Compressed sensing MRI using sparsity induced from adjacent slice similarity

A. Hirabayashi, Norihito Inamuro, Kazushi Mimura, Toshiyuki Kurihara, Toshiyuki Homma
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引用次数: 16

Abstract

We propose a fast magnetic resonance imaging (MRI) technique based on compressed sensing. The main idea is to use a combination of full and compressed sensing. Full sensing is conducted for every several slices (F-slice) while compressed sensing with high compression rate is applied to the rest of slices (C-slice). We can perfectly reconstruct F-slice images, which are used to roughly estimate the C-slices. Since the estimate is already of good quality, its difference from the original image is small and sparse. Therefore, the difference can be reconstructed precisely using the standard compressed sensing technique even with high compression rate. Simulation results show that the proposed method outperforms conventional methods with 3.16dB for arm images, 0.26dB for brain images in average for the C-slices with perfect reconstruction for the F-slices.
利用相邻切片相似度引起的稀疏性压缩感知MRI
提出了一种基于压缩感知的快速磁共振成像技术。主要思想是使用完整和压缩传感的组合。每几个切片(f片)进行全感知,其余切片(c片)进行高压缩率的压缩感知。我们可以完美地重建f切片图像,用它来粗略估计c切片。由于估计的质量已经很好,因此与原始图像的差异很小且稀疏。因此,即使在高压缩率的情况下,使用标准压缩感知技术也可以精确地重建差异。仿真结果表明,该方法对手臂图像和脑图像的c -切片的平均增益分别为3.16dB和0.26dB,对f -切片的重建效果较好。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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