Position Encoding Enhanced Feature Mapping for Image Anomaly Detection

Image anomaly detection is an important stage for automatic visual inspection in intelligent manufacturing systems. The wide-ranging anomalies in images, such as various sizes, shapes, and colors, make automatic visual inspection challenging. Previous work on image anomaly detection has achieved significant advancements. However, there are still limitations in terms of detection performance and efficiency. In this paper, a novel Position Encoding enhanced Feature Mapping (PEFM) method is proposed to address the problem of image anomaly detection, detecting the anomalies by mapping a pair of pre-trained features embedded with position encodes. Experiment results show that the proposed PEFM achieves better performance and efficiency than the state-of-the-art methods on the MVTec AD dataset, an AUCROC of 98.30% and an AUCPRO of 95.52%, and achieves the AUCPRO of 94.0% on the MVTec 3D AD dataset.

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Ranked #11 on Anomaly Detection on MVTec AD (Segmentation AUPRO metric)

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Task Dataset Model Metric Name Metric Value Global Rank Benchmark
Anomaly Detection MVTec AD PEFM Segmentation AUROC 98.30 # 24
Segmentation AUPRO 95.52 # 11

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