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Interesting repository: DeepInverse
Videos:
Kamilov U. - Plug-and-Play Methods, Inverse Problems: Self-Calibration, Conditional Generation & Continuous Rep. - 15/09/2023
Hurault S. - PhD defense - Convergent plug-and-play methods for image inverse problems - 18/10/2024