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首页> 外文期刊>Magnetic resonance imaging: An International journal of basic research and clinical applications >Magnetic resonance image reconstruction using trained geometric directions in 2D redundant wavelets domain and non-convex optimization
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Magnetic resonance image reconstruction using trained geometric directions in 2D redundant wavelets domain and non-convex optimization

机译:使用二维冗余小波域中经过训练的几何方向和非凸优化实现磁共振图像重建

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摘要

Reducing scanning time is significantly important for MRI. Compressed sensing has shown promising results by undersampling the k-space data to speed up imaging. Sparsity of an image plays an important role in compressed sensing MRI to reduce the image artifacts. Recently, the method of patch-based directional wavelets (PBDW) which trains geometric directions from undersampled data has been proposed. It has better performance in preserving image edges than conventional sparsifying transforms. However, obvious artifacts are presented in the smooth region when the data are highly undersampled. In addition, the original PBDW-based method does not hold obvious improvement for radial and fully 2D random sampling patterns. In this paper, the PBDW-based MRI reconstruction is improved from two aspects: 1) An efficient non-convex minimization algorithm is modified to enhance image quality; 2) PBDW are extended into shift-invariant discrete wavelet domain to enhance the ability of transform on sparsifying piecewise smooth image features. Numerical simulation results on vivo magnetic resonance images demonstrate that the proposed method outperforms the original PBDW in terms of removing artifacts and preserving edges.
机译:缩短扫描时间对MRI至关重要。通过对k空间数据进行欠采样以加快成像速度,压缩传感已显示出令人鼓舞的结果。图像的稀疏性在压缩感测MRI中以减少图像伪影起着重要作用。近来,已经提出了基于补丁的方向小波(PBDW)的方法,该方法从欠采样数据中训练几何方向。与传统的稀疏变换相比,它在保留图像边缘方面具有更好的性能。但是,当数据高度欠采样时,在平滑区域中会出现明显的伪像。此外,原始的基于PBDW的方法对于径向和完全2D随机采样模式没有明显改善。本文从两个方面对基于PBDW的MRI重建进行了改进:1)改进了一种有效的非凸最小化算法,以提高图像质量。 2)将PBDW扩展到位移不变离散小波域,以增强对稀疏的分段平滑图像特征进行变换的能力。在体内磁共振图像上的数值模拟结果表明,该方法在去除伪像和保留边缘方面优于原始PBDW。

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