Abstract

Anomaly detection is commonly pursued as a one-class classification problem, where models can only learn from normal training samples, while being evaluated on both normal and abnormal test samples. Among the successful approaches for anomaly detection, a distinguished category of methods relies on predicting masked information (e.g. patches, future frames, etc.) and leveraging the reconstruction error with respect to the masked information as an abnormality score. Different from related methods, we propose to integrate the reconstruction-based functionality into a novel self-supervised predictive architectural building block. The proposed self-supervised block is generic and can easily be incorporated into…

Citation impact

265
total citations
FWCI
26.30
Percentile
100%
References
104
Citations per year

Authors

7

Topics & keywords

Keywords
  • Computer science
  • Anomaly detection
  • Block (permutation group theory)
  • Artificial intelligence
  • Pattern recognition (psychology)
  • Generality
  • Anomaly (physics)
  • Field (mathematics)
UN Sustainable Development Goals
  • Sustainable cities and communities
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