基于傅立叶级数的三维人脸识别表情变形模型

Chuanjun Wang, Xuefeng Bai, Tiejun Zhang, X. Niu
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引用次数: 1

摘要

提出了一种基于傅立叶级数的三维人脸识别表情变形模型。给定一组具有足够面部表情的训练3D面部扫描,首先对这些面部扫描进行预处理,并将其表示为一系列傅立叶级数系数。然后,计算同一受试者的非中性和中性面部扫描之间的形状残差。假设这些残基包含表达式变形模式,并应用主成分分析来学习这些模式。然后利用PCA生成的低维子空间中具有顶特征值的特征向量构建表达式变形模型。实验结果表明了所提出的表情变形模型在识别场景中的可行性和优越性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A Fourier series based expression deformation model for 3D face recognition
This paper presents a Fourier series based expression deformation model for 3D face recognition. Given a set of training 3D face scans with sufficient facial expressions, these face scans are first preprocessed and represented as a series of Fourier series coefficients. Then, the shape residues between the non-neutral and neutral face scans of the same subject are calculated. These residues are supposed to contain the expression deformation patterns and PCA is applied to learn these patterns. The eigenvector with top eigenvalue in the generated lower dimensional subspace of PCA is then used to build the expression deformation model. Experimental results show the feasibility and merits of the proposed expression deformation model in the recognition scenario.
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