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Fast and exact unidimensional L2-L1 optimization as an accelerator for iterative reconstruction algorithms

机译:快速精确的一维L2-L1优化作为迭代重建算法的加速器

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This paper studies the use of fast and exact unidimensional L2-L1 minimization as a line search for accelerating iterative reconstruction algorithms. In L2-L1 minimization reconstruction problems, the squared Euclidean, or 12 norm, measures signal-data discrepancy and the L1 norm stands for a sparsity preserving regularization term. Functionals as these arise in important applications such as compressed sensing and deconvolution. Optimal unidimensional L2-L1 minimization has only recently been studied by Li and Osher for denoising problems and by Wen et al. for line search. A fast L2-L1 optimization procedure can be adapted for line search and used in iterative algorithms, improving convergence speed with little increase in computational cost. This paper proposes a new method for exact L2-L1 line search and compares it with the Li and Osher's, Wen et al.'s, as well as with a standard line search algorithm, the method of false position. The use of the proposed line search improves convergence speed of different iterative algorithms for L2-L1 reconstruction such as iterative shrinkage, iteratively reweighted least squares, and nonlinear conjugate gradient This assertion is validated experimentally in applications to signal reconstruction in compressed sensing and sparse signal deblurring. (C) 2015 Elsevier Inc. All rights reserved.
机译:本文研究了快速精确的一维L2-L1最小化作为加速迭代重建算法的线搜索的用途。在L2-L1最小化重建问题中,平方的欧几里得或12范数测量信号数据差异,而L1范数代表稀疏性保留正则项。这些功能出现在重要应用中,例如压缩感测和反卷积。 Li和Osher直到最近才对最优一维L2-L1最小化进行了研究,Wen等人对此进行了研究。行搜索。快速的L2-L1优化过程可适用于线搜索,并用于迭代算法中,从而在不增加计算成本的情况下提高了收敛速度。本文提出了一种精确的L2-L1线搜索的新方法,并将其与Li和Osher's Wen等人的方法以及标准线搜索算法(即假位置方法)进行了比较。提议的线搜索的使用提高了L2-L1重建的不同迭代算法(例如迭代收缩,迭代加权最小二乘和非线性共轭梯度)的收敛速度。此断言在压缩感知和稀疏信号去模糊的信号重建中的应用得到了实验验证。 (C)2015 Elsevier Inc.保留所有权利。

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