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Majorization-minimization generalized Krylov subspace methods for - optimization applied to image restoration

机译:最大化-最小化广义Krylov子空间方法-优化应用于图像恢复

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摘要

A new majorization-minimization framework for - image restoration is presented. The solution is sought in a generalized Krylov subspace that is build up during the solution process. Proof of convergence to a stationary point of the minimized - functional is provided for both convex and nonconvex problems. Computed examples illustrate that high-quality restorations can be determined with a modest number of iterations and that the storage requirement of the method is not very large. A comparison with related methods shows the competitiveness of the method proposed.
机译:提出了一种新的图像最小化最小化框架。在解决方案过程中建立的广义Krylov子空间中寻找解决方案。对于凸问题和非凸问题,都提供了收敛到最小化固定点的证明。计算示例表明,可以通过少量的迭代确定高质量的恢复,并且该方法的存储需求不是很大。与相关方法的比较表明了该方法的竞争力。

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