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Design of Face Recognition Algorithm Realized with Feature Extraction from 2D-LDA and Optimized Polynomial-based RBF NNs

机译:用2D-LDA和优化的基于多项式RBF NNS的特征提取实现的人脸识别算法设计

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This study elaborates on a design of a face recognition algorithm realized with feature extraction from 2D-LDA and the use of polynomial-based radial basis function neural networks (P-RBF NNS). The overall face recognition system consists of two modules such as the preprocessing part and recognition part. The proposed polynomial-based radial basis function neural networks is used as an the recognition part of the overall face recognition system, while a data preprocessing algorithm presented of 2 dimensional linear discriminant analysis (2D-LDA) is exploited to data preprocessing. The essential design parameters are optimized by means of differential evolution (DE). The experimental results for benchmark face datasets - the Yale and ORL database - demonstrate the effectiveness and efficiency of 2D-LDA algorithm compared with other approaches such as principal component analysis (PCA), and fusion of PCA-LDA.
机译:本研究详细说明了使用2D-LDA特征提取的人脸识别算法的设计,以及使用基于多项式的径向基函数神经网络(P-RBF NNS)。整体面部识别系统由两个模块组成,例如预处理部分和识别部分。所提出的多项式的径向基函数神经网络用作整体面部识别系统的识别部分,而呈现由2维线性判别分析(2D-LDA)的数据预处理算法被利用到数据预处理。基本设计参数通过差分进化(DE)进行了优化。基准面部数据集的实验结果 - 耶鲁和orl数据库 - 展示了2D-LDA算法的有效性和效率与其他方法,如主成分分析(PCA),以及PCA-LDA的融合。

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