An Iterative Shrinkage Approach to Total-Variation Image Restoration
Oleg Michailovich

TL;DR
This paper introduces an iterative shrinkage algorithm for total variation image restoration that efficiently handles large images and directly works with the TV functional, improving robustness to noise.
Contribution
It proposes a novel iterative shrinkage method that directly utilizes the TV functional for image restoration, unifying isotropic and anisotropic TV approaches.
Findings
Efficient for large images due to simple recursive procedures
Works directly with the TV functional without smoothing
Unifies isotropic and anisotropic TV methods
Abstract
The problem of restoration of digital images from their degraded measurements plays a central role in a multitude of practically important applications. A particularly challenging instance of this problem occurs in the case when the degradation phenomenon is modeled by an ill-conditioned operator. In such a case, the presence of noise makes it impossible to recover a valuable approximation of the image of interest without using some a priori information about its properties. Such a priori information is essential for image restoration, rendering it stable and robust to noise. Particularly, if the original image is known to be a piecewise smooth function, one of the standard priors used in this case is defined by the Rudin-Osher-Fatemi model, which results in total variation (TV) based image restoration. The current arsenal of algorithms for TV-based image restoration is vast. In the…
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