Using bilateral symmetry to improve non-local means denoising of MR brain images

S. Prima, O. Commowick
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引用次数: 15

Abstract

The popular NL-means denoising algorithm proposes to modify the intensity of each voxel of an image by a weighted sum of the intensities of similar voxels. The success of the NL-means rests on the fact that there are typically enough such similar voxels in natural, and even medical images; in other words, that there is some self-similarity/redundancy in such images. However, similarity between voxels (or rather, between patches around them) is usually only assessed in a spatial neighbourhood of the voxel under study. As the human brain exhibits approximate bilateral symmetry, one could wonder whether a voxel in a brain image could be more accurately denoised using information from both ipsi- and contralateral hemispheres. This is the idea we investigate in this paper. We define and compute a mid-sagittal plane which best superposes the brain with itself when mirrored about the plane. Then we use this plane to double the size of the neighbourhoods and hopefully find additional interesting voxels to be included in the weighted sum. We evaluate this strategy using an extensive set of experiments on both simulated and real datasets.
利用双侧对称性改进脑磁共振图像的非局部均值去噪
流行的NL-means去噪算法提出通过相似体素强度的加权和来修改图像中每个体素的强度。自然均值的成功取决于这样一个事实,即在自然甚至医学图像中通常有足够多的类似体素;换句话说,在这样的图像中存在一些自相似性/冗余。然而,体素之间的相似性(或者更确切地说,它们周围的斑块之间的相似性)通常只在所研究的体素的空间邻域中进行评估。由于人类大脑表现出近似的双侧对称性,人们可能想知道,使用来自单侧和对侧大脑半球的信息,大脑图像中的体素是否可以更准确地去噪。这是我们在本文中研究的思想。我们定义并计算了一个中矢状面,当在这个平面上镜像时,它最好地将大脑与自身叠加在一起。然后,我们使用这个平面将邻域的大小加倍,并希望找到额外的有趣体素,以包含在加权和中。我们使用模拟和真实数据集上的大量实验来评估这一策略。
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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