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An Improved Method for Power-Line Reconstruction from Point Cloud Data

机译:一种基于点云数据的电力线重构的改进方法

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This paper presents a robust algorithm to reconstruct power-lines using ALS technology. Point cloud data are automatically classified into five target classes before reconstruction. In order to improve upon the defaults of only using the local shape properties of a single power-line span in traditional methods, the distribution properties of power-line group between two neighbor pylons and contextual information of related pylon objects are used to improve the reconstruction results. First, the distribution properties of power-line sets are detected using a similarity detection method. Based on the probability of neighbor points belonging to the same span, a RANSAC rule based algorithm is then introduced to reconstruct power-lines through two important advancements: reliable initial parameters fitting and efficient candidate sample detection. Our experiments indicate that the proposed method is effective for reconstruction of power-lines from complex scenarios.
机译:本文提出了一种使用ALS技术重建电力线的鲁棒算法。在重建之前,点云数据会自动分为五个目标类别。为了改善传统方法中仅使用单个电力线跨度的局部形状属性的默认设置,使用两个相邻的电线塔之间的电线线组的分布属性以及相关电线塔对象的上下文信息来改善重建结果。首先,使用相似度检测方法来检测电力线组的分布特性。基于相邻点属于同一跨度的概率,然后引入基于RANSAC规则的算法,通过两个重要的进展来重构电力线:可靠的初始参数拟合和有效的候选样本检测。我们的实验表明,所提出的方法对于从复杂场景重构电力线是有效的。

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