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Abstract

Deep learning methods are typically trained in a supervised with annotated data for analysing medical images with the motivation of detecting pathologies. In the absence of manually annotated training data, unsupervised anomaly detection can be one of the possible solutions. This work proposes StRegA, an unsupervised anomaly detection pipeline based on a compact ceVAE and shows its applicability in detecting anomalies such as tumours in brain MRIs. The proposed pipeline achieved a Dice score of 0.642±0.101 while detecting tumours in T2w images of the BraTS dataset and 0.859±0.112 while detecting artificially induced anomalies.
11/11/2021, 02:16
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11/11/2021, 02:16
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11/11/2021, 02:16
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Conference Paper
The unsupervised anomaly localization task is challenging due to the absence of abnormal samples during the training phase, dealing with multiple exceptions for the same object, and detecting unseen anomalies. In order to address these problems, we propose a novel approach that consists of a separate teacher-student feature imitation network and a multi-scale processing strategy that combines an image and feature pyramid. Additionally, we design a side task to optimize weight for each student network block through gradient descent algorithm. Compared with these anomaly localization methods based on feature modeling, experimental results demonstrate that our proposed method has a better performance on MVTec dataset which is a real industrial product detection dataset. Furthermore, our multi-scale strategy effectively improves the performance compared to the benchmark method.
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