3D U-Net for segmentation of COVID-19 associated pulmonary infiltrates using transfer learning: State-of-the-art results on affordable hardware
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Bernd Hamm | Marcus R. Makowski | Keno K. Bressem | Stefan M. Niehues | Janis L. Vahldiek | Lisa C. Adams | B. Hamm | M. Makowski | S. Niehues | L. Adams | J. Vahldiek | K. Bressem
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