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PyramidFlow: High-Resolution Defect Contrastive Localization using Pyramid Normalizing Flow

About

During industrial processing, unforeseen defects may arise in products due to uncontrollable factors. Although unsupervised methods have been successful in defect localization, the usual use of pre-trained models results in low-resolution outputs, which damages visual performance. To address this issue, we propose PyramidFlow, the first fully normalizing flow method without pre-trained models that enables high-resolution defect localization. Specifically, we propose a latent template-based defect contrastive localization paradigm to reduce intra-class variance, as the pre-trained models do. In addition, PyramidFlow utilizes pyramid-like normalizing flows for multi-scale fusing and volume normalization to help generalization. Our comprehensive studies on MVTecAD demonstrate the proposed method outperforms the comparable algorithms that do not use external priors, even achieving state-of-the-art performance in more challenging BTAD scenarios.

Jiarui Lei, Xiaobo Hu, Yue Wang, Dong Liu• 2023

Related benchmarks

TaskDatasetResultRank
Anomaly DetectionVisA--
261
Anomaly DetectionMPDD--
62
Anomaly SegmentationBTAD
Average Pixel AUROC97.7
48
Anomaly DetectionBTAD
Average Image-level AUROC95.8
45
Image Anomaly DetectionMVTec AD
Carpet I-AUROC56.7
32
Anomaly DetectionBTAD (test)--
30
Pixel-level Anomaly DetectionMVTec AD--
27
Anomaly LocalizationMPDD
Average P-AUC90.2
16
Belt Crack DetectionBeltCrack14ks
mAP5060.85
14
Belt Crack DetectionBeltCrack 9kd
mAP5023.86
14
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