Autor der Publikation

Learning stochastic object model from noisy imaging measurements using AmbientGANs.

, , , und . Medical Imaging: Image Perception, Observer Performance, and Technology Assessment, Volume 10952 von SPIE Proceedings, Seite 109520M. SPIE, (2019)

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