Chen Xiao, Chen Zhuang, Liu Guoxiang, Chen Kun, Wang Lu, Xiang Wei, Zhang Rui
Faculty of Geoscience and Environmental Engineering, Southwest Jiaotong University, Chengdu 611756, China.
National and Local Joint Engineering Laboratory of Safe Space Information Technology for High-Speed Railway Operation, Southwest Jiaotong University, Chengdu 611756, China.
Sensors (Basel). 2021 Jul 21;21(15):4961. doi: 10.3390/s21154961.
As the railway overhead contact system (OCS) is the key component along the high-speed railway, it is crucial to detect the quality of the OCS. Compared with conventional manual OCS detection, the vehicle-mounted Light Detection and Ranging (LiDAR) technology has advantages such as high efficiency and precision, which can solve the problems of OCS detection difficulty, low efficiency, and high risk. Aiming at the contact cables, return current cables, and catenary cables in the railway vehicle-mounted LiDAR OCS point cloud, this paper used a scale adaptive feature classification algorithm and the DBSCAN (density-based spatial clustering of applications with noise) algorithm considering OCS characteristics to classify the OCS point cloud. Finally, the return current cables, catenary cables, and contact cables in the OCS were accurately classified and extracted. To verify the accuracy of the method presented in this paper, we compared the experimental results of this article with the classification results of TerraSolid, and the classification results were evaluated in terms of four accuracy indicators. According to statistics, the average accuracy of using this method to extract two sets of OCS point clouds is 99.83% and 99.89%, respectively; the average precision is 100% and 99.97%, respectively; the average recall is 99.16% and 99.42%, respectively; and the average overall accuracy is 99.58% and 99.69% respectively, which is overall better than TerraSolid. The experimental results showed that this approach could accurately and quickly extract the complete OCS from the point cloud. It provides a new method for processing railway OCS point clouds and has high engineering application value in railway component detection.
由于铁路架空接触网系统(OCS)是高速铁路沿线的关键部件,检测OCS的质量至关重要。与传统的手动OCS检测相比,车载激光探测与测距(LiDAR)技术具有高效、精确等优点,能够解决OCS检测难度大、效率低和风险高的问题。针对铁路车载LiDAR OCS点云中的接触电缆、回流电缆和悬链线电缆,本文采用了一种尺度自适应特征分类算法和考虑OCS特征的DBSCAN(基于密度的带噪声空间聚类)算法对OCS点云进行分类。最终,准确分类并提取了OCS中的回流电缆、悬链线电缆和接触电缆。为验证本文提出方法的准确性,将本文的实验结果与TerraSolid的分类结果进行了比较,并从四个精度指标方面对分类结果进行了评估。据统计,使用该方法提取两组OCS点云的平均准确率分别为99.83%和99.89%;平均精度分别为100%和99.97%;平均召回率分别为99.16%和99.42%;平均总体准确率分别为99.58%和99.69%,总体上优于TerraSolid。实验结果表明,该方法能够从点云中准确、快速地提取完整的OCS。它为铁路OCS点云处理提供了一种新方法,在铁路部件检测中具有较高的工程应用价值。