P. Milanfar, A tour of modern image filtering: New insights and methods, both practical and theoretical, IEEE Signal Process Mag, vol.30, pp.106-128, 2013.

F. I. Karahanoglu, I. Bayram, and D. Van-de-ville, A signal processing approach to generalized 1-D total variation, IEEE Trans Signal Process, vol.59, pp.5265-5274, 2011.

A. Kheradmand and P. Milanfar, A general framework for kernel similarity-based image denoising, Global Conference on Signal and Information Processing, pp.415-418, 2013.

A. Buades, B. Coll, and J. Morel, A non-local algorithm for image denoising. Computer Vision and Pattern Recognition, CVPR 2005 IEEE Computer Society Conference on, pp.60-65, 2005.

L. I. Rudin, S. Osher, and E. Fatemi, Nonlinear total variation based noise removal algorithms, Phys D Nonlinear Phenom, vol.60, pp.259-268, 1992.

A. Buades, B. Coll, and J. Morel, A review of image denoising algorithms, with a new one, Multiscale Model Simul, vol.4, pp.490-530, 2005.
URL : https://hal.archives-ouvertes.fr/hal-00271141

G. R. Easley, D. Labate, and F. Colonna, Shearlet-based total variation diffusion for denoising, IEEE Trans Image Process, vol.18, pp.260-268, 2009.

F. Zhang and E. R. Hancock, Graph spectral image smoothing using the heat kernel, Pattern Recognit, vol.41, pp.3328-3342, 2008.

A. Sandryhaila and J. Moura, Discrete signal processing on graphs, IEEE Trans signal Process, vol.61, pp.1644-1656, 2013.

J. Pang, G. Cheung, W. Hu, and O. C. Au, Redefining self-similarity in natural images for denoising using graph signal gradient. Asia-Pacific Signal and Information Processing Association, Annual Summit and Conference (APSIPA), pp.1-8, 2014.

F. Mahmood, N. Shahid, U. Skoglund, and P. Vandergheynst, Adaptive graph-based total variation for tomographic reconstructions, IEEE Signal Process Lett, vol.25, pp.700-704, 2018.

Y. You, W. Xu, A. Tannenbaum, and M. Kaveh, Behavioral analysis of anisotropic diffusion in image processing, IEEE Trans Image Process, vol.5, pp.1539-1553, 1996.

B. Smolka and K. W. Wojciechowski, Random walk approach to image enhancement, Signal Processing, vol.81, pp.465-482, 2001.

M. J. Black, G. Sapiro, D. H. Marimont, and D. Heeger, Robust anisotropic diffusion, IEEE Trans image Process, vol.7, pp.421-432, 1998.

C. Tomasi and R. Manduchi, Bilateral filtering for gray and color images, Sixth International Conference on, pp.839-846, 1998.

M. Belkin and P. Niyogi, Towards a theoretical foundation for Laplacian-based manifold methods, pp.486-500, 2005.

L. J. Grady and J. R. Polimeni, Discrete calculus: Applied analysis on graphs for computational science, 2010.

D. I. Shuman, S. K. Narang, P. Frossard, A. Ortega, and P. Vandergheynst, The emerging field of signal processing on graphs: Extending high-dimensional data analysis to networks and other irregular domains, IEEE Signal Process Mag, vol.30, pp.83-98, 2013.

G. Liu, T. Huang, J. Liu, and X. Lv, Total variation with overlapping group sparsity for image deblurring under impulse noise, PLoS One, vol.10, p.122562, 2015.

P. Berger, G. Hannak, and G. Matz, Graph signal recovery via primal-dual algorithms for total variation minimization, IEEE J Sel Top Signal Process, vol.11, pp.842-855, 2017.

S. Chen, A. Sandryhaila, J. Moura, and J. Kova?evi?, Signal recovery on graphs: Variation minimization, IEEE Trans Signal Process, vol.63, pp.4609-4624, 2015.

