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Iterative thresholding compressed sensing MRI based on contourlet transform

机译:基于轮廓波变换的迭代阈值压缩感知MRI

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摘要

Reducing the acquisition time is important for clinical magnetic resonance imaging (MRI). Compressed sensing has recently emerged as a theoretical foundation for the reconstruction of magnetic resonance images from undersampled k-space measurements, assuming those images are sparse in a certain transform domain. However, most real-world signals are compressible rather than exactly sparse. For example, the commonly used two-dimensional wavelet for compressed sensing MRI (CS-MRI) does not sparsely represent curves and edges. In this article, we introduce a geometric image transform, the contourlet, to overcome this shortage. In addition, the improved redundancy provided by the contourlet can successfully suppress the pseudo-Gibbs phenomenon, a tiresome artefact produced by undersampling of k-space, around the singularities of images. For numerical calculation, a simple but effective iterative thresholding algorithm is employed to solve l_1 norm optimization for CS-MRI. Considering the recovered information and image features, we introduce three objective criteria, which are the peak signal-to-noise ratio (PSNR), mutual information and transferred edge information, to evaluate the performance of different image transforms. Simulation results demonstrate that contourlet-based CS-MRI can better reconstruct the curves and edges than traditional wavelet-based methods, especially at low k-space sampling rate.
机译:减少采集时间对于临床磁共振成像(MRI)很重要。假设传感图像在某个变换域中是稀疏的,最近压缩压缩传感已成为从欠采样k空间测量中重建磁共振图像的理论基础。但是,大多数现实世界中的信号都是可压缩的,而不是稀疏的。例如,用于压缩感测MRI(CS-MRI)的常用二维小波不能稀疏地表示曲线和边缘。在本文中,我们介绍了几何图像变换,轮廓线,以克服这种不足。另外,轮廓波提供的改进的冗余可以成功地抑制伪吉布斯现象,该伪吉布斯现象是由k空间的欠采样在图像奇异点周围产生的令人讨厌的伪影。对于数值计算,采用一种简单但有效的迭代阈值算法来解决CS-MRI的l_1范数优化。考虑到恢复的信息和图像特征,我们引入了三个客观标准,即峰值信噪比(PSNR),互信息和传输的边缘信息,以评估不同图像变换的性能。仿真结果表明,与传统的基于小波的方法相比,基于轮廓波的CS-MRI能够更好地重构曲线和边缘,尤其是在低k空间采样率的情况下。

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