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Unsupervised Anomaly Detection for X-Ray Images
[article]
2020
arXiv
pre-print
Obtaining labels for medical (image) data requires scarce and expensive experts. Moreover, due to ambiguous symptoms, single images rarely suffice to correctly diagnose a medical condition. Instead, it often requires to take additional background information such as the patient's medical history or test results into account. Hence, instead of focusing on uninterpretable black-box systems delivering an uncertain final diagnosis in an end-to-end-fashion, we investigate how unsupervised methods
arXiv:2001.10883v2
fatcat:lmzd72l3grclfisp6wgkk54sx4