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An Automatic Defect Detection Method for Catenary Bracing Wire Components Using Deep Convolutional Neural Networks and Image Processing

机译:深度卷积神经网络和图像处理的悬链支撑线组件缺陷自动检测方法

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Bracing wire components, including messenger wire bases, bracing wire hooks, and bracing wires, are essential to make certain the stability of high-speed catenary support devices. The core process of the proposed detection method includes two stages, the first is that brace wire components are localized first, and the second stage is that the defects of the components are detected. In this article, a new defect detection method for catenary bracing wire components is proposed. First, Faster R-CNN, one of the advanced deep convolutional neural networks, is introduced to localize messenger wire bases and bracing wire hooks, accurately. And then, the regions of bracing wires are extracted according to the structure information among bracing wire components and bracing wires are localized by the Hough Transformation. Next, the installation defects of messenger wire bases are detected with image processing methods, and the looseness defects of bracing wires are detected by combining with the results detected by the Hough Transform. Experiment results prove that the proposed scheme can localize and identify the defects of bracing wire components, accurately.
机译:支撑线组件,包括吊索线座,支撑线钩和支撑线,对于确保高速接触网支撑设备的稳定性至关重要。所提出的检测方法的核心过程包括两个阶段,第一阶段是将支撑线组件首先定位,第二阶段是检测组件的缺陷。本文提出了一种新的悬链支撑线组件缺陷检测方法。首先,引入了Faster R-CNN,它是先进的深层卷积神经网络之一,可以精确地定位信使线的基部和支撑线的钩子。然后,根据支撑线组件中的结构信息提取支撑线的区域,并通过霍夫变换对支撑线进行定位。接下来,通过图像处理方法来检测斜线基座的安装缺陷,并结合霍夫变换检测到的结果来检测拉紧线的松动缺陷。实验结果表明,该方案能够准确定位和识别支撑线组件的缺陷。

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