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A Surface-Theoretic Approach for Statistical Shape Modeling

机译:统计形状建模的表面理论方法

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摘要

We present a novel approach for nonlinear statistical shape modeling that is invariant under Euclidean motion and thus alignment-free. By analyzing metric distortion and curvature of shapes as elements of Lie groups in a consistent Riemannian setting, we construct a framework that reliably handles large deformations. Due to the explicit character of Lie group operations, our non-Euclidean method is very efficient allowing for fast and numerically robust processing. This facilitates Riemannian analysis of large shape populations accessible through longitudinal and multi-site imaging studies providing increased statistical power. We evaluate the performance of our model w.r.t. shape-based classification of pathological malformations of the human knee and show that it outperforms the standard Euclidean as well as a recent nonlinear approach especially in presence of sparse training data. To provide insight into the model's ability of capturing natural biological shape variability, we carry out an analysis of specificity and generalization ability.
机译:我们提出了一种新的非线性统计形状建模方法,该方法在欧几里得运动下是不变的,因此不需要对准。通过在一致的黎曼设置中分析度量变形和形状曲率作为李群的元素,我们构建了一个可靠地处理大变形的框架。由于李群运算的显着特征,我们的非欧几里德方法非常有效,可以进行快速且数值稳定的处理。这有助于通过纵向和多站点成像研究进行较大形状种群的黎曼分析,从而提高了统计能力。我们评估模型的性能基于形状的人类膝关节病理畸形分类,并显示它优于标准的欧几里得以及最近的非线性方法,尤其是在存在稀疏训练数据的情况下。为了提供对模型捕获自然生物形状变异性的能力的了解,我们进行了特异性和泛化能力的分析。

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