Unraveling False Positives in Unsupervised Defect Detection Models: A Study on Anomaly-Free Training Datasets
Unsupervised defect detection methods have garnered substantial attention in industrial defect detection owing to their capacity to circumvent complex fault sample collection.However, these models grapple with Roller establishing a robust boundary between normal and abnormal conditions in intricate scenarios, leading to a heightened frequency of fa