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首页> 外文期刊>Physics in medicine and biology. >Compressed sensing MRI with singular value decomposition-based sparsity basis.
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Compressed sensing MRI with singular value decomposition-based sparsity basis.

机译:压缩感知MRI具有基于奇异值分解的稀疏性基础。

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摘要

Compressed sensing MRI (CS-MRI) aims to significantly reduce the measurements required for image reconstruction in order to accelerate the overall imaging speed. The sparsity of the MR images in transformation bases is one of the fundamental criteria for CS-MRI performance. Sparser representations can require fewer samples necessary for a successful reconstruction or achieve better reconstruction quality with a given number of samples. Generally, there are two kinds of 'sparsifying' transforms: predefined transforms and data-adaptive transforms. The predefined transforms, such as the discrete cosine transform, discrete wavelet transform and identity transform have usually been used to provide sufficiently sparse representations for limited types of MR images, in view of their isolation to the object images. In this paper, we present singular value decomposition (SVD) as the data-adaptive 'sparsity' basis, which can sparsify a broader range of MR images and perform effective image reconstruction. The performance of this method was evaluated for MR images with varying content (for example, brain images, angiograms, etc), in terms of image quality, reconstruction time, sparsity and data fidelity. Comparison with other commonly used sparsifying transforms shows that the proposed method can significantly accelerate the reconstruction process and still achieve better image quality, providing a simple and effective alternative solution in the CS-MRI framework.
机译:压缩感测MRI(CS-MRI)旨在显着减少图像重建所需的测量值,以加快总体成像速度。变换基础中MR图像的稀疏性是CS-MRI性能的基本标准之一。稀疏表示可能需要较少的样本才能成功进行重建,或者在给定数量的样本下可以获得更好的重建质量。通常,有两种“简化”变换:预定义变换和数据自适应变换。考虑到它们与对象图像的隔离性,通常使用诸如离散余弦变换,离散小波变换和身份变换之类的预定义变换来为有限类型的MR图像提供足够稀疏的表示。在本文中,我们提出奇异值分解(SVD)作为数据自适应“稀疏”的基础,它可以稀疏更大范围的MR图像并执行有效的图像重建。在图像质量,重建时间,稀疏性和数据保真度方面,对具有不同内容的MR图像(例如,脑部图像,血管造影等)评估了该方法的性能。与其他常用的稀疏变换的比较表明,该方法可以显着加快重建过程,并且仍然可以获得更好的图像质量,从而在CS-MRI框架中提供了一种简单有效的替代解决方案。

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