2022
DOI: 10.1088/1742-6596/2166/1/012062
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Improved Anomaly Detection Based on Image Reconstruction and Global Template Features for Industrial Products

Abstract: Anomaly detection in industry applications is a challenging problem when negative (defective) samples are unavailable, especially in the case where there are missing parts or foreign objects occupied a relatively large region. Conventional reconstruction-based approaches cannot guarantee the restored image being a normal one, leading to poor segmentation results. In this work, we propose an unsupervised anomaly detection approach to tackle the problem of large-area anomaly detection by incorporating global tem… Show more

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“…Tang et al [25] pointed out that anomaly detection in industry applications is a challenging matter when negative (defective) samples are unavailable, especially in case with missing parts or foreign objects occupied a large area, however, the ordinary reconstruction-based methods cannot make sure the restored image being a normal one, thus leading to poor segmentation results. The authors proposed an unsupervised anomaly detection method to to cope with large-area anomaly detection by incorporating global template features into an Auto-Encoder like reconstruction model.…”
Section: Introductionmentioning
confidence: 99%
“…Tang et al [25] pointed out that anomaly detection in industry applications is a challenging matter when negative (defective) samples are unavailable, especially in case with missing parts or foreign objects occupied a large area, however, the ordinary reconstruction-based methods cannot make sure the restored image being a normal one, thus leading to poor segmentation results. The authors proposed an unsupervised anomaly detection method to to cope with large-area anomaly detection by incorporating global template features into an Auto-Encoder like reconstruction model.…”
Section: Introductionmentioning
confidence: 99%