Discriminant feature extraction based on center distance

ICIP(2009)

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摘要
In this paper, a novel discriminant feature extraction algorithm employing center-based distance is proposed for face recognition. This new method, which is a supervised linear dimensionality reduction and feature extraction approach, computes the center-based distance between each training sample-pairs in the same class and the distance between each training sample-pair belonging to different classes. Then the high-dimensional data are embedded into a low-dimensional space, preserving the within-class geometric structure on a submanifold via maximum variance projection. Many experiments on ORL and Yale face database indicate that this method is highly effective.
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关键词
training sample-pair,face recognition,center-based distance,feature extraction approach,high-dimensional data,different class,novel discriminant feature extraction,low-dimensional space,training sample-pairs,feature extraction,yale face database,maximum variance projection,discriminant feature extraction algorithm,center distance,principal component analysis,supervised linear dimensionality reduction approach,new method,orl face database,face,classification algorithms,high dimensional data,manifolds
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