Coordinate-based neural networks parameterizing implicit surfaces have emerged as efficient representations of geometry. They effectively act as parametric level sets with the zero-level set defining the surface of interest. We present a framework that allows applying deformation operations defined for triangle meshes onto such implicit surfaces. Several of these operations can be viewed as energy-minimization problems that induce an instantaneous flow field on the explicit surface. Our method uses the flow field to deform parametric implicit surfaces by extending the classical theory of level sets. We also derive a consolidated view for existing methods on differentiable surface extraction and rendering, by formalizing connections to the level-set theory. We show that these methods drift from the theory and that our approach exhibits improvements for applications like surface smoothing, mean-curvature flow, inverse rendering and user-defined editing on implicit geometry.
翻译:以坐标为基础的神经网络对隐含表面进行参数参数化,已成为对几何的有效表达方式。它们有效地作为参数水平组,用零层组来界定感兴趣的表面。我们提出了一个框架,允许在隐含表面上应用三角间隙定义的变形操作。其中一些操作可被视为能源最小化问题,在显露表面引起瞬时流动场。我们的方法是利用流动场来通过扩展典型的等级组理论来变形隐含表面。我们还通过将可变地表提取和生成的现有方法与定级理论正式挂钩,得出了一个综合观点。我们表明,这些方法从理论中流出,我们的方法显示,在表面平滑、中度流、反向转换和对隐含的几何测量进行用户定义的编辑等应用方面出现了改进。