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On-line Bolt-loosening Detection Method of Key Components of Running Trains using Binocular Vision

机译:使用双筒望远镜的运行列车关键部件的在线螺栓松动检测方法

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Bolt loosening, as one of hidden faults, affects the running quality of trains and even causes serious safety accidents. However, the developed fault detection approaches based on two-dimensional images cannot detect bolt-loosening due to lack of depth information. Therefore, we propose a novel online bolt-loosening detection method using binocular vision. Firstly, the target detection model based on convolutional neural network (CNN) is used to locate the target regions. And then, stereo matching and three-dimensional reconstruction are performed to detect bolt-loosening faults. The experimental results show that the looseness of multiple bolts can be characterized by the method simultaneously. The measurement repeatability and precision are less than 0.03mm, 0.09mm respectively, and its relative error is controlled within 1.09%.
机译:螺栓松开,作为隐藏的故障之一,影响火车的运行质量,甚至会导致严重的安全事故。然而,基于二维图像的发达的故障检测方法由于缺乏深度信息而无法检测到螺栓松动。因此,我们提出了一种使用双目视觉的新型在线螺栓松动检测方法。首先,基于卷积神经网络(CNN)的目标检测模型用于定位目标区域。然后,执行立体匹配和三维重建以检测螺栓松动断层。实验结果表明,多个螺栓的松动可以同时表征该方法。测量重复性和精度分别小于0.03mm,0.09mm,其相对误差控制在1.09%之内。

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