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Periodic Surface Defect Detection in Steel Plates Based on Deep Learning

机译:基于深度学习的钢板周期性表面缺陷检测

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摘要

It is difficult to detect roll marks on hot-rolled steel plates as they have a low contrast in the images. A periodical defect detection method based on a convolutional neural network (CNN) and long short-term memory (LSTM) is proposed to detect periodic defects, such as roll marks, according to the strong time-sequenced characteristics of such defects. Firstly, the features of the defect image are extracted through a CNN network, and then the extracted feature vectors are inputted into an LSTM network for defect recognition. The experiment shows that the detection rate of this method is 81.9%, which is 10.2% higher than a CNN method. In order to make more accurate use of the previous information, the method is improved with the attention mechanism. The improved method specifies the importance of inputted information at each previous moment, and gives the quantitative weight according to the importance. The experiment shows that the detection rate of the improved method is increased to 86.2%.
机译:在热轧钢板上难以检测卷标记,因为它们在图像中具有低对比度。根据这种缺陷的强时序特性,提出了一种基于卷积神经网络(CNN)和长短期存储器(LSTM)的周期性缺陷检测方法以检测周期性缺陷,例如卷标记。首先,通过CNN网络提取缺陷图像的特征,然后将提取的特征向量输入到LSTM网络中以进行缺陷识别。实验表明,该方法的检出率为81.9%,比CNN方法高10.2%。为了更准确地使用先前的信息,该方法随着注意机制得到改善。改进的方法规定了每个前一刻输入信息的重要性,并根据重要性提供定量重量。实验表明,改进方法的检出率增加到86.2%。

著录项

  • 作者

    Yang Liu; Ke Xu; Jinwu Xu;

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  • 年度 2019
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  • 原文格式 PDF
  • 正文语种 eng
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