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首页> 外文期刊>SIAM Journal on Numerical Analysis >SUBSPACE CORRECTION METHODS FOR TOTAL VARIATION AND l(1)-MINIMIZATION
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SUBSPACE CORRECTION METHODS FOR TOTAL VARIATION AND l(1)-MINIMIZATION

机译:总变化和l(1)最小化的子空间校正方法

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摘要

This paper is concerned with the numerical minimization of energy functionals in Hilbert spaces involving convex constraints coinciding with a seminorm for a subspace. The optimization is realized by alternating minimizations of the functional on a sequence of orthogonal subspaces. On each subspace an iterative proximity-map algorithm is implemented via oblique thresholding, which is the main new tool introduced in this work. We provide convergence conditions for the algorithm in order to compute minimizers of the target energy. Analogous results are derived for a parallel variant of the algorithm. Applications are presented in domain decomposition methods for degenerate elliptic PDEs arising in total variation minimization and in accelerated sparse recovery algorithms based on l(1)-minimization. We include numerical examples which show efficient solutions to classical problems in signal and image processing.
机译:本文涉及希尔伯特空间中能量函数的数值最小化,其中涉及凸约束与子空间的半范数一致。通过在正交子空间序列上交替最小化函数来实现优化。在每个子空间上,通过倾斜阈值实现迭代的邻近图算法,这是这项工作中引入的主要新工具。我们为算法提供收敛条件,以便计算目标能量的最小化值。对于该算法的并行变体,得出了相似的结果。提出了在域分解方法中退化的椭圆形PDE的应用,这些椭圆形PDE的总变化量最小化,以及基于l(1)最小化的加速稀疏恢复算法。我们提供了一些数字示例,这些示例显示了信号和图像处理中经典问题的有效解决方案。

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