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Face Recognition Using Principal Geodesic Analysis and Manifold Learning

机译:面部识别使用主要测地分析和多元化学习

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This paper describes how face recognition can be effected using 3D shape information extracted from single 2D image views. We characterise the shape of the field of facial normals using a statistical model based on principal geodesic analysis. The model can be fitted to 2D brightness images of faces to recover a vector of shape parameters. Since it captures variations in a field of surface normals, the dimensionality of the shape vector is twice the number of image pixels. We investigate how to perform face recognition using the output of PGA by applying a number of dimensionality reduction techniques including principal components analysis, locally linear embedding, locality preserving projection and Isomap.
机译:本文介绍了如何使用从单个2D图像视图中提取的3D形式信息实现面部识别。基于主测地分析的统计模型,我们使用基于统计模型来表征面部法线领域的形状。该模型可以装配到2D亮度图像的面,以恢复形状参数的矢量。由于它捕获了表面法线场中的变化,因此形状矢量的维度是图像像素的数量的两倍。我们通过应用包括主要成分分析,局部线性嵌入,位置保留投影和ISOMAP的多维数减少技术来研究如何使用PGA的输出进行面部识别。

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