This paper proposes a fractional-order total variation image denoising algorithm based on the primal-dual method, which provides a much more elegant and effective way of treating problems of the algorithm implementation, ill-posed inverse, convergence rate, and blocky effect. The fractional-order total variation model is introduced by generalizing the first-order model, and the corresponding saddle-point and dual formulation are constructed in theory. In order to guarantee O 1 / N2 convergence rate, the primal-dual algorithm was used to solve the constructed saddle-point problem, and the final numerical procedure is given for image denoising. Finally, the experimental results demonstrate that the proposed methodology avoids the blocky effect, achieves state-of-the-art performance, and guarantees O 1 / N2 convergence rate. © 2013 Dali Chen et al.
CITATION STYLE
Chen, D., Chen, Y., & Xue, D. (2013). Fractional-order total variation image restoration based on primal-dual algorithm. Abstract and Applied Analysis, 2013. https://doi.org/10.1155/2013/585310
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