Investigation and benchmarking of U-Nets on prostate segmentation tasks
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R. Grosu | C. Zamboglou | A. Grosu | T. Fechter | Z. Babaiee | Shrajan Bhandary | Dejan Kuhn | Matthias Benndorf | M. Benndorf
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