A complex-valued Majorize-Minimize Memory Gradient method with application to parallel MRI

A. Florescu, É. Chouzenoux, J. Pesquet, P. Ciuciu, S. Ciochină
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引用次数: 1

Abstract

Complex-valued data are encountered in many application areas of signal and image processing. In the context of optimization of functions of real variables, subspace algorithms have recently attracted much interest, due to their efficiency in solving large-size problems while simultaneously offering theoretical convergence guarantees. The goal of this paper is to show how some of these methods can be successfully extended to the complex case. More precisely, we investigate the properties of the proposed complex-valued Majorize-Minimize Memory Gradient (3MG) algorithm. An important practical application of these results arises for image reconstruction in Parallel Magnetic Resonance Imaging (PMRI). Comparisons with existing optimization methods confirm the good performance of our approach for PMRI reconstruction.
复值最大化-最小化记忆梯度方法在并行MRI中的应用
在信号和图像处理的许多应用领域都会遇到复值数据。在实变量函数优化的背景下,子空间算法最近引起了人们的极大兴趣,因为它们在解决大规模问题的同时提供了理论上的收敛保证。本文的目的是展示如何将其中一些方法成功地扩展到复杂情况。更准确地说,我们研究了所提出的复值最大化-最小化记忆梯度(3MG)算法的性质。这些结果的一个重要的实际应用出现在平行磁共振成像(PMRI)的图像重建。与现有优化方法的比较证实了我们的方法在PMRI重建中的良好性能。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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