We propose a data-driven mean-curvature solver for the level-set method. This work is the natural extension to $\mathbb{R}^3$ of our two-dimensional strategy in [DOI: 10.1007/s10915-022-01952-2][1] and the hybrid inference system of [DOI: 10.1016/j.jcp.2022.111291][2]. However, in contrast to [1,2], which built resolution-dependent neural-network dictionaries, here we develop a pair of models in $\mathbb{R}^3$, regardless of the mesh size. Our feedforward networks ingest transformed level-set, gradient, and curvature data to fix numerical mean-curvature approximations selectively for interface nodes. To reduce the problem's complexity, we have used the Gaussian curvature to classify stencils and fit our models separately to non-saddle and s...
This thesis describes a new approach to computing mean curvature and mean curvature normals on smoot...
Littmann E, Ritter H. Curvature estimation with a DCA neural network. In: Deutsche Arbeitsgemeinscha...
We approach the problem of unfolding the surface of the cerebral cortex by modeling the problem as a...
We present an error-neural-modeling-based strategy for approximating two-dimensional curvature in th...
We introduce in this paper new, efficient numerical methods based on neural networks for the approxi...
The highly non-linear nature of deep neural networks causes them to be susceptible to adversarial ex...
\u3cp\u3eThe volume of fluid (VOF) method is widely used to simulate the flow of immiscible fluids. ...
Subdivision is an important and widely used technique for obtaining dense meshes from coarse control...
technical reportLevel set methods are a powerful tool for implicitly representing deformable surfac...
The volume of fluid (VOF) method is widely used to simulate the flow of immiscible fluids. It uses a...
The paper presents a novel solution to the issue of incomplete regions in 3D meshes obtained through...
A novel technique for multiscale curvature computation on a smoothed 3-D surface is presented. This ...
We introduce in this paper new, efficient numerical methods based on neural networks for the approxi...
An advantage of using level set methods for moving boundary problems is that geometric quantities su...
Implicit shape representations, such as Level Sets, provide a very elegant formulation for performin...
This thesis describes a new approach to computing mean curvature and mean curvature normals on smoot...
Littmann E, Ritter H. Curvature estimation with a DCA neural network. In: Deutsche Arbeitsgemeinscha...
We approach the problem of unfolding the surface of the cerebral cortex by modeling the problem as a...
We present an error-neural-modeling-based strategy for approximating two-dimensional curvature in th...
We introduce in this paper new, efficient numerical methods based on neural networks for the approxi...
The highly non-linear nature of deep neural networks causes them to be susceptible to adversarial ex...
\u3cp\u3eThe volume of fluid (VOF) method is widely used to simulate the flow of immiscible fluids. ...
Subdivision is an important and widely used technique for obtaining dense meshes from coarse control...
technical reportLevel set methods are a powerful tool for implicitly representing deformable surfac...
The volume of fluid (VOF) method is widely used to simulate the flow of immiscible fluids. It uses a...
The paper presents a novel solution to the issue of incomplete regions in 3D meshes obtained through...
A novel technique for multiscale curvature computation on a smoothed 3-D surface is presented. This ...
We introduce in this paper new, efficient numerical methods based on neural networks for the approxi...
An advantage of using level set methods for moving boundary problems is that geometric quantities su...
Implicit shape representations, such as Level Sets, provide a very elegant formulation for performin...
This thesis describes a new approach to computing mean curvature and mean curvature normals on smoot...
Littmann E, Ritter H. Curvature estimation with a DCA neural network. In: Deutsche Arbeitsgemeinscha...
We approach the problem of unfolding the surface of the cerebral cortex by modeling the problem as a...