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Sparse Representation Based MRI Denoising with Total Variation

机译:具有总变化的基于稀疏表示的MRI去噪

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摘要

Diffusion tensor magnetic resonance imaging is a newly developed imaging technique;however,this technique is noise sensitive.This paper presents a novel method for sparse representation denoising of MR images that propose sparse representation of the corrupted images with the knowledge of the Rician noise model.The proposed model inferring the prior that MR images are composed of several separated regions with uniform intensity,therefore,total variation can be combined to further smooth every region.Since sparse representation performs well in extracting features from images,coupled with the total variation regularization,the method offers excellent combination of noise removal and edge preservation.The experiment results demonstrate that the proposed method preserves most of the fine structure in cardiac diffusion weighted images.
机译:扩散张量磁共振成像是一种新兴的成像技术,但是该技术对噪声敏感。本文提出了一种新的MR图像稀疏表示去噪方法,该方法提出了利用Rician噪声模型的知识来对受损图像进行稀疏表示的方法。提出的模型先验地推断出MR图像是由几个强度均匀的分离区域组成的,因此,可以将总变化量组合起来以进一步平滑每个区域。由于稀疏表示在从图像中提取特征方面表现良好,并且结合了总变化量正则化,实验结果表明,该方法在心脏扩散加权图像中保留了大部分精细结构。

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