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Robust Diffeomorphic Mapping via Geodesically Controlled Active Shapes

机译:通过大地测量控制的活动形状进行稳健的二形映射

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摘要

This paper presents recent advances in the use of diffeomorphic active shapes which incorporate the conservation laws of large deformation diffeomorphic metric mapping. The equations of evolution satisfying the conservation law are geodesics under the diffeomorphism metric and therefore termed geodesically controlled diffeomorphic active shapes (GDAS). Our principal application in this paper is on robust diffeomorphic mapping methods based on parameterized surface representations of subcortical template structures. Our parametrization of the GDAS evolution is via the initial momentum representation in the tangent space of the template surface. The dimension of this representation is constrained using principal component analysis generated from training samples. In this work, we seek to use template surfaces to generate segmentations of the hippocampus with three data attachment terms: surface matching, landmark matching, and inside-outside modeling from grayscale T1 MR imaging data. This is formulated as an energy minimization problem, where energy describes shape variability and data attachment accuracy, and we derive a variational solution. A gradient descent strategy is employed in the numerical optimization. For the landmark matching case, we demonstrate the robustness of this algorithm as applied to the workflow of a large neuroanatomical study by comparing to an existing diffeomorphic landmark matching algorithm.
机译:本文介绍了结合了大变形微分度量映射的守恒定律的微分活动形状的使用方面的最新进展。满足守恒定律的演化方程是在亚纯度量下的测地线,因此被称为大地控制的亚纯活动形状(GDAS)。我们在本文中的主要应用是基于皮质下模板结构的参数化表面表示的鲁棒微晶映射方法。我们对GDAS演化的参数化是通过模板表面切线空间中的初始动量表示来实现的。使用从训练样本生成的主成分分析来约束此表示的维度。在这项工作中,我们试图使用模板表面来生成具有三个数据附件项的海马体分段:表面匹配,界标匹配以及根据灰度T1 MR成像数据进行的内外建模。这被表述为能量最小化问题,其中能量描述了形状变异性和数据附加精度,我们得出了变分解决方案。在数值优化中采用了梯度下降策略。对于地标匹配的情况,我们通过与现有的微分形地标匹配算法进行比较,证明了该算法在大型神经解剖学研究工作流中的鲁棒性。

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