基于深度金字塔特征的异常检测的斑块密度估计

XiaoYan Wang, Daping Li, Wanghui Bu
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摘要

在现代制造业中,异常检测和定位是产品质量控制的关键。一个特别的挑战是,异常示例的收集和标记通常在实现之前是不可行的。为了解决这一问题,本文提出了一种新的两阶段框架,仅用正常数据构建异常估计器。具体来说,无监督深度表示首先是通过改进的SimSiam学习的,其中实现了对单类学习的适应。然后采用非参数方法对训练数据在学习到的表示上的分布进行建模,作为单类分类器进行异常检测。此外,我们利用卷积神经网络的不同层次特征对分布进行建模,实现图像级和像素级检测。在MVTec异常检测数据集上进行了实验。图像级检测的AUROC得分为92.6%,像素级检测的AUROC得分为95.4%,证明了该方法的有效性。
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Patch Density Estimation for Anomaly Detection with Deep Pyramid Features
Anomaly detection and localization are critical in modern manufacturing for the quality control of products. A particular challenge is that the collecting and labeling of anomaly examples are usually infeasible before implementation. To tackle the problem, a novel two-stage framework is proposed in this paper to build anomaly estimators with normal data only. Specifically, unsupervised deep representations are learned first by a modified SimSiam where an adaptation for one-class learning is implemented. Then the non-parametric method is adopted to model the distribution of training data on the learned representations as the one-class classifier to detect anomaly. Moreover, we model the distribution with different hierarchy level’s features of the convolutional neural network to achieve both image-level and pixel-level detections. Experiments are conducted on MVTec anomaly detection dataset. Competitive results of 92.6% AUROC score for image-level detection and 95.4% for pixel-level detection are obtained to demonstrate the effectiveness of the proposed method.
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