Deep Anomaly Detection by Residual Adaptation
Deecke, Lucas, Ruff, Lukas, Vandermeulen, Robert A., Bilen, Hakan
Deep anomaly detection is a difficult task since, in high dimensions, it is hard to completely characterize a notion of "differentness" when given only examples of normality. In this paper we propose a novel approach to deep anomaly detection based on augmenting large pretrained networks with residual corrections that adjusts them to the task of anomaly detection. Our method gives rise to a highly parameter-efficient learning mechanism, enhances disentanglement of representations in the pretrained model, and outperforms all existing anomaly detection methods including other baselines utilizing pretrained networks. On the CIFAR-10 one-versus-rest benchmark, for example, our technique raises the state of the art from 96.1 to 99.0 mean AUC.
Oct-5-2020
- Country:
- North America
- Canada > Ontario
- Toronto (0.14)
- United States (0.14)
- Canada > Ontario
- North America
- Genre:
- Research Report > New Finding (0.68)
- Technology: