Separating useful from useless image variation for face recognition

P. Kalocsai
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Abstract

For a general purpose face recognition system one of the largest challenge is to separate useful identity related from useless variations in the image data due to nuisance variables such as: orientation, lighting, expression, possible disguise. A recognition system is presented in which the effect of the secondary/nuisance variables is to a large degree accounted for before the matching process even begins. Greatly improved performance is shown on a large database of faces in 42 conditions.
从无用的图像变化中分离有用的人脸识别
对于一个通用的人脸识别系统,最大的挑战之一是将有用的身份从图像数据中无用的变化中分离出来,这些变化是由于令人讨厌的变量,如:方向,照明,表情,可能的伪装。提出了一种识别系统,其中次要/讨厌变量的影响在匹配过程开始之前就在很大程度上得到了考虑。在42种情况下的大型人脸数据库上显示了极大的性能改进。
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