Learning Provably Robust Estimators for Inverse Problems via Jittering

Neural Information Processing Systems 

Deep neural networks provide excellent performance for inverse problems such as denoising. However, neural networks can be sensitive to adversarial or worst-case perturbations. This raises the question of whether such networks can be trained efficiently to be worst-case robust.

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