Dai, WentingWentingDaiErdt, MariusMariusErdtSourin, AlexeiAlexeiSourin2022-03-152022-03-152021https://publica.fraunhofer.de/handle/publica/41307910.1109/CW52790.2021.00023Anomaly detection is a challenging task in data analysis, especially when it comes to unsupervised pixel-level segmentation of anomalies in images. In this paper, we present a novel multi-stage defect repaired image resynthesis framework for the detection and segmentation of anomalies in images. In contrast to the existing reconstruction-based approaches, our reconstruction is free from artifacts caused by defective regions so that the defects can be identified from the residual map between input samples and their resynthesized defect-eliminated outputs. Our method outperforms the state-of-art benchmarks in most categories using the publicly available MVTec dataset. Besides, the method also demonstrates an excellent capability of repairing defects in abnormal samples.enAnomaly Detection and Segmentation Based on Defect Repaired Image Resynthesisconference paper