人脸判读与重建的统计判别模型

Edson C. Kitani, C. Thomaz, D. Gillies
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引用次数: 16

摘要

多元统计方法在识别人脸图像和描述其差异方面发挥了重要作用。本文介绍了利用两阶段分离超平面,即统计判别模型(SDM)来解释和重建人脸图像的思想。类似于Cootes等人提出的著名的主动外观模型,SDM需要预先将所有图像对齐到一个共同的模板,以最小化不一定与面部差异相关的变化。然而,SDM不是在图像上使用地标或注释,而是基于使用PCA降低原始图像的维数和最大不确定性线性分类器(MLDA)来表征图像组之间最具区别性的变化的思想。基于正面人脸图像的实验结果表明,SDM方法可以直观地解释群体之间的差异,重建人类非常主观的特征,如美丽和幸福
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A Statistical Discriminant Model for Face Interpretation and Reconstruction
Multivariate statistical approaches have played an important role of recognising face images and characterizing their differences. In this paper, we introduce the idea of using a two-stage separating hyper-plane, here called statistical discriminant model (SDM), to interpret and reconstruct face images. Analogously to the well-known active appearance model proposed by Cootes et. al, SDM requires a previous alignment of all the images to a common template to minimise variations that are not necessarily related to differences between the faces. However, instead of using landmarks or annotations on the images, SDM is based on the idea of using PCA to reduce the dimensionality of the original images and a maximum uncertainty linear classifier (MLDA) to characterise the most discriminant changes between the groups of images. The experimental results based on frontal face images indicate that the SDM approach provides an intuitive interpretation of the differences between groups, reconstructing characteristics that are very subjective in human beings, such as beauty and happiness
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