Learning the sparsity basis in low-rank plus sparse model for dynamic MRI reconstruction

A. Majumdar, R. Ward
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引用次数: 5

Abstract

Modeling a temporal image sequence as a super-position of sparse and low-rank component stems from studies in principal component pursuit (PCP). Recently this technique was applied for dynamic MRI reconstruction with two modifications. First, unlike the original PCP, the problem was to recover the image sequence from under-sampled measurements. Second, the sparse component of the signal was not sparse in itself but in a transform domain. Recent studies in dynamic MRI reconstruction showed that, instead of using a fixed sparsity basis, better recovery results can be achieved when the sparsifying dictionary is adaptively learned from the data using Blind Compressed Sensing (BCS) framework. In this work, we demonstrate that learning the sparsity basis using BCS like techniques improve the recovery accuracy from PCP when applied to dynamic MRI reconstruction problems.
学习用于动态MRI重建的低秩加稀疏模型的稀疏基
将时序图像序列建模为稀疏低秩分量的叠加,源于主成分追踪(PCP)的研究。最近,该技术被应用于动态MRI重建,并进行了两次修改。首先,与原始的PCP不同,问题在于从欠采样测量中恢复图像序列。其次,信号的稀疏分量本身不是稀疏的,而是在变换域中稀疏的。最近的动态MRI重建研究表明,采用盲压缩感知(Blind Compressed Sensing, BCS)框架自适应地从数据中学习稀疏字典,而不是使用固定的稀疏基,可以获得更好的恢复效果。在这项工作中,我们证明了使用BCS类技术学习稀疏性基可以提高PCP应用于动态MRI重建问题时的恢复精度。
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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