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A Novel Face Recognition System Base on Nonparametric Discriminant Analysis

机译:基于非参数判别分析的小说识别系统基础

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Biometrics serves to identify the identity of an individual with the help of mathematical analysis of its biological features. In this paper, we propose a novel classification method based on kernel Nonparametric Discriminant Analysis (KNDA). We use the facial features extracted with Gabor descriptor and ordinal filter, which are encoded in local regions, as visual primitives. The different ordinal measures are derived from various kinds of components of Gabor images such as magnitude, phase, real and imaginary. Then, the statistical distributions of these primitives in face image blocks are concatenated to obtain a feature vector whose dimension is reduced using PCA and variance. Each feature vector is treated as a feature input for the proposed Multi-class KNDA classifier. The proposed method incorporates some near-global variations of the data provided by the KNDA. In fact, this latter is based on flexible non-linear separation between face database classes. Moreover, it relaxes the normality assumption of the Linear Discriminant Analysis (LDA). The proposed method is tested on the well-known ORL face database and the Yale face database. Then, it is evaluatedand compared with non-linear classifier (KFD) and linear classifier (LDA) in term of classification accuracy.
机译:在其生物学特征的数学分析的帮助下,生物识别技术有助于确定个人的身份。在本文中,我们提出了一种基于核非参数判别分析(KNDA)的新型分类方法。我们使用用Gabor描述符和序滤器提取的面部特征,该特征在本地区域编码,作为视觉基元。不同的序序测量源自来自诸如幅度,相位,真实和虚部的各种组件。然后,邻接面部图像块中这些基元的统计分布以获得使用PCA和方差减少维度的特征向量。每个特征向量被视为所提出的多级KNDA分类器的特征输入。该方法包括由KNDA提供的数据的一些接近全局变化。事实上,这篇后者基于面部数据库类之间的灵活的非线性分离。此外,它放松了线性判别分析(LDA)的正常假设。所提出的方法在众所周知的orl面部数据库和耶鲁脸部数据库上进行测试。然后,它是评估的与非线性分类器(KFD)和线性分类器(LDA)相比,分类精度相比。

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