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Facial Shape Spaces from Surface Normals

机译:来自表面法线的面部形状空间

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摘要

In this paper, we draw on ideas from the field of statistical shape analysis to construct shape-spaces that span facial expressions and gender, and use the resulting shape-model to perform face recognition under varying expression and gender. Our novel contribution is to show how to construct shape-spaces over fields of surface normals rather than Cartesian landmark points. According to this model face needle-maps (or fields of surface normals) are points in a high-dimensional manifold referred to as a shape-space. We compute geodesic distances to compare the similarity between faces and gender difference.
机译:在本文中,我们从统计形状分析领域汲取思想,以构建跨越面部表情和性别的形状空间,并使用所产生的形状模型在不同的表达和性别下执行面部识别。我们的新贡献是展示如何在表面法线领域而不是笛卡尔地标点构建形状空间。根据该模型,面部针映射(或表面法线的场)是高维歧管中的点,称为形状空间。我们计算测地距离以比较面部和性别差异之间的相似性。

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