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Automatic Detection and Classification of Pole-Like Objects for Urban Cartography Using Mobile Laser Scanning Data

机译:使用移动激光扫描数据自动检测和分类城市制图样对象

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摘要

Mobile laser scanning (MLS) is a modern and powerful technology capable of obtaining massive point clouds of objects in a short period of time. Although this technology is nowadays being widely applied in urban cartography and 3D city modelling, it has some drawbacks that need to be avoided in order to strengthen it. One of the most important shortcomings of MLS data is concerned with the fact that it provides an unstructured dataset whose processing is very time-consuming. Consequently, there is a growing interest in developing algorithms for the automatic extraction of useful information from MLS point clouds. This work is focused on establishing a methodology and developing an algorithm to detect pole-like objects and classify them into several categories using MLS datasets. The developed procedure starts with the discretization of the point cloud by means of a voxelization, in order to simplify and reduce the processing time in the segmentation process. In turn, a heuristic segmentation algorithm was developed to detect pole-like objects in the MLS point cloud. Finally, two supervised classification algorithms, linear discriminant analysis and support vector machines, were used to distinguish between the different types of poles in the point cloud. The predictors are the principal component eigenvalues obtained from the Cartesian coordinates of the laser points, the range of the Z coordinate, and some shape-related indexes. The performance of the method was tested in an urban area with 123 poles of different categories. Very encouraging results were obtained, since the accuracy rate was over 90%.
机译:移动激光扫描(MLS)是一项现代而强大的技术,能够在短时间内获取大量的物体点云。尽管如今该技术已广泛应用于城市制图和3D城市建模中,但仍存在一些需要克服的缺陷,以便对其进行增强。 MLS数据的最主要缺点之一是它提供了一个非结构化的数据集,该数据集的处理非常耗时。因此,对开发用于从MLS点云自动提取有用信息的算法的兴趣日益浓厚。这项工作的重点是建立一种方法和开发一种算法,以检测极点对象,并使用MLS数据集将它们分类为几个类别。为了简化和减少分割过程中的处理时间,开发的过程首先通过体素化将点云离散化。反过来,开发了一种启发式分割算法来检测MLS点云中的极点对象。最后,使用两种监督分类算法,线性判别分析和支持向量机来区分点云中不同类型的极点。预测变量是从激光点的笛卡尔坐标,Z坐标的范围以及一些与形状相关的指标获得的主成分特征值。该方法的性能已在市区的123个不同类别的杆上进行了测试。由于准确率超过90%,因此获得了令人鼓舞的结果。

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