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Classification of Power Facility Point Clouds from Unmanned Aerial Vehicles Based on Adaboost and Topological Constraints

机译:基于Adaboost和拓扑约束的无人机动力设施点云分类

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摘要

Machine learning algorithms can be well suited to LiDAR point cloud classification, but when they are applied to the point cloud classification of power facilities, many problems such as a large number of computational features and low computational efficiency can be encountered. To solve these problems, this paper proposes the use of the Adaboost algorithm and different topological constraints. For different objects, the top five features with the best discrimination are selected and combined into a strong classifier by the Adaboost algorithm, where coarse classification is performed. For power transmission lines, the optimum scales are selected automatically, and the coarse classification results are refined. For power towers, it is difficult to distinguish the tower from vegetation points by only using spatial features due to the similarity of their proposed key features. Therefore, the topological relationship between the power line and power tower is introduced to distinguish the power tower from vegetation points. The experimental results show that the classification of power transmission lines and power towers by our method can achieve the accuracy of manual classification results and even be more efficient.
机译:机器学习算法可以很好地适合于LiDAR点云分类,但是当将其应用于电力设施的点云分类时,会遇到许多问题,例如大量的计算特征和较低的计算效率。为了解决这些问题,本文提出使用Adaboost算法和不同的拓扑约束。对于不同的对象,将选择具有最佳区分度的前五个特征,并通过Adaboost算法将其组合为一个强大的分类器,然后执行粗分类。对于输电线路,将自动选择最佳比例,并对粗分类结果进行细化。对于电力塔,由于建议的关键特征相似,因此仅通过使用空间特征很难将其与植被点区分开。因此,引入了电力线与电力塔之间的拓扑关系,以将电力塔与植被点区分开。实验结果表明,采用本方法对输电线路和输电塔进行分类可以达到人工分类结果的准确性,甚至可以达到更高的效率。

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