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Automated Recognition of Railroad Infrastructure in Rural Areas from LIDAR Data

机译:利用LIDAR数据自动识别农村地区的铁路基础设施

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This study is aimed at developing automated methods to recognize railroad infrastructure from 3D LIDAR data. Railroad infrastructure includes rail tracks, contact cables, catenary cables, return current cables, masts, and cantilevers. The LIDAR dataset used in this study is acquired by placing an Optech Lynx mobile mapping system on a railcar, operating at 125 km/h. The acquired dataset covers 550 meters of Austrian rural railroad corridor comprising 31 railroad key elements and containing only spatial information. The proposed methodology recognizes key components of the railroad corridor based on their physical shape, geometrical properties, and the topological relationships among them. The developed algorithms managed to recognize all key components of the railroad infrastructure, including two rail tracks, thirteen masts, thirteen cantilevers, one contact cable, one catenary cable, and one return current cable. The results are presented and discussed both at object level and at point cloud level. The results indicate that 100% accuracy and 100% precision at the object level and an average of 96.4% accuracy and an average of 97.1% precision at point cloud level are achieved.
机译:这项研究旨在开发自动方法,以从3D LIDAR数据识别铁路基础设施。铁路基础设施包括铁轨,接触电缆,悬链线,回流电缆,桅杆和悬臂。本研究中使用的LIDAR数据集是通过将Optech Lynx移动制图系统放置在以125 km / h的速度运行的轨道车上而获得的。采集的数据集覆盖550米的奥地利农村铁路走廊,包括31个铁路关键要素,仅包含空间信息。所提出的方法根据其物理形状,几何特性以及它们之间的拓扑关系来识别铁路走廊的关键组成部分。所开发的算法设法识别出铁路基础设施的所有关键组件,包括两条铁轨,十三根桅杆,十三根悬臂,一根接触电缆,一根悬链电缆和一根回流电缆。在对象级别和点云级别都介绍和讨论了结果。结果表明,在对象级别达到了100%的精度和100%的精度,在点云级别达到了96.4%的平均精度和97.1%的平均精度。

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