section of power lines. Finally, power lines are modelled in 3D polynomial curve models. The proposed method is tested on different spans from three different datasets and object-based evaluation of the proposed technique yields promising results.
基于LiDAR点云数据的森林电力线提取
提出了一种高压输电线路提取与重建的分层方法。首先,利用基于视觉的特征将潜在的电力线点与塔和其他植物区分开来,即电力线是非垂直物体,因为它们悬在地面之上,并且它们之间有空间,而植被和塔是垂直物体。利用霍夫变换进一步从噪声和周围植被点中细化电力线点。利用塔架的形状和面积特性,从垂直点探测塔架,并以塔架所在位置的跨距点的形式获得电力线。在束提取中,将跨度点分成若干段,每段生成二值掩码。每个二进制掩码使用基于图像的技术将束段连接起来,并重建电力线的破损/缺失部分。最后,采用三维多项式曲线模型对电力线进行建模。该方法在三个不同数据集的不同跨度上进行了测试,基于对象的评估得到了很好的结果。
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