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Unsupervised anomaly detection via dual transformation‐aware embeddings
2022
IET Image Processing
Unsupervised anomaly detection refers to the discovery of unconventional images that are globally or locally different from the training set. Recently, reconstruction-based anomaly detection methods have made great progress. However, most of the existing methods take reconstructing the original image as the goal of latent feature learning. Due to lack of effective semantic guidance, latent features have intrinsic characteristics which retain redundant details of spatial structure. Such
doi:10.1049/ipr2.12438
fatcat:hgobh4g4u5aqvohlgzcvgcze2u