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Fast Linearized Augmented Lagrangian Method for Euler’s Elastica Model 被引量:1
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作者 Jun Zhang Rongliang Chen +1 位作者 Chengzhi Deng Shengqian Wang 《Numerical Mathematics(Theory,Methods and Applications)》 SCIE CSCD 2017年第1期98-115,共18页
Recently,many variational models involving high order derivatives have been widely used in image processing,because they can reduce staircase effects during noise elimination.However,it is very challenging to construc... Recently,many variational models involving high order derivatives have been widely used in image processing,because they can reduce staircase effects during noise elimination.However,it is very challenging to construct efficient algo-rithms to obtain the minimizers of original high order functionals.In this paper,we propose a new linearized augmented Lagrangian method for Euler’s elastica image denoising model.We detail the procedures of finding the saddle-points of the aug-mented Lagrangian functional.Instead of solving associated linear systems by FFTor linear iterative methods(e.g.,the Gauss-Seidel method),we adopt a linearized strat-egy to get an iteration sequence so as to reduce computational cost.In addition,we give some simple complexity analysis for the proposed method.Experimental results with comparison to the previous method are supplied to demonstrate the efficiency of the proposed method,and indicate that such a linearized augmented Lagrangian method is more suitable to deal with large-sized images. 展开更多
关键词 Image denoising Euler’s elastica model linearized augmented lagrangian method shrink operator closed form solution
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