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Niv Cohen Yedid Hoshen

Abstract
Nearest neighbor (kNN) methods utilizing deep pre-trained features exhibit very strong anomaly detection performance when applied to entire images. A limitation of kNN methods is the lack of segmentation map describing where the anomaly lies inside the image. In this work we present a novel anomaly segmentation approach based on alignment between an anomalous image and a constant number of the similar normal images. Our method, Semantic Pyramid Anomaly Detection (SPADE) uses correspondences based on a multi-resolution feature pyramid. SPADE is shown to achieve state-of-the-art performance on unsupervised anomaly detection and localization while requiring virtually no training time.
Code Repositories
Benchmarks
| Benchmark | Methodology | Metrics |
|---|---|---|
| anomaly-classification-on-goodsad | SPADE | AUPR: 68.7 AUROC: 64.1 |
| anomaly-detection-on-mvtec-ad | SPADE | Detection AUROC: 85.5 FPS: 1.5 Segmentation AUROC: 96.5 |
| anomaly-detection-on-mvtec-loco-ad | SPADE | Avg. Detection AUROC: 68.9 Detection AUROC (only logical): 70.9 Detection AUROC (only structural): 66.8 Segmentation AU-sPRO (until FPR 5%): 45.1 |
| anomaly-detection-on-visa | SPADE | Detection AUROC: 82.1 Segmentation AUPRO (until 30% FPR): 65.9 |
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