Denoising of image gradients and total generalized variation denoising

12/22/2017
by   Birgit Komander, et al.
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We revisit total variation denoising and study an augmented model where we assume that an estimate of the image gradient is available. We show that this increases the image reconstruction quality and derive that the resulting model resembles the total generalized variation denoising method, thus providing a new motivation for this model. Further, we propose to use a constraint denoising model and develop a variational denoising model that is basically parameter free, i.e. all model parameters are estimated directly from the noisy image. Moreover, use Chambolle-Pock's primal dual method as well as the Douglas-Rachford method for the new models. For the latter one has to solve large discretizations of partial differential equations and we derive preconditioners to do so. Numerical experiments show that the resulting method has good denoising properties and also that preconditioning does increase convergence significantly.

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