Archive | 2019

Deep learning for inverse imaging problems: some recent approaches (Conference Presentation)

 

Abstract


In this talk we discuss the idea of data-driven regularisers for inverse imaging problems. We are in particular interested in the combination of model-based and purely data-driven image processing approaches. In this context we will make a journey from “shallow” learning for computing optimal parameters for variational regularisation models by bilevel optimization to the investigation of different approaches that use deep neural networks for solving inverse imaging problems. Alongside all approaches that are being discussed, their numerical solution and available solution guarantees will be stated.

Volume None
Pages 109490R
DOI 10.1117/12.2519510
Language English
Journal None

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