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首页> 外文期刊>International Journal of Engineering Research and Applications >An Improved Face Recognition Using Neighborhood Defined Modular Phase Congruency Based Kernel PCA
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An Improved Face Recognition Using Neighborhood Defined Modular Phase Congruency Based Kernel PCA

机译:基于邻域定义的模块化相位一致性的核PCA的改进人脸识别

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face recognition algorithm based on NMPKPCA algorithm presented in this paper. The proposed algorithm when compared with conventional Principal component analysis (PCA) algorithms has an improved recognition Rate for face images with large variations in illumination, facial expressions. In this technique, first phase congruency features are extracted from the face image so that effects due to illumination variations are avoided by considering phase component of image. Then, face images are divided into small sub images and the kernel PCA approach is applied to each of these sub images. but, dividing into small or large modules creates some problems in recognition. So a special modulation called neighborhood defined modularization approach presented in this paper, so that effects due to facial variations are avoided. Then, kernel PCA has been applied to each module to extract features. So a feature extraction technique for improving recognition accuracy of a visual image based facial recognition system presented in this paper.
机译:本文提出了一种基于NMPKPCA算法的人脸识别算法。与传统的主成分分析(PCA)算法相比,该算法对光照,面部表情变化较大的面部图像具有更高的识别率。在该技术中,从面部图像提取第一相位一致特征,从而通过考虑图像的相位分量来避免由于照明变化而引起的影响。然后,将面部图像划分为小的子图像,并将内核PCA方法应用于这些子图像中的每一个。但是,分为小模块或大模块会在识别方面带来一些问题。因此,本文提出了一种称为邻域定义的模块化方法的特殊调制方式,从而避免了由于面部变化而产生的影响。然后,内核PCA已应用于每个模块以提取特征。因此,本文提出了一种用于提高基于视觉图像的面部识别系统的识别精度的特征提取技术。

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