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Patch SVDD: Patch-Level SVDD for Anomaly Detection and Segmentation

机译:Patch SVDD:用于异常检测和分割的补丁级SVDD

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In this paper, we address the problem of image anomaly detection and segmentation. Anomaly detection involves making a binary decision as to whether an input image contains an anomaly, and anomaly segmentation aims to locate the anomaly on the pixel level. Support vector data description (SVDD) is a long-standing algorithm used for an anomaly detection, and we extend its deep learning variant to the patch-based method using self-supervised learning. This extension enables anomaly segmentation and improves detection performance. As a result, anomaly detection and segmentation performances measured in AUROC on MVTec AD dataset increased by 9.8% and 7.0%, respectively, compared to the previous state-of-the-art methods. Our results indicate the efficacy of the proposed method and its potential for industrial application. Detailed analysis of the proposed method offers insights regarding its behavior, and the code is available online.
机译:在本文中,我们解决了图像异常检测和分割问题。 异常检测涉及为输入图像是否包含异常的二进制决定,并且异常分割旨在定位像素级别的异常。 支持向量数据描述(SVDD)是一种用于异常检测的长期算法,我们将其深入学习变体扩展到使用自我监督学习的基于补丁的方法。 此扩展可实现异常分段并提高检测性能。 结果,与先前的最先进的方法相比,在MVTEC AD数据集中,在MVTEC AD数据集中测量的异常检测和分割性能分别增加了9.8%和7.0%。 我们的结果表明了拟议方法及其工业应用潜力的功效。 提出的方法的详细分析为其行为提供了深入,并且代码可在线获得。

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