We consider total variation minimization for manifold valued data. We propose a cyclic proximal point algorithm and a parallel proximal point algorithm to minimize TV functionals with ℓp-type data terms in the manifold case. These algorithms are based on iterative geodesic averaging which makes them easily applicable to a large class of data manifolds. As an application, we consider denoising images which take their values in a manifold. We apply our algorithms to diffusion tensor images, interferometric SAR images as well as sphere and cylinder valued images. For the class of Cartan-Hadamard manifolds (which includes the data space in diffusion tensor imaging) we show the convergence of the proposed TV minimizing algorithms to a global minimizer.
@article{arxiv.1312.7710,
title = {Total variation regularization for manifold-valued data},
author = {Andreas Weinmann and Laurent Demaret and Martin Storath},
journal= {arXiv preprint arXiv:1312.7710},
year = {2014}
}