Tongkun Liu, Bing Li, Xiao Du, Bingke Jiang, Leqi Geng, Feiyang Wang, Zhuo Zhao
Image reconstruction-based anomaly detection models are widely explored in industrial visual inspection. However, existing models usually suffer from the trade-off between normal reconstruction fidelity and abnormal reconstruction distinguishability, which damages the performance. In this paper, we find that the above trade-off can be better mitigated by leveraging the distinct frequency biases between normal and abnormal reconstruction errors. To this end, we propose Frequency-aware Image Restoration (FAIR), a novel self-supervised image restoration task that restores images from their high-frequency components. It enables precise reconstruction of normal patterns while mitigating unfavorable generalization to anomalies. Using only a simple vanilla UNet, FAIR achieves state-of-the-art performance with higher efficiency on various defect detection datasets. Code: https://github.com/liutongkun/FAIR.
| Task | Dataset | Metric | Value | Model |
|---|---|---|---|---|
| Anomaly Detection | MVTec AD | Detection AUROC | 98.6 | FAIR |
| Anomaly Detection | MVTec AD | Segmentation AUPRO | 94 | FAIR |
| Anomaly Detection | MVTec AD | Segmentation AUROC | 98.2 | FAIR |
| Anomaly Detection | VisA | Detection AUROC | 97.1 | FAIRnoDTD |
| Anomaly Detection | VisA | Segmentation AUPRO (until 30% FPR) | 91.2 | FAIRnoDTD |
| Anomaly Detection | VisA | Segmentation AUROC | 98.7 | FAIRnoDTD |