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Liron Bergman Yedid Hoshen

Abstract
Anomaly detection, finding patterns that substantially deviate from those seen previously, is one of the fundamental problems of artificial intelligence. Recently, classification-based methods were shown to achieve superior results on this task. In this work, we present a unifying view and propose an open-set method, GOAD, to relax current generalization assumptions. Furthermore, we extend the applicability of transformation-based methods to non-image data using random affine transformations. Our method is shown to obtain state-of-the-art accuracy and is applicable to broad data types. The strong performance of our method is extensively validated on multiple datasets from different domains.
Code Repositories
Benchmarks
| Benchmark | Methodology | Metrics |
|---|---|---|
| anomaly-detection-on-anomaly-detection-on | GOAD | Network: ResNet-18 ROC-AUC: 78.8 |
| anomaly-detection-on-anomaly-detection-on-1 | GOAD | Network: ResNet-18 ROC-AUC: 90.5 |
| anomaly-detection-on-anomaly-detection-on-2 | GOAD | Network: ResNet-18 ROC-AUC: 92.8 |
| anomaly-detection-on-one-class-cifar-10 | GOAD | AUROC: 88.2 |
| anomaly-detection-on-uea-time-series-datasets | GOAD | Avg. ROC-AUC: 87.2 |
| anomaly-detection-on-unlabeled-cifar-10-vs | GOAD | AUROC: 89.2 Network: ResNet-18 |
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