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Facial gender classification using shape-from-shading

机译:使用阴影形状进行面部性别分类

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The aim in this paper is to show how to use the 2.5D facial surface normals (needle-maps) recovered using shape-from-shading (SFS) to perform gender classification. We use principal geodesic analysis (PGA) to model the distribution of facial surface normals which reside on a Remannian manifold. We incorporate PGA into shape-from-shading, and develop a principal geodesic shape-from-shading (PGSFS) method. This method guarantees that the recovered needle-maps exhibit realistic facial shape by satisfying a statistical model. Moreover, because the recovered facial needle-maps satisfy the data-closeness constraint as a hard constraint, they not only encode facial shape but also implicitly encode image intensity. Experiments explore the gender classification performance using the recovered facial needle-maps on two databases (Notre Dame and FERET), and compare the results with those obtained using intensity images. The results demonstrate the feasibility of gender classification using the recovered facial shape information.
机译:本文的目的是展示如何使用从阴影形状(SFS)恢复的2.5D面部表面法线(针图)进行性别分类。我们使用主测地线分析(PGA)对驻留在Remannian流形上的面部法线分布进行建模。我们将PGA合并到阴影形状中,并开发了一种主要的测地线形状阴影(PGSFS)方法。该方法通过满足统计模型来保证所恢复的针状图表现出逼真的面部形状。此外,由于恢复的面部针图满足作为硬约束的数据接近性约束,因此它们不仅对面部形状进行编码,而且对图像强度进行隐式编码。实验使用两个数据库(Notre Dame和FERET)上恢复的面部针形图探索性别分类的性能,并将结果与​​使用强度图像获得的结果进行比较。结果证明了使用恢复的面部形状信息进行性别分类的可行性。

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