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An Efficient Algorithm for Compressed MR Imaging using Total Variation and Wavelets

机译:一种高效的算法,用于使用总变化和小波压缩MR成像

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Compressed sensing, an emerging multidisciplinary field involving mathematics, probability, optimization, and signal processing, focuses on reconstructing an unknown signal from a very limited number of samples. Because information such as boundaries of organs is very sparse in most MR images, compressed sensing makes it possible to reconstruct the same MR image from a very limited set of measurements significantly reducing the MRI scan duration. In order to do that however, one has to solve the difficult problem of minimizing nonsmooth functions on large data sets. To handle this, we propose an efficient algorithm that jointly minimizes the l{sub}1 norm, total variation, and a least squares measure, one of the most powerful models for compressive MR imaging. Our algorithm is based upon an iterative operator-splitting framework. The calculations are accelerated by continuation and takes advantage of fast wavelet and Fourier transforms enabling our code to process MR images from actual real life applications. We show that faithful MR images can be reconstructed from a subset that represents a mere 20 percent of the complete set of measurements.
机译:压缩传感,涉及数学,概率,优化,和信号处理一个新兴的多学科领域,着眼于从样本的数量非常有限的重建未知信号。因为如器官的边界的信息是非常稀疏的大多数MR图像,压缩传感使得能够从一组非常有限的测量显著减少MRI扫描持续时间重建相同的MR图像。为了做到这一点然而,一个必须解决大型数据集上尽量减少非光滑函数的难题。为了处理这个问题,我们提出了一种高效的算法,共同最小化升{子} 1范数,总变化,以及最小二乘度量,最强大的模型的压缩MR成像中的一个。我们的算法是基于迭代运营商拆分框架。计算是通过持续加速,并采取快速小波和傅立叶变换使我们的代码来处理MR图像从实际的现实生活中应用的优势。我们发现,忠实MR图像可以表示一整套测量只有20%的子集进行重建。

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