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首页> 外文期刊>ACM Transactions on Graphics >Natural Boundary Conditions for Smoothing in Geometry Processing
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Natural Boundary Conditions for Smoothing in Geometry Processing

机译:几何处理中平滑的自然边界条件

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In geometry processing, smoothness energies are commonly used to model scattered data interpolation, dense data denoising, and regularization during shape optimization. The squared Laplacian energy is a popular choice of energy and has a corresponding standard implementation: squaring the discrete Laplacian matrix. For compact domains, when values along the boundary are not known in advance, this construction bakes in low-order boundary conditions. This causes the geometric shape of the boundary to strongly bias the solution. For many applications, this is undesirable. Instead, we propose using the squared Frobenius norm of the Hessian as a smoothness energy. Unlike the squared Laplacian energy, this energy's natural boundary conditions (those that best minimize the energy) correspond to meaningful high-order boundary conditions. These boundary conditions model free boundaries where the shape of the boundary should not bias the solution locally. Our analysis begins in the smooth setting and concludes with discretizations using finite-differences on 2D grids or mixed finite elements for triangle meshes. We demonstrate the core behavior of the squared Hessian as a smoothness energy for various tasks.
机译:在几何处理中,平滑度能量通常用于对形状优化过程中的分散数据插值,密集数据去噪和正则化进行建模。平方拉普拉斯能量是一种流行的能量选择,并具有相应的标准实现:对离散拉普拉斯矩阵求平方。对于紧凑域,如果事先不知道沿边界的值,则此构造在低阶边界条件下烘烤。这导致边界的几何形状强烈地使解决方案产生偏差。对于许多应用程序,这是不希望的。相反,我们建议使用黑森州的平方Frobenius范数作为平滑度能量。与平方拉普拉斯能量不同,此能量的自然边界条件(最能使能量最小化的条件)对应于有意义的高阶边界条件。这些边界条件为自由边界建模,其中边界的形状不应在局部偏斜解决方案。我们的分析从平滑设置开始,最后使用2D网格上的有限差分或三角形网格的混合有限元进行离散化。我们展示了粗麻布平方的核心行为作为各种任务的平滑能量。

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