MultiScale Approach for Two-Dimensional Diffeomorphic Image Registration

Huan Han, Zhengping Wang, Yimin Zhang
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引用次数: 5

Abstract

. In a beautiful paper, Modin, Nachman, and Rondi [ Adv. Math. , 346 (2019), pp. 1009–1066] introduced a hierarchical image registration model based on the large deformation diffeomorphic metric mapping (LDDMM) framework. Unfortunately, no numerical tests are performed to show the efficiency of this multiscale approach. The LDDMM image registration framework is essentially a variational problem with differential equation constraints and the structure of the cost functional is very complex. Therefore, it’s necessary and meaningful to introduce some other analogous multiscale approaches with a much simpler cost functional. Motivated by the work of Modin, Nachman, and Rondi, we construct a multiscale image registration approach for the two-dimensional diffeomorphic image registration model in [H. Han and Z. Wang, SIAM J. Imaging Sci. , 13 (2020), pp. 1240–1271]. This approach achieves a smooth minimizer for the cost functional without regularization. This result is completely different from most published models which only achieve minimizers of the cost functional with some regularization. The existence of solutions for the multiscale approach and the convergence of the multiscale approach are proved. In addition, a multigrid based multi- scale diffeomorphic image registration algorithm is presented. Moreover, numerical tests are also performed to show that the proposed multiscale approach achieves a satisfactory image registration result without mesh folding.
二维微分同构图像配准的多尺度方法
. 在一篇漂亮的论文中,Modin, Nachman和Rondi [Adv. Math]。[j] .中文信息,346 (2019),pp. 1009-1066]引入了一种基于大变形微分同构度量映射(LDDMM)框架的分层图像配准模型。遗憾的是,没有进行数值试验来证明这种多尺度方法的有效性。LDDMM图像配准框架本质上是一个带有微分方程约束的变分问题,其代价函数的结构非常复杂。因此,引入其他类似的、具有更简单代价函数的多尺度方法是必要和有意义的。受Modin, Nachman和Rondi的工作启发,我们构建了一种多尺度图像配准方法,用于二维差分图像配准模型[H]。王志强,王志强。影像科学。科学进展,13 (2020),pp. 1240-1271。这种方法在没有正则化的情况下实现了成本函数的平滑最小化。这个结果与大多数发表的模型完全不同,这些模型只能通过一些正则化来实现成本函数的最小化。证明了多尺度方法解的存在性和收敛性。此外,提出了一种基于多网格的多尺度微分同构图像配准算法。数值实验结果表明,该方法在没有网格折叠的情况下取得了满意的配准效果。
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