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Anomaly detection with convolutional neural networks for industrial surface inspection

机译:与卷积神经网络进行工业表面检查的异常检测

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Over the recent years Convolutional Neural Networks (CNN) have become the primary choice for many image-processing problems. Regarding industrial applications, they are hence especially interesting for automated optical quality inspection. However, with well-optimized processes is it often not possible to obtain a sufficiently large set of defective samples for CNN-based classification and the training objective shifts from defect classification to anomaly detection. Here we approach this problem with deep metric learning using triplet networks. Our evaluation shows promising results that even translate to novel surface/defect classes, which were not part of the training data.
机译:在近年来,卷积神经网络(CNN)已成为许多图像处理问题的主要选择。关于工业应用,他们因此对自动化学质量检验特别有趣。然而,具有良好优化的方法是不可能获得足够大的用于CNN的分类的缺陷样本,并且从缺陷分类到异常检测的训练目标偏移。在这里,我们使用Triplet Networks进行深度度量学习来解决这个问题。我们的评价显示了有希望的结果,甚至转化为新的表面/缺陷类,这些缺陷类不是培训数据的一部分。

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