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Convolutional Networks for Voting-based Anomaly Classification in Metal Surface Inspection

机译:金属表面检测中基于投票的异常分类的卷积网络

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Automated Visual Inspection (AVI) systems for metal surface inspection is increasingly used in industries to aid human visual inspectors for classification of possible anomalies. For classification, the challenge lies in having a small and specific dataset that may easily result in over-fitting. As a solution, we propose to use deep Convolutional Neural Networks (ConvNets) learnt from the large ImageNet dataset [9] for image representations via transfer learning. Since a small dataset cannot be used to fine-tune a ConvNet due to overfitting, we also propose a Majority Voting Mechanism (MVM), which fuses the features extracted from the last three layers of ConvNets using Support Vector Machine (SVM) classifiers. This classification framework is effective where no prior knowledge of the best performing ConvNet layers is needed. This also allows flexibility in the choice of ConvNet used for feature extraction. The proposed method not only outperforms state-of-the-art traditional hand-crafted features in terms of classification but also obtains good results compared to other deep ConvNet features extracted from a pre-selected best layer on several anomaly and texture datasets.
机译:用于金属表面检查的自动视觉检查(AVI)系统在行业中越来越多地用于帮助人类视觉检查员进行可能的异常分类。对于分类,挑战在于拥有一个小型和特定的数据集,这些数据集可能很容易导致过度拟合。作为解决方案,我们建议使用从大型想象形数据集[9]中学到的深度卷积神经网络(Convnets)以通过传输学习来学习图像表示。由于小型数据集不能用于微调由于过度装备而微调CONDNET,因此我们还提出了大多数投票机制(MVM),其融合了使用支持向量机(SVM)分类器从最后三层扫描器中提取的功能。此分类框架是有效的,无需先前需要表现最佳执行的ConvNet层。这也允许灵活地选择用于特征提取的GromNet。所提出的方法不仅在分类方面优于最先进的传统手工制作功能,而且与在几个异常和纹理数据集中提取的预先选择的最佳层中提取的其他深度ConvNET功能相比,也获得了良好的结果。

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