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Three Dimensional Face Recognition via Surface Harmonic Mapping and Deep Learning

机译:通过表面谐波映射和深度学习进行三维人脸识别

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In this paper, we propose a general 3D face recognition framework by combining the idea of surface harmonic mapping and deep learning. In particular, given a 3D face scan, we first run the preprocessing pipeline and detect three main facial landmarks (i.e., nose tip and two inner eye corners). Then, harmonic mapping is employed to map the 3D coordinates and differential geometry quantities (e.g., normal vectors, curvatures) of each 3D face scan to a 2D unit disc domain, generating a group of 2D harmonic shape images (HSI). The 2D rotation of the harmonic shape images are removed by using the three detected landmarks. All these pose normalized harmonic shape images are fed into a pre-trained deep convolutional neural network (DCNN) to generate their deep representations. Finally, sparse representation classifier with score-level fusion is used for face similarity measurement and the final decision. The advantage of our method is twofold: (i) it is a general framework and can be easily extended to other surface mapping and deep learning algorithms, (ii) it is registration-free and only needs three landmarks. The effectiveness of the proposed framework was demonstrated on the BU-3DFE database, and reporting a rank-one recognition rate of 89.38% on the whole database.
机译:在本文中,我们结合了表面谐波映射和深度学习的思想,提出了一个通用的3D人脸识别框架。特别是,在进行3D面部扫描的情况下,我们首先运行预处理管道并检测三个主要的面部标志(即鼻尖和两个内眼角)。然后,采用谐波映射将每个3D面部扫描的3D坐标和微分几何量(例如法向矢量,曲率)映射到2D单位磁盘域,从而生成一组2D谐波形状图像(HSI)。通过使用三个检测到的界标,可以去除谐波形状图像的2D旋转。所有这些姿势归一化的谐波形状图像被馈入到预训练的深度卷积神经网络(DCNN)中以生成其深度表示。最后,将具有分数级融合的稀疏表示分类器用于人脸相似性测量和最终决策。我们方法的优点是双重的:(i)它是一个通用框架,可以轻松扩展到其他表面贴图和深度学习算法;(ii)它是免注册的,只需要三个界标。 BU-3DFE数据库证明了该框架的有效性,在整个数据库中报告的识别率为89.38%。

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