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Development of a High-Precision Lidar System and Improvement of Key Steps for Railway Obstacle Detection Algorithm

Zongliang Nan, Guoan Zhu, Xu Zhang, Xuechun Lin, Yingying Yang

2024Remote Sensing15 citationsDOIOpen Access PDF

Abstract

In response to the growing demand for railway obstacle monitoring, lidar technology has emerged as an up-and-coming solution. In this study, we developed a mechanical 3D lidar system and meticulously calibrated the point cloud transformation to monitor specific areas precisely. Based on this foundation, we have devised a novel set of algorithms for obstacle detection within point clouds. These algorithms encompass three key steps: (a) the segmentation of ground point clouds and extraction of track point clouds using our RS-Lo-RANSAC (region select Lo-RANSAC) algorithm; (b) the registration of the BP (background point cloud) and FP (foreground point cloud) via an improved Robust ICP algorithm; and (c) obstacle recognition based on the VFOR (voxel-based feature obstacle recognition) algorithm from the fused point clouds. This set of algorithms has demonstrated robustness and operational efficiency in our experiments on a dataset obtained from an experimental field. Notably, it enables monitoring obstacles with dimensions of 15 cm × 15 cm × 15 cm. Overall, our study showcases the immense potential of lidar technology in railway obstacle monitoring, presenting a promising solution to enhance safety in this field.

Topics & Concepts

ObstacleKey (lock)LidarComputer scienceRemote sensingAlgorithmGeologyGeographyComputer securityArchaeologyRemote Sensing and LiDAR ApplicationsSurface Roughness and Optical MeasurementsAdvanced Optical Sensing Technologies
Development of a High-Precision Lidar System and Improvement of Key Steps for Railway Obstacle Detection Algorithm | Litcius