Accurate rail location is a crucial part in the railway support driving system for safety monitoring. LiDAR can obtain point clouds that carry 3D information for the railway environment, especially in darkness and terrible weather conditions. In this paper, a real-time rail recognition method based on 3D point clouds is proposed to solve the challenges, such as disorderly, uneven density and large volume of the point clouds. A voxel down-sampling method is first presented for density balanced of railway point clouds, and pyramid partition is designed to divide the 3D scanning area into the voxels with different volumes. Then, a feature encoding module is developed to find the nearest neighbor points and to aggregate their local geometric features for the center point. Finally, a multi-scale neural network is proposed to generate the prediction results of each voxel and the rail location. The experiments are conducted under 9 sequences of 3D point cloud data for the railway. The results show that the method has good performance in detecting straight, curved and other complex topologies rails.
翻译:准确的铁路位置是铁路安全监测支持驱动系统的一个关键部分。 LiDAR 可以获得为铁路环境,特别是黑暗和恶劣的天气条件提供三维信息的点云。在本文中,提出了基于三维点云的实时铁路识别方法,以解决挑战,如不规则、不均密度和点云的较大量。首先为铁路点云的密度平衡提供了 voxel 下游取样方法,金字塔分区的设计是将三维扫描区分为不同量的氧化物。然后开发了一个功能编码模块,以寻找最近的近邻点,并汇总中心点的局部几何特征。最后,建议建立一个多尺度的神经网络,以产生每个对二维星和铁路位置的预测结果。实验按铁路的三维点云数据9个序列进行。结果显示,该方法在探测直线、曲线和其他复杂地形轨道方面表现良好。