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首页> 外文期刊>IEEE Transactions on Instrumentation and Measurement >Deep Architecture for High-Speed Railway Insulator Surface Defect Detection: Denoising Autoencoder With Multitask Learning
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Deep Architecture for High-Speed Railway Insulator Surface Defect Detection: Denoising Autoencoder With Multitask Learning

机译:高速铁路绝缘子表面缺陷检测的深度架构:具有多任务学习的自动编码器降噪

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摘要

The insulator is an important catenary component that maintains the insulation between the catenary and earth. Due to the long-term impact of railway vehicles and the environment, defects in the insulator are inevitable. Recently, automatic catenary inspection using computer vision and pattern recognition has been introduced to improve the safety of railway operation. However, achieving full automation of insulator defect detection is still very challenging due to the visual complexity of defects and the small number of defective insulators. To overcome these problems, this paper proposes a novel insulator surface defect detection system using a deep convolutional neural network (CNN). The proposed system consists of two stages. First, a Faster R-CNN network is adopted to localize the key catenary components, and the image areas that contain the insulators are obtained. Then, the classification score and anomaly score are determined from a deep multitask neural network that is composed of a deep material classifier and a deep denoising autoencoder. The defect state is determined by analyzing the classification score and anomaly score. Experiments of the catenary insulator defect detection along the Hefei-Fuzhou high-speed railway line indicate that the system can achieve high detection accuracy.
机译:绝缘体是重要的接触网组件,可保持接触网和大地之间的绝缘。由于铁路车辆和环境的长期影响,绝缘子的缺陷是不可避免的。最近,已经引入了使用计算机视觉和模式识别的自动悬链线检查以提高铁路运营的安全性。然而,由于缺陷的视觉复杂性和少量的缺陷绝缘子,实现绝缘子缺陷检测的完全自动化仍然非常具有挑战性。为了克服这些问题,本文提出了一种使用深度卷积神经网络(CNN)的新型绝缘子表面缺陷检测系统。拟议的系统包括两个阶段。首先,采用Faster R-CNN网络对关键悬链线组件进行定位,并获得包含绝缘子的图像区域。然后,从由深度材料分类器和深度降噪自编码器组成的深度多任务神经网络确定分类得分和异常得分。通过分析分类得分和异常得分来确定缺陷状态。合肥—福州高铁线路接触网绝缘子缺陷检测实验表明,该系统可以达到较高的检测精度。

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