Compressed sensing in MRI with a Markov random field prior for spatial clustering of subband coefficients

Marko Neven Panić, J. Aelterman, V. Crnojevic, A. Pižurica
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引用次数: 7

Abstract

Recent work in compressed sensing of magnetic resonance images (CS-MRI) concentrates on encoding structured sparsity in acquisition or in the reconstruction stages. Subband coefficients of typical images obey a certain structure, which can be viewed in terms of fixed groups (like wavelet trees) or statistically (certain configurations are more likely than others). Approaches using wavelet tree-sparsity have already demonstrated excellent performance in MRI. However, the use of statistical models for spatial clustering of the subband coefficients has not been studied well in CS-MRI yet, although the potentials of such an approach have been indicated. In this paper, we design a practical reconstruction algorithm as a variant of the proximal splitting methods, making use of a Markov Random Field prior model for spatial clustering of subband coefficients. The results for different undersampling patterns demonstrate an improved reconstruction performance compared to both standard CS-MRI methods and methods based on wavelet tree sparsity.
基于马尔可夫随机场的MRI压缩感知子带系数空间聚类
最近在磁共振图像压缩感知(CS-MRI)方面的工作主要集中在采集或重建阶段的结构化稀疏性编码。典型图像的子带系数遵循一定的结构,可以从固定组(如小波树)或统计(某些配置比其他配置更有可能)的角度来看待。基于小波树稀疏性的方法已经在MRI中表现出了优异的性能。然而,使用统计模型对子带系数的空间聚类尚未在CS-MRI中得到很好的研究,尽管这种方法的潜力已经被指出。在本文中,我们设计了一种实用的重构算法,作为近端分裂方法的一种变体,利用马尔科夫随机场先验模型对子带系数进行空间聚类。结果表明,与标准的CS-MRI方法和基于小波树稀疏度的方法相比,不同欠采样模式下的重建性能有所提高。
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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