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ATAC-NET: ZOOMED VIEW WORKS BETTER FOR ANOMALY DETECTION

Citation Author(s):
Shaurya Gupta, Neil Gautam, Anurag Malyala
Submitted by:
Shaurya Gupta
Last updated:
6 February 2024 - 2:52pm
Document Type:
Supplementary material
Document Year:
2024
Presenters:
Shaurya Gupta
Paper Code:
2078
Categories:
 

Supplementary material for the paper: ATAC-NET: ZOOMED VIEW WORKS BETTER FOR ANOMALY DETECTION

Abstract: The application of deep learning in visual anomaly detection has gained widespread popularity due to its potential use in quality control and manufacturing. Current standard methods are Unsupervised, where a clean dataset is utilised to detect deviations and flag anomalies during testing. However, incorporating a few samples when the type of anomalies is known beforehand can significantly enhance performance. Thus, we propose ATAC-Net, a framework that trains to detect anomalies from a minimal set of known prior anomalies. Furthermore, we introduce attention-guided cropping, which provides a closer view of suspect regions during the training phase. Our framework is a reliable and easy-to-understand system for detecting anomalies, and we substantiate its superiority to some of the current state-of-the-art techniques in a comparable setting.

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Supplementary material for the paper containing ablation study and training experiments. Please open the above link to view the same