心血管MRI的紧密框架学习

Qiu Wang, Jun Liu, N. Janardhanan, M. Zenge, E. Mueller, M. Nadar
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引用次数: 3

摘要

动态心血管MRI有助于评估心血管系统的结构和功能。动态MRI的挑战之一是数据采集时间长。为了在成像主体的运动周期内拟合数据采集时间,数据必须高度欠采样。压缩感知或基于稀疏度的MR重建利用了图像在某些变换域中可压缩的事实,并基于采样不足的k空间数据进行重建,从而减少了采集时间。这种改造的设计是改造成功的关键。在本文中,我们提出使用紧框架学习来计算数据驱动变换。实验结果表明,与冗余Haar小波相关的变换相比,该变换得到了改进。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Tight frame learning for cardiovascular MRI
Dynamic cardiovascular MRI facilitates the assessment of the structure and function of the cardiovascular system. One of the challenges in dynamic MRI is the prolonged data acquisition time. In order to fit the data acquisition time inside the motion cycles of the imaging subject, the data must be highly undersampled. Compressed sensing or sparsity based MR reconstruction takes advantage of the fact that the image is compressible in some transform domain, and enables reconstruction based on under-sampled k-space data thereby reducing the acquisition time. The design of such transform is key to the success of the reconstruction. In this paper, we propose to use tight frame learning for computing data-driven transforms. Empirical results demonstrate improvement over the transform associated with the redundant Haar Wavelets.
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