JOURNAL ARTICLE

Divide-and-Assemble: Learning Block-wise Memory for Unsupervised Anomaly Detection

Jinlei HouYingying ZhangQiaoyong ZhongDi XieShiliang PuHong Zhou

Year: 2021 Journal:   2021 IEEE/CVF International Conference on Computer Vision (ICCV) Pages: 8771-8780

Abstract

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.

Keywords:
Autoencoder Anomaly detection Granularity Computer science Artificial intelligence Discriminator Pattern recognition (psychology) Unsupervised learning Deep learning Block (permutation group theory) Generalizability theory Benchmark (surveying) Anomaly (physics) Representation (politics) Feature learning Iterative reconstruction Artificial neural network Machine learning Mathematics

Metrics

163
Cited By
15.20
FWCI (Field Weighted Citation Impact)
78
Refs
0.99
Citation Normalized Percentile
Is in top 1%
Is in top 10%

Citation History

Topics

Anomaly Detection Techniques and Applications
Physical Sciences →  Computer Science →  Artificial Intelligence
Data-Driven Disease Surveillance
Health Sciences →  Medicine →  Epidemiology
Network Security and Intrusion Detection
Physical Sciences →  Computer Science →  Computer Networks and Communications

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