高阶代数符号距离域

Gábor Valasek, Róbert Bán
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引用次数: 1

摘要

有符号距离函数(sdf)是曲线和曲面的强大隐式表示。除了将体边界编码为零水平集之外,当它们将带符号的距离映射到空间中的所有点时,它们还传达了关于场景的全局几何信息。在实时应用中,它们最常见的数值表示是二维或三维的规则网格。结合插值方法来推断空间中所有点所需的连续近似值,这些可以在GPU上有效地评估,这样即使是最苛刻的应用程序也可以利用它们[4,5]。一些作者提出对样本的SDF使用一阶近似,例如梯度[3]或平面方程[1]。在本文中,我们将这种方法直接推广到高阶,并讨论了对样本进行适当过滤的各种替代方法,以便推断出的SDF在样本处重建给定的高阶导数。我们的重点是高性能可视化应用程序,因此,我们优先考虑运行时性能而不是最佳存储,并将我们的测量中的采样拓扑限制为规则网格。我们还讨论了这种方法作为减少复杂形状存储的手段的缺点。
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Higher Order Algebraic Signed Distance Fields
Introduction: Signed distance functions (SDFs) are powerful implicit representations of curves and surfaces. Beyond encoding volume boundaries as their zero level-set, they also convey global geometric information about the scene as they map signed distances to all points in space. In real-time applications, their most common numerical representation is a regular grid of two or three dimensions. In conjunction with an interpolation method to infer a continuous approximation de ned on all points of space, these can be e ciently evaluated on the GPU such that even the most demanding applications can utilize them [4, 5]. Several authors proposed to use rst order approximations to the SDF at the samples, e.g. gradients [3] or plane equations [1]. In this paper, we present a straightforward generalization of this approach to higher orders and discuss various alternatives to the appropriate ltering of samples such that the inferred SDF reconstructs the given higher order derivatives at the samples. Our focus is on applications in high performance visualizations, as such, we prioritize run-time performance over optimal storage and restrict sampling topologies in our measurements to regular grids. We also discuss the shortcomings of this approach as means to decrease storage for complex shapes.
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Proceedings of CAD’22, Beijing, China, July 11-13, 2022, 282-286 © 2022 CAD Solutions, LLC, http://www.cad-conference.net Title: Perspectives on User’s Acceptance of Human-machine Interface in Autonomous Vehicles Enhancing Size Perception with True-Size Viewing CAD plug-in and Cloud-enabled AR APP Design Automation of Lattice-based Customized Orthopedic for Load-bearing Implants Reconfigurable Soft Robots based on Modular Design Operations on Signed Distance Function Estimates
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