An Asymmetric Cycle-Consistency Loss For Dealing With Many-To-One Mappings In Image Translation: A Study On Thigh Mr Scans
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Michael Gadermayr | Dorit Merhof | Daniel Truhn | Maximilian Ernst Tschuchnig | Burkhard Gess | Nils Krämer
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