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arxiv: 1612.03080 · v1 · pith:YUO5NFHFnew · submitted 2016-12-08 · 📊 stat.ML

Characterizing the maximum parameter of the total-variation denoising through the pseudo-inverse of the divergence

classification 📊 stat.ML
keywords parameterregularizationtotal-variationvaluecasedenoisingdivergencemaximum
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We focus on the maximum regularization parameter for anisotropic total-variation denoising. It corresponds to the minimum value of the regularization parameter above which the solution remains constant. While this value is well know for the Lasso, such a critical value has not been investigated in details for the total-variation. Though, it is of importance when tuning the regularization parameter as it allows fixing an upper-bound on the grid for which the optimal parameter is sought. We establish a closed form expression for the one-dimensional case, as well as an upper-bound for the two-dimensional case, that appears reasonably tight in practice. This problem is directly linked to the computation of the pseudo-inverse of the divergence, which can be quickly obtained by performing convolutions in the Fourier domain.

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