基于四维低秩和全变分的扩散加权图像超分辨率重建

Feng Shi, Jian Cheng, Li Wang, Pew-Thian Yap, Dinggang Shen
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引用次数: 9

摘要

弥散加权成像(DWI)提供了宝贵的白质微观结构信息,在神经学领域有着广泛的应用。然而,DWI在很大程度上受到其相对较低的空间分辨率的限制。在本文中,我们提出了一种称为超分辨率重建的图像后处理方法,从输入的低分辨率DWI中估计出高空间分辨率的DWI,例如以2倍的倍数。我们的方法只需要单次DWI扫描,而不需要专门设计多次移位或正交扫描的DWI采集。为了做到这一点,我们建议在从潜在的高分辨率图像中观察到低分辨率图像的图像退化过程中对模糊和下采样效应进行建模,并借助两次正则化来恢复潜在的高分辨率图像。第一个正则化是四维(4D)低秩,提出从四维DWI的空间域和扩散域收集自相似信息。第二种正则化是总变分,在图像恢复过程中用于抑制噪声和保留边缘等局部结构。对20名受试者进行了大量的实验,结果表明,该方法能够恢复白质结构的精细细节,优于插值方法、基于非局部均值的上采样方法和基于全变异的上采样方法。
本文章由计算机程序翻译,如有差异,请以英文原文为准。

Super-Resolution Reconstruction of Diffusion-Weighted Images using 4D Low-Rank and Total Variation

Super-Resolution Reconstruction of Diffusion-Weighted Images using 4D Low-Rank and Total Variation

Super-Resolution Reconstruction of Diffusion-Weighted Images using 4D Low-Rank and Total Variation

Diffusion-weighted imaging (DWI) provides invaluable information in white matter microstructure and is widely applied in neurological applications. However, DWI is largely limited by its relatively low spatial resolution. In this paper, we propose an image post-processing method, referred to as super-resolution reconstruction, to estimate a high spatial resolution DWI from the input low-resolution DWI, e.g., at a factor of 2. Instead of requiring specially designed DWI acquisition of multiple shifted or orthogonal scans, our method needs only a single DWI scan. To do that, we propose to model both the blurring and downsampling effects in the image degradation process where the low-resolution image is observed from the latent high-resolution image, and recover the latent high-resolution image with the help of two regularizations. The first regularization is 4-dimensional (4D) low-rank, proposed to gather self-similarity information from both the spatial domain and the diffusion domain of 4D DWI. The second regularization is total variation, proposed to depress noise and preserve local structures such as edges in the image recovery process. Extensive experiments were performed on 20 subjects, and results show that the proposed method is able to recover the fine details of white matter structures, and outperform other approaches such as interpolation methods, non-local means based upsampling, and total variation based upsampling.

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