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SotA/Methodology/Anomaly Detection/AeBAD-S

Anomaly Detection on AeBAD-S

Metric: Segmentation AUPRO (higher is better)

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#Model↕Segmentation AUPRO▼AugmentationsPaperDate↕Code
1MSFR90.4No--Code
2MMR89.1NoIndustrial Anomaly Detection with Domain Shift: ...2023-04-05Code
3PatchCore87.8NoTowards Total Recall in Industrial Anomaly Detec...2021-06-15Code
4ReverseDistillation85.6NoAnomaly Detection via Reverse Distillation from ...2022-01-26Code
5InTra74.7NoInpainting Transformer for Anomaly Detection2021-04-28Code
6DRAEM63.6No--Code
7RIAD58.2No--Code
8NSA45.9NoNatural Synthetic Anomalies for Self-Supervised ...2021-09-30Code