Abstract

The overhead contact system (OCS) is a critical railway infrastructure for train power supply. Periodic inspections, aiming at acquiring the operational condition of the OCS and detecting problems, are necessary to guarantee the safety of railway operations. One of the OCS inspection means is to analyze data of point clouds collected by mobile 2D LiDAR. Recognizing OCS components from the collected point clouds is a critical task of the data analysis. However, the complex composition of OCS makes the task difficult. To solve the problem of recognizing multiple OCS components, we propose a new deep learning-based method to conduct semantic segmentation on the point cloud collected by mobile 2D LiDAR. Both online data processing and batch data processing are supported because our method is designed to classify points into meaningful categories of objects scan line by scan line. Local features are important for the success of point cloud semantic segmentation. Thus, we design an iterative point partitioning algorithm and a module named as Spatial Fusion Network, which are two critical components of our method for multi-scale local feature extraction. We evaluate our method on point clouds where sixteen categories of common OCS components have been manually labeled. Experimental results show that our method is effective in multiple object recognition since mean Intersection-over-Unions (mIoUs) of online data processing and batch data processing are, respectively, 96.12% and 97.17%.

Highlights

  • Rail transportation is a significant part of the transportation network

  • As for feature extraction, we are concerned about two issues: (1) we have to generate regions for local feature extraction; and (2) 3D contexts are in demand for classifying points at a scan line because the 2D features extracted at a scan line are incompetent for recognizing 3D objects

  • This study focuses on multiple overhead contact system (OCS) component recognition with mobile 2D LiDAR

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Summary

Introduction

Rail transportation is a significant part of the transportation network. Up to 2019, the mileage of the global railway is over 1.3 million kilometers [1]. The operational condition of OCS can be acquired by analyzing the MLS point cloud instead of manual measurement. This study focuses on multiple OCS component recognition with mobile 2D LiDAR. We propose a new deep learning-based method to conduct semantic segmentation on the point cloud collected by mobile 2D LiDAR. Experiments are carried out on the MLS point cloud collected from the OCS of Chinese high-speed railways. To solve the issue of local feature extraction, we develop an iterative point partitioning algorithm and SFN to acquire local features among scan lines at multiple scales.

Related Work
Methodology
Data Preprocessing
Iterative Point Partitioning
Spatial Fusion Network
PointNet Layer for Feature Extraction
Recurrent Neural Networks for Feature Fusion
Multi-Scale Feature Extraction and Per-Point Classification
Data Description
Implementation Details
Semantic Segmentation Results
Space and Time Complexity
Ablation Study
Conclusions
Full Text
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