基于渐近锥体主曲率的三维人脸识别

Yinhang Tang, Xiang Sun, Di Huang, J. Morvan, Yunhong Wang, Liming Chen
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引用次数: 16

摘要

光滑曲面的经典曲率(高斯曲率、平均曲率和主曲率)在三维人脸识别中得到了广泛的应用。然而,由3D传感器产生的面部表面是离散的网格。在本文中,我们提出了一个一般的框架,并在离散曲面上定义了三个主曲率。这些主曲率是由与离散曲面的任意Borel子集相关的渐近锥的构造得到的。它们描述底层网格的局部几何形状。前两个对应于光滑情况下的经典主曲率。我们分离了第三个主曲率,它提供了有意义的几何形状信息。不同Borel子集尺度下的三个主曲率给出了多尺度局部表面描述符。我们将提出的主曲率与基于lnp的面部描述符和SRC相结合进行识别。通过识别和验证实验,验证了FRGC v2.0中第三主曲率和多尺度Borel子集描述子融合在三维人脸上的实用性和准确性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
3D face recognition with asymptotic cones based principal curvatures
The classical curvatures of smooth surfaces (Gaussian, mean and principal curvatures) have been widely used in 3D face recognition (FR). However, facial surfaces resulting from 3D sensors are discrete meshes. In this paper, we present a general framework and define three principal curvatures on discrete surfaces for the purpose of 3D FR. These principal curvatures are derived from the construction of asymptotic cones associated to any Borel subset of the discrete surface. They describe the local geometry of the underlying mesh. First two of them correspond to the classical principal curvatures in the smooth case. We isolate the third principal curvature that carries out meaningful geometric shape information. The three principal curvatures in different Borel subsets scales give multi-scale local facial surface descriptors. We combine the proposed principal curvatures with the LNP-based facial descriptor and SRC for recognition. The identification and verification experiments demonstrate the practicability and accuracy of the third principal curvature and the fusion of multi-scale Borel subset descriptors on 3D face from FRGC v2.0.
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