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SuperSimpleNet: Unifying Unsupervised and Supervised Learning for Fast and Reliable Surface Defect Detection
Blaž Rolih Matic Fučka Danijel Skočaj

Abstract
The aim of surface defect detection is to identify and localise abnormal regions on the surfaces of captured objects, a task that's increasingly demanded across various industries. Current approaches frequently fail to fulfil the extensive demands of these industries, which encompass high performance, consistency, and fast operation, along with the capacity to leverage the entirety of the available training data. Addressing these gaps, we introduce SuperSimpleNet, an innovative discriminative model that evolved from SimpleNet. This advanced model significantly enhances its predecessor's training consistency, inference time, as well as detection performance. SuperSimpleNet operates in an unsupervised manner using only normal training images but also benefits from labelled abnormal training images when they are available. SuperSimpleNet achieves state-of-the-art results in both the supervised and the unsupervised settings, as demonstrated by experiments across four challenging benchmark datasets. Code: https://github.com/blaz-r/SuperSimpleNet .
Code Repositories
Benchmarks
| Benchmark | Methodology | Metrics |
|---|---|---|
| anomaly-detection-on-mvtec-ad | SuperSimpleNet | Detection AUROC: 98.4 FPS: 107 (Tesla V100S) Segmentation AUPRO: 91.1 |
| anomaly-detection-on-visa | SuperSimpleNet | Detection AUROC: 93.4 Segmentation AUPRO: 87.4 Segmentation AUPRO (until 30% FPR): 87.4 |
| defect-detection-on-kolektorsdd2 | SuperSimpleNet | Average Precision: 97.4 |
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