基于表情分类的表情不变人脸识别

Xiaoxing Li, Greg Mori, Hao Zhang
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引用次数: 80

摘要

人脸识别是计算机视觉和模式识别领域研究最深入的课题之一。面部表情改变了人脸的几何形状,通常会对人脸识别系统的性能产生不利影响。另一方面,面部几何形状是一个有用的识别线索。考虑到这些,我们利用分离人脸图像中的几何和纹理信息的思想,并通过将两种类型的信息投影到单独的PCA空间中来建模,这些PCA空间专门用于捕获不同个体之间的独特特征。然后,将纹理和几何属性重新组合,形成能够识别不同表情人脸的分类器。最后,通过对面部几何的研究,我们可以确定哪种类型的面部表情被执行,从而建立一个表情分类器。给出了该方法的数值验证。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Expression-Invariant Face Recognition with Expression Classification
Face recognition is one of the most intensively studied topics in computer vision and pattern recognition. Facial expression, which changes face geometry, usually has an adverse effect on the performance of a face recognition system. On the other hand, face geometry is a useful cue for recognition. Taking these into account, we utilize the idea of separating geometry and texture information in a face image and model the two types of information by projecting them into separate PCA spaces which are specially designed to capture the distinctive features among different individuals. Subsequently, the texture and geometry attributes are re-combined to form a classifier which is capable of recognizing faces with different expressions. Finally, by studying face geometry, we are able to determine which type of facial expression has been carried out, thus build an expression classifier. Numerical validations of the proposed method are given.
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