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首页> 外文期刊>IEICE transactions on information and systems >A Fast Fabric Defect Detection Framework for Multi-Layer Convolutional Neural Network Based on Histogram Back-Projection
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A Fast Fabric Defect Detection Framework for Multi-Layer Convolutional Neural Network Based on Histogram Back-Projection

机译:基于直方图反投影的多层卷积神经网络快速织物缺陷检测框架

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In this paper we design a fast fabric defect detection framework (Fast-DDF) based on gray histogram back-projection, which adopts end to end multi-convoluted network model to realize defect classification. First, the back-projection image is established through the gray histogram on fabric image, and the closing operation and adaptive threshold segmentation method are performed to screen the impurity information and extract the defect regions. Then, the defect images segmented by the Fast-DDF are marked and normalized into the multi-layer convolutional neural network for training. Finally, in order to solve the problem of difficult adjustment of network model parameters and long training time, some strategies such as batch normalization of samples and network fine tuning are proposed. The experimental results on the TILDA database show that our method can deal with various defect types of textile fabrics. The average detection accuracy with a higher rate of 96.12% in the database of five different defects, and the single image detection speed only needs 0.72s.
机译:本文设计了一种基于灰色直方图反投影的织物快速缺陷检测框架(Fast-DDF),该框架采用端到端的多卷积网络模型来实现缺陷分类。首先,通过灰色直方图在织物图像上建立反投影图像,并执行闭合操作和自适应阈值分割方法以筛选杂质信息并提取缺陷区域。然后,将由Fast-DDF分割的缺陷图像标记并归一化到多层卷积神经网络中进行训练。最后,为解决网络模型参数调整困难,训练时间长的问题,提出了样本批量归一化,网络微调等策略。在TILDA数据库上的实验结果表明,我们的方法可以处理各种织物缺陷类型。在五个不同缺陷的数据库中,平均检测精度较高,达到96.12%,单张图像检测速度仅需0.72s。

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