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Using Symlet Decomposition Method, Fuzzy Integral and Fisherface Algorithm for Face Recognition

机译:使用Syplate分解方法,模糊积分和派对算法进行面部识别

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In this paper, we have proposed an approach for face recognition by composing Symlet decomposition, Fisherface algorithm, and Sugeno and Choquet Fuzzy Integral. This approach consists of four main sections: the first section uses Symlet, one of the Wavelet families, to transform an image into four sub-images which are called approximate, horizontal, vertical and diagonal partial images respectively. The aim of this work is to extract intrinsic facial features. The second section of this approach uses Fisherface method which is composed of PCA and LDA. The reason for using this was that it is not sensitive to intensive light variations and facial expression and gesture. The third and forth section of this approach, are related to the aggregation of the individual classifiers by means of the fuzzy integral. Both Sugeno and Choquet fuzzy integral are considered as methods for classifier aggregation. In this paper, Olivetti Research Labs face database is used for acquiring experimental results. The approach presented in this paper, will lead to better Classification Performance compared to other Classification methods.
机译:在本文中,我们提出了一种通过编写Syplet分解,Fisherface算法和Sugeno和Choquet模糊积分来对人脸识别的方法。该方法由四个主要部分组成:第一部分使用Syple,其中一个小波系列,将图像转换为四个子图像,分别称为近似,水平,垂直和对角线部分图像。这项工作的目的是提取内在的面部特征。该方法的第二部分使用由PCA和LDA组成的Fisherface方法。使用这一点的原因是它对密集光变化和面部表情和姿态不敏感。这种方法的第三部分和第三部分通过模糊积分与各分类器的聚集有关。 Sugeno和Choquet模糊积分都被视为分类器聚合的方法。在本文中,Olivetti Research Labs面部数据库用于获取实验结果。与其他分类方法相比,本文提出的方法将导致更好的分类性能。

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