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A Parameterization-Based Numerical Method for Isotropic and Anisotropic Diffusion Smoothing on Non-Flat Surfaces

机译:基于参数化的非平坦表面各向同性和各向异性扩散的数值方法

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Neuroimaging data, such as 3-D maps of cortical thickness or neural activation, can often be analyzed more informatively with respect to the cortical surface rather than the entire volume of the brain. Any cortical surface-based analysis should be carried out using computations in the intrinsic geometry of the surface rather than using the metric of the ambient 3-D space. We present parameterization-based numerical methods for performing isotropic and anisotropic filtering on triangulated surface geometries. In contrast to existing FEM-based methods for triangulated geometries, our approach accounts for the metric of the surface. In order to discretize and numerically compute the isotropic and anisotropic geometric operators, we first parameterize the surface using a $p$-harmonic mapping. We then use this parameterization as our computational domain and account for the surface metric while carrying out isotropic and anisotropic filtering. To validate our method, we compare our numerical results to the analytical expression for isotropic diffusion on a spherical surface. We apply these methods to smoothing of mean curvature maps on the cortical surface, a step commonly required for analysis of gyrification or for registering surface-based maps across subjects.
机译:神经影像数据,例如皮质厚度或神经激活的3-D图,通常可以相对于皮质表面而不是大脑的整个体积进行更丰富的分析。任何基于皮层表面的分析都应使用表面的固有几何形状进行计算,而不要使用周围3-D空间的度量。我们提出了基于参数化的数值方法,用于对三角表面几何形状进行各向同性和各向异性过滤。与现有的基于FEM的三角几何方法相比,我们的方法考虑了表面的度量。为了离散化和数值计算各向同性和各向异性几何算符,我们首先使用$ p $谐波映射参数化曲面。然后,我们将此参数化用作我们的计算域,并在进行各向同性和各向异性过滤时考虑表面度量。为了验证我们的方法,我们将数值结果与球面上各向同性扩散的解析表达式进行了比较。我们将这些方法应用于皮质表面平均曲率图的平滑处理,这是分析回旋或注册跨主体的基于表面的图通常需要的步骤。

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