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BeanTechAD: A real-world dataset for industrial anomaly detection

Anomaly detection, the technique of identifying abnormal samples using only normal samples, has attracted widespread interest in industry. Existing one-model-per-category methods often struggle with limited generalization capabilities due to their focus on a single category, and can fail when encountering variations in product. Recent feature reconstruction methods, as representatives in one-model–all-categories schemes, face challenges including reconstructing anomalous samples and blurry reconstructions.

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Cite this as

Jiawei Zhan, Jinxiang Lai, Bin-Bin Gao, Jun Liu, Xiaochen Chen, Chengjie Wang (2024). Dataset: BeanTechAD: A real-world dataset for industrial anomaly detection. https://doi.org/10.57702/63j1i9zo

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Additional Info

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Created December 3, 2024
Last update December 3, 2024
Author Jiawei Zhan
More Authors
Jinxiang Lai
Bin-Bin Gao
Jun Liu
Xiaochen Chen
Chengjie Wang
Homepage https://www.beantechad.com/