自编码
粒度
异常检测
计算机科学
鉴别器
人工智能
模式识别(心理学)
深度学习
块(置换群论)
概化理论
无监督学习
水准点(测量)
代表(政治)
异常(物理)
迭代重建
特征学习
人工神经网络
机器学习
数学
电信
统计
物理
几何学
大地测量学
凝聚态物理
探测器
政治
政治学
法学
地理
操作系统
作者
Jinlei Hou,Yingying Zhang,Qiaoyong Zhong,Dong Xie,Shiliang Pu,Hong Zhou
标识
DOI:10.1109/iccv48922.2021.00867
摘要
Reconstruction-based methods play an important role in unsupervised anomaly detection in images. Ideally, we expect a perfect reconstruction for normal samples and poor reconstruction for abnormal samples. Since the generalizability of deep neural networks is difficult to control, existing models such as autoencoder do not work well. In this work, we interpret the reconstruction of an image as a divide-and-assemble procedure. Surprisingly, by varying the granularity of division on feature maps, we are able to modulate the reconstruction capability of the model for both normal and abnormal samples. That is, finer granularity leads to better reconstruction, while coarser granularity leads to poorer reconstruction. With proper granularity, the gap between the reconstruction error of normal and abnormal samples can be maximized. The divide-and-assemble framework is implemented by embedding a novel multi-scale block-wise memory module into an autoencoder network. Besides, we introduce adversarial learning and explore the semantic latent representation of the discriminator, which improves the detection of subtle anomaly. We achieve state-of-the-art performance on the challenging MVTec AD dataset. Remarkably, we improve the vanilla autoencoder model by 10.1% in terms of the AUROC score.
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