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A Novel Subspace-Based Facial Discriminant Feature Extraction Method

机译:一种新的基于子空间的面部识别特征提取方法

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This paper presented a novel subspace-based facial discriminant feature extraction method, i.e. orthogonalized direct linear discriminant analysis (OD-LDA), whose discriminant vectors could be obtained by performing Gram-Schmidt orthogonal procedure on a set of discriminant vectors of D-LDA. Experimental studies conducted on ORL, FERET, Yale, and AR face image databases showed that OD-LDA could compete with prevailing subspace-based facial discriminant feature extraction methods such as Fisherfaces, N-LDA D-LDA, Uncorrelated LDA, parameterized D-LDA, K-L expansion based the between-class scatter matrix, and orthogonal complimentary space method in terms of recognition rate.
机译:本文提出了一种新的基于子空间的面部判别特征提取方法,即正交直接线性判别分析(OD-LDA),其判别向量可以通过对D-LDA的一组判别向量执行Gram-Schmidt正交过程来获得。在ORL,FERET,Yale和AR面部图像数据库上进行的实验研究表明,OD-LDA可以与流行的基于子空间的面部识别特征提取方法(例如Fisherfaces,N-LDA D-LDA,不相关LDA,参数化D-LDA)竞争,基于类间散布矩阵的KL展开和就识别率而言的正交互补空间方法。

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