An improved adaptive discriminant analysis for single sample face recognition

Thitipan Wannakijmongkol, Ittiwat Khornrakhun, T. Chalidabhongse
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引用次数: 4

Abstract

Face recognition is an automated process with the ability to identify individuals by their facial characteristics. Currently there is a problem in which the process requires several examples of the person of interest's face in order to produce accurate outcome, and the process is intolerant to the variation in facial expression and the condition of lighting of the face image needed to be identify. This inspired us to come up with an algorithm to increase accuracy of single sample facial recognition process. In the case where multiple samples are available, the best approach to identify a person by face recognition system is to use Fischer Linear Discriminant Analysis (FLDA) method which use multiple samples to calculate the within-class scatter matrix and could give output accurately. However with only one sample it means the sample does not have any variation, hence impossible to find the within-class scatter matrix. The Adaptive Discriminant Learning (ADL) [1] was proposed to solve the problem by deducing the within-class scatter matrix from auxiliary generic set which consist of multiple samples per person then use FLDA to recognize face image. In this paper, we improve the method by preprocessing the input image using a local illumination normalization to make the feature of the face became more obvious and suppress the effect of illumination variation and incorporating a part-based methodology to further increase the recognition rate. The system was tested with the FERET face database, and the recognition rate is improved from 77% to 93%.
一种改进的单样本人脸识别自适应判别分析
人脸识别是一个自动化的过程,能够通过他们的面部特征来识别个人。目前存在的一个问题是,为了产生准确的结果,该过程需要对目标人脸的多个示例进行处理,并且该过程对需要识别的人脸图像的面部表情变化和光照条件不耐受。这启发了我们提出一种算法来提高单样本面部识别过程的准确性。在有多个样本的情况下,人脸识别系统识别人的最佳方法是使用Fischer线性判别分析(FLDA)方法,该方法使用多个样本计算类内散点矩阵并能准确地给出输出。然而,只有一个样本意味着样本没有任何变化,因此不可能找到类内散点矩阵。为了解决这一问题,提出了自适应判别学习(ADL)[1]算法,从每个人包含多个样本的辅助泛型集中推导出类内散点矩阵,然后使用FLDA进行人脸图像识别。本文通过对输入图像进行局部光照归一化预处理,使人脸特征更加明显,抑制光照变化的影响,并结合基于局部的方法进一步提高人脸识别率。利用FERET人脸数据库对该系统进行了测试,识别率由77%提高到93%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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