W. Hu, X. Li, G. Cheung, and O. Au, Depth map denoising using graph-based transform and group sparsity. Multimedia Signal Processing (MMSP), 2013 IEEE 15th International Workshop on, pp.1-6, 2013.

G. Shakhnarovich, Learning task-specific similarity. Massachusetts Institute of Technology, 2005.

N. Parikh and S. Boyd, Proximal algorithms. Found Trends ® Optim, vol.1, pp.127-239, 2014.

P. L. Combettes and V. R. Wajs, Signal recovery by proximal forward-backward splitting, Multiscale Model Simul, vol.4, pp.1168-1200, 2005.
URL : https://hal.archives-ouvertes.fr/hal-00017649

P. L. Combettes, J. Pesquet, and . Douglas, Rachford splitting approach to nonsmooth convex variational signal recovery, IEEE J Sel Top Signal Process, vol.1, pp.564-574, 2007.
URL : https://hal.archives-ouvertes.fr/hal-00621820

D. Gabay and B. Mercier, A dual algorithm for the solution of nonlinear variational problems via finite element approximation, Comput Math with Appl, vol.2, pp.17-40, 1976.

M. Zhu and T. Chan, An efficient primal-dual hybrid gradient algorithm for total variation image restoration, UCLA CAM Rep, vol.34, 2008.

P. L. Combettes and J. Pesquet, Proximal splitting methods in signal processing. Fixed-point algorithms for inverse problems in science and engineering, pp.185-212, 2011.
URL : https://hal.archives-ouvertes.fr/hal-00643807

C. Chaux, J. Pesquet, and N. Pustelnik, Nested iterative algorithms for convex constrained image recovery problems, SIAM J Imaging Sci, vol.2, pp.730-762, 2009.
URL : https://hal.archives-ouvertes.fr/hal-00621932

F. Dupé, J. M. Fadili, and J. Starck, A proximal iteration for deconvolving Poisson noisy images using sparse representations, IEEE Trans Image Process, vol.18, pp.310-321, 2009.

S. Durand, J. Fadili, and M. Nikolova, Multiplicative noise removal using L1 fidelity on frame coefficients, J Math Imaging Vis, vol.36, pp.201-226, 2010.
URL : https://hal.archives-ouvertes.fr/hal-00345119

S. Setzer, G. Steidl, and T. Teuber, Deblurring Poissonian images by split Bregman techniques, J Vis Commun Image Represent, vol.21, pp.193-199, 2010.

R. I. Bot and C. Hendrich, A Douglas-Rachford type primal-dual method for solving inclusions with mixtures of composite and parallel-sum type monotone operators, SIAM J Optim, vol.23, pp.2541-2565, 2013.

M. Muja and D. G. Lowe, Scalable nearest neighbor algorithms for high dimensional data, IEEE Trans Pattern Anal Mach Intell, vol.36, pp.2227-2240, 2014.

Y. Juang, L. Ko, J. Chen, Y. Shieh, T. Sung et al., Histogram modification and wavelet transform for high performance watermarking, Math Probl Eng, 2012.

C. R. Vogel and M. E. Oman, Iterative methods for total variation denoising, SIAM J Sci Comput, vol.17, pp.227-238, 1996.

Z. Wang, A. C. Bovik, H. R. Sheikh, and E. P. Simoncelli, Image quality assessment: from error visibility to structural similarity, IEEE Trans image Process, vol.13, pp.600-612, 2004.

X. Cao, J. Miao, and Y. Xiao, Medical image segmentation of improved genetic algorithm research based on dictionary learning, World J Eng Technol, vol.5, pp.90-96, 2017.

Y. Kong, Y. Deng, and Q. Dai, Discriminative clustering and feature selection for brain MRI segmentation, IEEE Signal Process Lett, vol.22, pp.573-577, 2014.

Y. Kong, J. Wu, G. Yang, Y. Zuo, Y. Chen et al., Iterative spatial fuzzy clustering for 3D brain magnetic resonance image supervoxel segmentation, J Neurosci Methods, vol.311, pp.17-27, 2019.
URL : https://hal.archives-ouvertes.fr/hal-01902633