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Geometric Distribution Weight Information Modeled Using Radial Basis Function with Fractional Order for Linear Discriminant Analysis Method

机译:基于分数阶径向基函数的几何分布权重信息线性判别分析方法

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摘要

Fisher linear discriminant analysis (FLDA) is a classic linear feature extraction and dimensionality reduction approach for face recognition. It is known that geometric distribution weight information of image data plays an important role in machine learning approaches. However, FLDA does not employ the geometric distribution weight information of facial images in the training stage. Hence, its recognition accuracy will be affected. In order to enhance the classification power of FLDA method, this paper utilizes radial basis function (RBF) with fractional order to model the geometric distribution weight information of the training samples and proposes a novel geometric distribution weight information based Fisher discriminant criterion. Subsequently, a geometric distribution weight information based LDA (GLDA) algorithm is developed and successfully applied to face recognition. Two publicly available face databases, namely, ORL and FERET databases, are selected for evaluation. Compared with some LDA-based algorithms, experimental results exhibit that our GLDA approach gives superior performance.
机译:Fisher线性判别分析(FLDA)是用于面部识别的经典线性特征提取和降维方法。众所周知,图像数据的几何分布权重信息在机器学习方法中起着重要的作用。但是,FLDA在训练阶段不使用面部图像的几何分布权重信息。因此,其识别精度将受到影响。为了提高FLDA方法的分类能力,本文利用分数阶径向基函数(RBF)对训练样本的几何分布权重信息进行建模,提出了一种基于Fisher判别准则的新型几何分布权重信息。随后,开发了一种基于几何分布权重信息的LDA(GLDA)算法,并将其成功应用于人脸识别。选择两个公开可用的人脸数据库,即ORL和FERET数据库进行评估。与某些基于LDA的算法相比,实验结果表明,我们的GLDA方法具有出色的性能。

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