A real-time automatic rail extraction algorithm for low-density mobile laser scanning data

Zhihao Hu, Xiaoci Huang
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Abstract

Automatic detection of railroad infrastructure using Mobile Laser Scanning systems is a key technology for both advanced rail driver assistance and intelligent track maintenance. The recent research into railway facility extraction or condition monitoring usually relies on high-density point cloud dataset with known sensor parameters but ignores the processing performance in actual deployment and has high requirements for the acquisition device. To address these limitations, a novel rail extraction algorithm is proposed for processing Mobile Laser Scanning data in real time during acquisition, which could extract rail features by a hierarchical coarse-to-fine method with basic structural parameters. Using the geometric and global statistical characteristics of rail in raw data, a new rail descriptor is defined based on the quantitative statistics of points satisfying height difference in generalized local neighborhood. The approach is evaluated experimentally by a simulated real-time acquisition data and compared with a reference method. The experimental results show that the proposed algorithm has a finer extraction effect and good real-time performance.
低密度移动激光扫描数据的实时自动轨道提取算法
利用移动激光扫描系统对铁路基础设施进行自动检测,是先进的铁路驾驶员辅助系统和智能轨道维护的关键技术。近期有关铁路设施提取或状态监测的研究通常依赖于已知传感器参数的高密度点云数据集,但忽略了实际部署中的处理性能,对采集设备的要求也很高。针对这些局限性,本文提出了一种新颖的轨道提取算法,用于在采集过程中实时处理移动激光扫描数据,通过从粗到细的分层方法提取具有基本结构参数的轨道特征。利用原始数据中轨道的几何和全局统计特征,基于满足广义局部邻域高度差的点的定量统计,定义了一种新的轨道描述符。通过模拟实时采集数据对该方法进行了实验评估,并与参考方法进行了比较。实验结果表明,所提出的算法具有更精细的提取效果和良好的实时性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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