q-Space Deep Learning: Twelve-Fold Shorter and Model-Free Diffusion MRI Scans
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Daniel Cremers | Thomas Brox | Jonathan Sperl | Marion I. Menzel | Alexey Dosovitskiy | Michael Czisch | Vladimir Golkov | Philipp G. Sämann | T. Brox | A. Dosovitskiy | D. Cremers | V. Golkov | M. Czisch | P. Sämann | M. Menzel | J. Sperl | Philipp G. Sämann | Vladimir Golkov | Marion I. Menzel | Thomas Brox | Daniel Cremers
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