Abstract

Deep autoencoder has been extensively used for anomaly detection. Training on the normal data, the autoencoder is expected to produce higher reconstruction error for the abnormal inputs than the normal ones, which is adopted as a criterion for identifying anomalies. However, this assumption does not always hold in practice. It has been observed that sometimes the autoencoder "generalizes" so well that it can also reconstruct anomalies well, leading to the miss detection of anomalies. To mitigate this drawback for autoencoder based anomaly detector, we propose to augment the autoencoder with a memory module and develop an improved autoencoder called memory-augmented autoencoder, i.e. MemAE. Given an input, MemAE firstly obtains the encoding from the encoder and then uses it as a query to retrieve the most relevant memory items for reconstruction. At the training stage, the memory contents are updated and are encouraged to represent the prototypical elements of the normal data. At the test stage, the learned memory will be fixed, and the reconstruction is obtained from a few selected memory records of the normal data. The reconstruction will thus tend to be close to a normal sample. Thus the reconstructed errors on anomalies will be strengthened for anomaly detection. MemAE is free of assumptions on the data type and thus general to be applied to different tasks. Experiments on various datasets prove the excellent generalization and high effectiveness of the proposed MemAE.

Keywords

AutoencoderAnomaly detectionComputer scienceArtificial intelligencePattern recognition (psychology)NormalityEncoding (memory)Anomaly (physics)GeneralizationEncoderDeep learningMathematicsStatistics

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Publication Info

Year
2019
Type
article
Pages
1705-1714
Citations
1528
Access
Closed

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Cite This

Dong Gong, Lingqiao Liu, Vuong Le et al. (2019). Memorizing Normality to Detect Anomaly: Memory-Augmented Deep Autoencoder for Unsupervised Anomaly Detection. 2019 IEEE/CVF International Conference on Computer Vision (ICCV) , 1705-1714. https://doi.org/10.1109/iccv.2019.00179

Identifiers

DOI
10.1109/iccv.2019.00179
arXiv
1904.02639

Data Quality

Data completeness: 84%