Total variation regularization algorithms for images corrupted with different noise models: A review

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Abstract

Total Variation (TV) regularization has evolved from an image denoising method for images corrupted with Gaussian noise into a more general technique for inverse problems such as deblurring, blind deconvolution, and inpainting, which also encompasses the Impulse, Poisson, Speckle, and mixed noise models. This paper focuses on giving a summary of the most relevant TV numerical algorithms for solving the restoration problem for grayscale/color images corrupted with several noise models, that is, Gaussian, Salt & Pepper, Poisson, and Speckle (Gamma) noise models as well as for the mixed noise scenarios, such the mixed Gaussian and impulse model. We also include the description of the maximum a posteriori (MAP) estimator for each model as well as a summary of general optimization procedures that are typically used to solve the TV problem. © 2013 Paul Rodríguez.

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Rodríguez, P. (2013). Total variation regularization algorithms for images corrupted with different noise models: A review. Journal of Electrical and Computer Engineering. https://doi.org/10.1155/2013/217021

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