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Approximation BFGS methods for nonlinear image restoration

机译:非线性图像复原的近似BFGS方法

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摘要

We consider the iterative solution of unconstrained minimization problems arising from nonlinear image restoration. Our approach is based on a novel generalized BFGS method for such large-scale image restoration minimization problems. The complexity per step of the method is of O(n log n) operations and only O(n) memory allocations are required, where n is the number of image pixels. Based on the results given in [Carmine Di Fiore, Stefano Fanelli, Filomena Lepore, Paolo Zellini, Matrix algebras in quasi-Newton methods for unconstrained minimization, Numer. Math. 94 (2003) 479-500], we show that the method is globally convergent for our nonlinear image restoration problems. Experimental results are presented to illustrate the effectiveness of the proposed method.
机译:我们考虑由非线性图像恢复引起的无约束最小化问题的迭代解决方案。我们的方法基于一种新颖的广义BFGS方法,可解决此类大规模图像还原的最小化问题。该方法每个步骤的复杂度为O(n log n)次操作,仅需要O(n)个内存分配,其中n为图像像素数。根据[Carmine Di Fiore,Stefano Fanelli,Filomena Lepore,Paolo Zellini,矩阵代数以拟牛顿法无约束最小化的结果,Numer。数学。 94(2003)479-500],我们证明该方法对于我们的非线性图像恢复问题是全局收敛的。实验结果表明该方法的有效性。

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