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A Deep Learning-Based Method for Overhead Contact System Component Recognition Using Mobile 2D LiDAR

机译:基于深度学习的移动二维LiDAR架空接触系统组件识别方法

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摘要

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%.
机译:高架接触系统(OCS)是火车电源的重要铁路基础设施。为了确保铁路运营的安全,有必要进行定期检查,以获取OCS的运行状况并发现问题。 OCS检查手段之一是分析移动2D LiDAR收集的点云数据。从收集的点云中识别OCS组件是数据分析的关键任务。但是,OCS的复杂组成使任务很困难。为解决识别多个OCS组件的问题,我们提出了一种新的基于深度学习的方法,对移动2D LiDAR收集的点云进行语义分割。支持在线数据处理和批处理数据处理,因为我们的方法旨在将点逐行扫描地划分为有意义的对象类别。局部特征对于点云语义分割的成功很重要。因此,我们设计了一个迭代点划分算法和一个名为空间融合网络的模块,这是我们用于多尺度局部特征提取的方法的两个关键组成部分。我们在点云上评估了我们的方法,在点云上已手动标记了16种常见的OCS组件。实验结果表明,由于在线数据处理和批处理数据的平均联合交集(mIoUs)分别为96.12%和97.17%,因此我们的方法在多目标识别中是有效的。

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