Locally low-rank denoising in transform domains

Steen Moeller, Erick O Buko, Suhail Parvaze Pathan, Logan Dowdle, Kamil Ugurbil, Casey Johnson, Mehmet Akcakaya
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Abstract

Purpose: To develop an extension to locally low rank (LLR) denoising techniques based on transform domain processing that reduces the number of images required in the MR image series for high-quality denoising. Theory and Methods: LLR methods with random matrix theory-based thresholds are successfully used in the denoising of MR image series in a number of applications. The performance of these methods depend on how well the LLR assumption is satisfied, which deteriorates with few numbers of images, as is commonly encountered in quantitative MRI applications. We propose a transform-domain approach for denoising of MR image series to represent the underlying signal with higher fidelity when using a locally low rank approximation. The efficacy of the method is demonstrated for fully-sampled k-space, undersampled k-space, DICOM images, and complex-valued SENSE-1 images in quantitative MRI applications with as few as 4 images. Results: For both MSK and brain applications, the transform domain denoising preserves local subtle variability, whereas the quantitative maps based on image domain LLR methods tend to be locally more homogeneous. Conclusion: A transform domain extension to LLR denoising produces high quality images and is compatible with both raw k-space data and vendor reconstructed data. This allows for improved imaging and more accurate quantitative analyses and parameters obtained therefrom.
变换域局部低秩去噪
目的:开发一种基于变换域处理的局部低秩(LLR)去噪技术的扩展,减少MR图像序列中进行高质量去噪所需的图像数量。理论与方法:基于随机矩阵理论的LLR方法已成功地应用于MR图像序列的去噪。这些方法的性能取决于LLR假设的满足程度,随着图像数量的减少,LLR假设会变差,这在定量MRI应用中很常见。我们提出了一种变换域方法,用于MR图像序列的去噪,当使用局部低秩近似时,以更高的保真度表示底层信号。该方法的有效性在定量MRI应用中被证明是全采样k空间,不足采样k空间,DICOM图像和复杂值SENSE-1图像,只有4张图像。结果:对于MSK和大脑应用,变换域去噪保留了局部细微的可变性,而基于图像域LLR方法的定量映射往往在局部更均匀。结论:变换域扩展到LLR去噪产生高质量的图像,并且与原始k空间数据和供应商重构数据兼容。这允许改进成像和更准确的定量分析和从中获得的参数。
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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