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arXiv:2307.03709 [math.NA]AbstractReferencesReviewsResources

Exact recovery of the support of piecewise constant images via total variation regularization

Yohann De Castro, Vincent Duval, Romain Petit

Published 2023-07-07Version 1

This work is concerned with the recovery of piecewise constant images from noisy linear measurements. We study the noise robustness of a variational reconstruction method, which is based on total (gradient) variation regularization. We show that, if the unknown image is the superposition of a few simple shapes, and if a non-degenerate source condition holds, then, in the low noise regime, the reconstructed images have the same structure: they are the superposition of the same number of shapes, each a smooth deformation of one of the unknown shapes. Moreover, the reconstructed shapes and the associated intensities converge to the unknown ones as the noise goes to zero.

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