Learning weighted sparse representation of encoded facial normal information for expression-robust 3D face recognition

Huibin Li, Di Huang, J. Morvan, Liming Chen
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引用次数: 13

Abstract

This paper proposes a novel approach for 3D face recognition by learning weighted sparse representation of encoded facial normal information. To comprehensively describe 3D facial surface, three components, in X, Y, and Z-plane respectively, of normal vector are encoded locally to their corresponding normal pattern histograms. They are finally fed to a sparse representation classifier enhanced by learning based spatial weights. Experimental results achieved on the FRGC v2.0 database prove that the proposed encoded normal information is much more discriminative than original normal information. Moreover, the patch based weights learned using the FRGC v1.0 and Bosphorus datasets also demonstrate the importance of each facial physical component for 3D face recognition.
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学习编码面部常态信息的加权稀疏表示,用于表情鲁棒性三维人脸识别
本文提出了一种新的三维人脸识别方法,该方法通过学习编码人脸法向信息的加权稀疏表示来实现。为了全面描述三维人脸表面,分别在X、Y、z平面上对法向量的三个分量进行局部编码,得到相应的法向模式直方图。最后将它们馈送到基于学习的空间权重增强的稀疏表示分类器中。在FRGC v2.0数据库上的实验结果表明,本文提出的编码标准信息比原始标准信息具有更强的鉴别能力。此外,使用FRGC v1.0和Bosphorus数据集学习的基于补丁的权重也证明了每个面部物理成分对3D人脸识别的重要性。
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