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Defect Detection and Classification of Galvanized Stamping Parts Based on Fully Convolution Neural Network

机译:基于全卷积神经网络的镀锌冲压件的缺陷检测和分类

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In this paper, a new convolution neural network method is proposed for the inspection and classification of galvanized stamping parts. Firstly, all workpieces are divided into normal and defective by image processing, and then the defective workpieces extracted from the region of interest (ROI) area are input to the trained fully convolutional networks (FCN). The network utilizes an end-to-end and pixel-to-pixel training convolution network that is currently the most advanced technology in semantic segmentation, predicts result of each pixel. Secondly, we mark the different pixel values of the workpiece, defect and background for the training image, and use the pixel value and the number of pixels to realize the recognition of the defects of the output picture. Finally, the defect area's threshold depended on the needs of the project is set to achieve the specific classification of the workpiece. The experiment results show that the proposed method can successfully achieve defect detection and classification of galvanized stamping parts under ordinary camera and illumination conditions, and its accuracy can reach 99.6%. Moreover, it overcomes the problem of complex image preprocessing and difficult feature extraction and performs better adaptability.
机译:本文提出了一种新的卷积神经网络方法,用于检查和分类镀锌冲压件。首先,所有工件被图像处理分为正常和有缺陷,然后从感兴趣区域(ROI)区域提取的缺陷工件被输入到训练的完全卷积网络(FCN)。网络利用端到端和像素到像素训练卷积网络,目前是语义分割中最先进的技术,预测每个像素的结果。其次,我们标记训练图像的工件,缺陷和背景的不同像素值,并使用像素值和像素的数量来实现对输出图像的缺陷的识别。最后,将缺陷区域依赖于项目的需要,以实现工件的具体分类。实验结果表明,该方法可以在普通相机和照明条件下成功实现镀锌冲压部件的缺陷检测和分类,其精度可达99.6%。此外,它克服了复杂图像预处理和困难特征提取的问题,并执行更好的适应性。

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