Optimal control learns data-driven stopping times for gradient flows in variational image restoration, yielding competitive denoising and deblurring results.
Don't relax: early stopping for convex regularization
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abstract
We consider the problem of designing efficient regularization algorithms when regularization is encoded by a (strongly) convex functional. Unlike classical penalization methods based on a relaxation approach, we propose an iterative method where regularization is achieved via early stopping. Our results show that the proposed procedure achieves the same recovery accuracy as penalization methods, while naturally integrating computational considerations. An empirical analysis on a number of problems provides promising results with respect to the state of the art.
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math.OC 1years
2019 1verdicts
UNVERDICTED 1representative citing papers
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An Optimal Control Approach to Early Stopping Variational Methods for Image Restoration
Optimal control learns data-driven stopping times for gradient flows in variational image restoration, yielding competitive denoising and deblurring results.