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Compressed Sensing MR Image Reconstruction Exploiting TGV and Wavelet Sparsity

机译:利用TGV和小波稀疏性的压缩传感MR图像重建。

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摘要

Compressed sensing (CS) based methods make it possible to reconstruct magnetic resonance (MR) images from undersampled measurements, which is known as CS-MRI. The reference-driven CS-MRI reconstruction schemes can further decrease the sampling ratio by exploiting the sparsity of the difference image between the target and the reference MR images in pixel domain. Unfortunately existing methods do not work well given that contrast changes are incorrectly estimated or motion compensation is inaccurate. In this paper, we propose to reconstruct MR images by utilizing the sparsity of the difference image between the target and the motion-compensated reference images in wavelet transform and gradient domains. The idea is attractive because it requires neither the estimation of the contrast changes nor multiple times motion compensations. In addition, we apply total generalized variation (TGV) regularization to eliminate the staircasing artifacts caused by conventional total variation (TV). Fast composite splitting algorithm (FCSA) is used to solve the proposed reconstruction problem in order to improve computational efficiency. Experimental results demonstrate that the proposed method can not only reduce the computational cost but also decrease sampling ratio or improve the reconstruction quality alternatively.
机译:基于压缩传感(CS)的方法可以从欠采样测量中重建磁共振(MR)图像,这被称为CS-MRI。参考驱动的CS-MRI重建方案可以通过利用像素域中目标MR图像和参考MR图像之间的差异图像的稀疏性来进一步降低采样率。不幸的是,由于对比度变化估计不正确或运动补偿不准确,现有方法效果不佳。在本文中,我们提出在小波变换和梯度域中利用目标图像和运动补偿参考图像之间的差异图像的稀疏性来重建MR图像。这个想法很吸引人,因为它既不需要估计对比度变化,也不需要多次运动补偿。此外,我们应用总广义变异(TGV)正则化来消除由常规总变异(TV)引起的楼梯伪像。快速复合分裂算法(FCSA)用于解决所提出的重建问题,以提高计算效率。实验结果表明,该方法不仅可以降低计算量,而且可以降低采样率或提高重建质量。

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