Collaborative Discrepancy Optimization for Reliable Image Anomaly Localization

Most unsupervised image anomaly localization methods suffer from overgeneralization because of the high generalization abilities of convolutional neural networks, leading to unreliable predictions. To mitigate the overgeneralization, this study proposes to collaboratively optimize normal and abnormal feature distributions with the assistance of synthetic anomalies, namely collaborative discrepancy optimization (CDO). CDO introduces a margin optimization module and an overlap optimization module to optimize the two key factors determining the localization performance, i.e., the margin and the overlap between the discrepancy distributions (DDs) of normal and abnormal samples. With CDO, a large margin and a small overlap between normal and abnormal DDs are obtained, and the prediction reliability is boosted. Experiments on MVTec2D and MVTec3D show that CDO effectively mitigates the overgeneralization and achieves great anomaly localization performance with real-time computation efficiency. A real-world automotive plastic parts inspection application further demonstrates the capability of the proposed CDO. Code is available on https://github.com/caoyunkang/CDO.

PDF Abstract IEEE Transactions 2023 PDF

Results from the Paper


 Ranked #1 on Anomaly Detection on MVTEC 3D-AD (using extra training data)

     Get a GitHub badge
Task Dataset Model Metric Name Metric Value Global Rank Uses Extra
Training Data
Benchmark
Anomaly Detection MVTEC 3D-AD CDO Segmentation AUPRO 93.75 # 1
Anomaly Detection MVTec AD CDO Segmentation AUROC 98.70 # 13
Segmentation AUPRO 96.50 # 7
FPS 79.6 (exclude data inputting time), 18.7 (contain data inputting time) # 9

Methods


No methods listed for this paper. Add relevant methods here