压缩感知MRI的稀疏化变换学习

S. Ravishankar, Y. Bresler
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引用次数: 63

摘要

压缩感知(CS)通过利用磁共振图像在一定变换域或字典中的稀疏性,实现高欠采样下的磁共振成像(MRI)。最近的方法使这样的字典适应数据。虽然自适应合成字典在基于CS的MRI中显示出前景,但学习稀疏化变换的想法并没有得到太多关注。在本文中,我们提出了一种新的MR图像重建框架,该框架可以同时适应变换并从高度欠采样的k空间测量中重建图像。所提出的方法比先前涉及合成字典的方法要快得多(>10倍),同时也提供了相当或更好的重建质量。这使得它更适合临床应用。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Sparsifying transform learning for Compressed Sensing MRI
Compressed Sensing (CS) enables magnetic resonance imaging (MRI) at high undersampling by exploiting the sparsity of MR images in a certain transform domain or dictionary. Recent approaches adapt such dictionaries to data. While adaptive synthesis dictionaries have shown promise in CS based MRI, the idea of learning sparsifying transforms has not received much attention. In this paper, we propose a novel framework for MR image reconstruction that simultaneously adapts the transform and reconstructs the image from highly undersampled k-space measurements. The proposed approach is significantly faster (>10x) than previous approaches involving synthesis dictionaries, while also providing comparable or better reconstruction quality. This makes it more amenable for adoption for clinical use.
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