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Exploring Deep Anomaly Detection Methods Based on Capsule Net

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In this paper, we develop and explore deep anomaly detection techniques based on the capsule network (CapsNet) for image data. Being able to encoding intrinsic spatial relationship between parts and a whole, CapsNet has been applied as both a classifier and deep autoencoder. This inspires us to design a prediction-probability-based and a reconstruction-error-based normality score functions for evaluating the "outlierness" of unseen images. Our results on three datasets demonstrate that the prediction-probability-based method performs consistently well, while the reconstruction-error-based approach is relatively sensitive to the similarity between labeled and unlabeled images. Furthermore, both of the CapsNet-based methods outperform the principled benchmark methods in many cases.

Xiaoyan Li, Iluju Kiringa, Tet Yeap, Xiaodan Zhu, Yifeng Li• 2019

Related benchmarks

TaskDatasetResultRank
Anomaly DetectionCIFAR-10
AUC61.2
120
Anomaly DetectionMNIST
AUC97.7
87
Anomaly DetectionMNIST one-class classification
AUROC0.871
47
Anomaly DetectionFashion MNIST
Avg AUC87.6
40
Anomaly DetectionCIFAR-10-C
Average AUROC53.1
19
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