Towards Implicit Correspondence in Signed Distance Field Evolution

Miroslava Slavcheva, Maximilian Baust, Slobodan Ilic
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引用次数: 10

Abstract

The level set framework is widely used in geometry processing due to its ability to handle topological changes and the readily accessible shape properties it provides, such as normals and curvature. However, its major drawback is the lack of correspondence preservation throughout the level set evolution. Therefore, data associated with the surface, such as colour, is lost. The objective of this paper is a variational approach for signed distance field evolution which implicitly preserves correspondences. We propose an energy functional based on a novel data term, which aligns the lowest-frequency Laplacian eigenfunction representations of the input and target shapes. As these encode information about natural deformations that the shape can undergo, our strategy manages to prevent data diffusion into the volume. We demonstrate that our system is able to preserve texture throughout articulated motion sequences, and evaluate its geometric accuracy on public data.
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符号距离场演化中的隐对应
水平集框架由于其处理拓扑变化的能力以及它提供的易于访问的形状属性(如法线和曲率)而广泛应用于几何处理。然而,它的主要缺点是在整个水平集演化过程中缺乏对应保存。因此,与表面相关的数据,如颜色,就丢失了。本文的目标是一种隐式保留对应的有符号距离场演化变分方法。我们提出了一个基于新数据项的能量泛函,它将输入和目标形状的最低频率拉普拉斯特征函数表示对齐。由于这些编码信息关于形状可以经历的自然变形,我们的策略设法防止数据扩散到体积中。我们证明了我们的系统能够在整个关节运动序列中保持纹理,并在公共数据上评估其几何精度。
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