Variational Barycentric Coordinates

Ana Dodik, Oded Stein, Vincent Sitzmann, Justin Solomon
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Abstract

We propose a variational technique to optimize for generalized barycentric coordinates that offers additional control compared to existing models. Prior work represents barycentric coordinates using meshes or closed-form formulae, in practice limiting the choice of objective function. In contrast, we directly parameterize the continuous function that maps any coordinate in a polytope's interior to its barycentric coordinates using a neural field. This formulation is enabled by our theoretical characterization of barycentric coordinates, which allows us to construct neural fields that parameterize the entire function class of valid coordinates. We demonstrate the flexibility of our model using a variety of objective functions, including multiple smoothness and deformation-aware energies; as a side contribution, we also present mathematically-justified means of measuring and minimizing objectives like total variation on discontinuous neural fields. We offer a practical acceleration strategy, present a thorough validation of our algorithm, and demonstrate several applications.
变分重心坐标
我们提出了一种针对广义重心坐标进行优化的变分技术,与现有模型相比,它提供了额外的控制。之前的研究使用网格或封闭式公式表示重心坐标,实际上限制了目标函数的选择。与此相反,我们使用神经场直接将连续函数参数化,该函数可将多面体内部的任意坐标映射到其偏心坐标。我们对重心坐标的理论表征使这种表述成为可能,这让我们能够构建神经场,对有效坐标的整个函数类别进行参数化。我们使用多种目标函数(包括多重平滑度和变形感知能量)展示了我们模型的灵活性;作为附带贡献,我们还提出了数学上合理的方法来测量和最小化不连续神经场的总变异等目标。我们提供了一种实用的加速策略,对我们的算法进行了全面验证,并演示了几种应用。
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