Title of article :
An Evolutionary Approach to Image Denoising Using A Regularized L1 TV Model
Author/Authors :
Annie Lyn T. Oliveros، نويسنده , , Marrick C. Neri، نويسنده ,
Issue Information :
روزنامه با شماره پیاپی سال 2010
Abstract :
Total variation models are effective and popular in image reconstruction. In many papers a variation model with L2 fidelity term wasintroduced and shown to be capable of removing Gaussian noise. For images corrupted with impulse noise or outliers, the total variation modelwith L1 fidelity term exhibit good properties in restoring noise free pixels and in preserving contrast. However, this model is nonstrictly convexand nondifferentiable. Another research work proposed a regularized version of the L1 model and an efficient semismooth algorithm whichinvolves second order information was presented to solve the discretization of this model. This paper deals with denoising images corrupted withimpulse noise using an evolutionary approach. Specifically, the Genetic Algorithm (GA) is employed to optimize the regularized L1 model. Numerical results show the capability of GA in reconstructing n x n noisy images, with n = 256
Keywords :
image processing , Image denoising , Impulse Noise Removal , Genetic algorithms , Evolutionary algorithm
Journal title :
International Journal of Advanced Research in Computer Science
Journal title :
International Journal of Advanced Research in Computer Science