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Potential Fault Region Detection in TFDS Images Based on Convolutional Neural Network

机译:基于卷积神经网络的TFDS图像中的潜在故障区域检测

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In recent years, more than 300 sets of Trouble of Running Freight Train Detection System (TFDS) have been installed on railway to monitor the safety of running freight trains in China. However, TFDS is simply responsible for capturing, transmitting, and storing images, and fails to recognize faults automatically due to some difficulties such as such as the diversity and complexity of faults and some low quality images. To improve the performance of automatic fault recognition, it is of great importance to locate the potential fault areas. In this paper, we first introduce a convolutional neural network (CNN) model to TFDS and propose a potential fault region detection system (PFRDS) for simultaneously detecting four typical types of potential fault regions (PFRs). The experimental results show that this system has a higher performance of image detection to PFRs in TFDS. An average detection recall of 98.95% and precision of 100% are obtained, demonstrating the high detection ability and robustness against various poor imaging situations.
机译:近年来,在铁路上安装了超过300套运行货运检测系统(TFDS)的麻烦,以监测中国运行货车的安全。然而,TFDS简直负责捕获,发送和存储图像,并且由于诸如故障的分集和复杂性等一些困难以及一些低质量图像而无法自动识别故障。为了提高自动故障识别的性能,定位潜在断层区域具有重要意义。在本文中,我们首先将卷积神经网络(CNN)模型引入TFD,提出了一种潜在的故障区域检测系统(PFRD),用于同时检测四种典型类型的潜在故障区域(PFRS)。实验结果表明,该系统对TFDS中的PFR具有更高的图像检测性能。获得98.95%的平均检测召回,并获得100%的精度,证明对各种差的成像情况的高检测能力和鲁棒性。

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