Publication | Open Access
Unsupervised Anomaly Detection Using Style Distillation
32
Citations
24
References
2020
Year
Data AugmentationAnomaly DetectionMachine LearningData ScienceData MiningPattern RecognitionImage AnalysisEngineeringOutlier DetectionKnowledge DiscoveryAutoencodersNovelty DetectionInformation ForensicsMild DistortionsComputer ScienceAnomaly ClassificationDeep LearningStyle Translation
Autoencoders (AEs) have been widely used for unsupervised anomaly detection. They learn from normal samples such that they produce high reconstruction errors for anomalous samples. However, AEs can exhibit the over-detection issue because they imperfectly reconstruct not only anomalous samples but also normal ones. To address this issue, we introduce an outlier-exposed style distillation network (OE-SDN) that mimics the mild distortions caused by an AE, which are termed as style translation. We use the difference between the outputs of the OE-SDN and AE as an alternative anomaly score. Experiments on anomaly classification and segmentation tasks show that the performance of our method is superior to existing methods.
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