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Visualizing Shape Deformations with Variation of Geometric Spectrum

机译:可视化具有几何谱变化的形状变形

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This paper presents a novel approach based on spectral geometry to quantify and visualize non-isometric deformations of 3D surfaces by mapping two manifolds. The proposed method can determine multi-scale, non-isometric deformations through the variation of Laplace-Beltrami spectrum of two shapes. Given two triangle meshes, the spectra can be varied from one to another with a scale function defined on each vertex. The variation is expressed as a linear interpolation of eigenvalues of the two shapes. In each iteration step, a quadratic programming problem is constructed, based on our derived spectrum variation theorem and smoothness energy constraint, to compute the spectrum variation. The derivation of the scale function is the solution of such a problem. Therefore, the final scale function can be solved by integral of the derivation from each step, which, in turn, quantitatively describes non-isometric deformations between two shapes. To evaluate the method, we conduct extensive experiments on synthetic and real data. We employ real epilepsy patient imaging data to quantify the shape variation between the left and right hippocampi in epileptic brains. In addition, we use longitudinal Alzheimer data to compare the shape deformation of diseased and healthy hippocampus. In order to show the accuracy and effectiveness of the proposed method, we also compare it with spatial registration-based methods, e.g., non-rigid Iterative Closest Point (ICP) and voxel-based method. These experiments demonstrate the advantages of our method.
机译:本文提出了一种基于光谱几何的新颖方法,通过映射两个歧管来量化和可视化3D表面的非等距变形。所提出的方法可以通过改变两个形状的拉普拉斯-贝尔特拉米光谱来确定多尺度,非等距变形。给定两个三角形网格,光谱可以在每个顶点上定义比例函数的情况下变化。该变化表示为两个形状的特征值的线性插值。在每个迭代步骤中,基于我们得出的频谱变化定理和平滑能量约束,构造一个二次规划问题,以计算频谱变化。比例函数的推导就是解决这一问题的方法。因此,可以通过对每个步骤的积分进行积分来求解最终的比例函数,然后依次定量描述两个形状之间的非等距变形。为了评估该方法,我们对合成和真实数据进行了广泛的实验。我们采用真实的癫痫患者影像学数据来量化癫痫脑中左右海马体之间的形状变化。此外,我们使用纵向Alzheimer数据比较患病和健康海马体的形状变形。为了显示该方法的准确性和有效性,我们还将其与基于空间配准的方法(例如非刚性迭代最近点(ICP)和基于体素的方法)进行了比较。这些实验证明了我们方法的优点。

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