Latent space manipulation for high-resolution medical image synthesis via the StyleGAN

Zeitschrift für Medizinische Physik - Tập 30 - Trang 305-314 - 2020
Lukas Fetty1, Mikael Bylund2, Peter Kuess1, Gerd Heilemann1, Tufve Nyholm2, Dietmar Georg1, Tommy Löfstedt2
1Department of Radiation Oncology, Medical University of Vienna, Vienna, Austria
2Department of Radiation Sciences, Umeå University, Umeå, Sweden

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