保留非刚性形状对应的细节

Manika Bindal, Venkatesh Kamat
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引用次数: 0

摘要

对我们(人类)来说,理解形状是一个有机的过程,因为这是我们与周围世界互动的基础。然而,这对机器来说是令人生畏的。由于可用数据集的分辨率不断提高,任何形状分析任务,特别是非刚性形状对应都具有挑战性。形状对应是指在各种形状元素之间找到一个映射。功能映射框架不直接处理形状,而是在每个形状上指定一个附加结构,然后在形状的谱域中进行分析,从而有效地解决了这一问题。为了确定区域,拉普拉斯-贝尔特拉米算子由于其能够捕获形状的全局几何形状而被广泛使用。然而,它往往会平滑形状的高频特征,导致无法捕捉到精细的细节和形状的尖锐特征进行分析。为了捕捉这种形状的高频尖锐特征,本工作提出利用具有高斯曲率的哈密顿算子作为内禀势函数来识别域。在计算上,它的定义没有额外的成本,保持形状的全局结构信息完整,并保留形状的清晰细节,以便计算更好的形状之间的点对点对应映射。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Detail Preserving Non-rigid Shape Correspondences
Understanding shapes is an organic process for us (humans) as this is fundamental to our interaction with the surrounding world. However, it is daunting for the machines. Any shape analysis task, particularly non-rigid shape correspondence is challenging due to the ever-increasing resolution of datasets available. Shape Correspondence refers to finding a mapping among various shape elements. The functional map framework deals with this problem efficiently by not processing the shapes directly but rather specifying an additional structure on each shape and then performing analysis in the spectral domain of the shapes. To determine the domain, the Laplace-Beltrami operator has been utilized generally due to its capability of capturing the global geometry of the shape. However, it tends to smoothen out high-frequency features of shape, which results in failure to capture fine details and sharp features of shape for the analysis. To capture such high-frequency sharp features of the shape, this work proposes to utilize a Hamiltonian operator with gaussian curvature as an intrinsic potential function to identify the domain. Computationally it is defined at no additional cost, keeps global structural information of the shape intact and preserves sharp details of the shape in order to compute a better point-to-point correspondence map between shapes.
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