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Atlas Construction via Dictionary Learning and Group Sparsity

机译:通过词典学习和小组稀疏度构建地图集

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Atlas construction generally includes first an image registration step to normalize all images into a common space and then an atlas building step to fuse all the aligned images. Although numerous atlas construction studies have been performed to improve the accuracy of image registration step, simple averaging or weighted averaging is often used for the atlas building step. In this paper, we propose a novel patch-based sparse representation method for atlas construction, especially for the atlas building step. By taking advantage of local sparse representation, more distinct anatomical details can be revealed in the built atlas. Also, together with the constraint on group structure of representations and the use of overlapping patches, anatomical consistency between neighboring patches can be ensured. The proposed method has been applied to 73 neonatal MR images with poor spatial resolution and low tissue contrast, for building unbiased neonatal brain atlas. Experimental results demonstrate that the proposed method can enhance the quality of built atlas by discovering more anatomical details especially in cortical regions, and perform better in a neonatal data normalization application, compared to other existing start-of-the-art nonlinear neonatal brain atlases.
机译:图集构建通常包括首先进行图像配准步骤以将所有图像归一化为公共空间,然后进行图集构建步骤以融合所有对齐的图像。尽管已经进行了许多图集构建研究以提高图像配准步骤的准确性,但是通常将简单平均或加权平均用于图集构建步骤。在本文中,我们提出了一种新颖的基于补丁的稀疏表示方法,用于图集构建,尤其是在图集构建步骤中。通过利用局部稀疏表示,可以在构建的地图集中显示更多不同的解剖学细节。而且,连同对表示的组结构的约束以及重叠补丁的使用,可以确保相邻补丁之间的解剖学一致性。所提出的方法已被应用于73例空间分辨率低,组织对比度低的新生儿MR图像,以建立无偏见的新生儿脑图谱。实验结果表明,与其他现有的最先进的非线性新生儿脑图谱相比,该方法可以通过发现更多解剖细节(尤其是在皮质区域)来提高内置图谱的质量,并且在新生儿数据归一化应用中表现更好。

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