Extracting gender discriminating features from facial needle-maps

ICIP(2009)

引用 2|浏览17
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摘要
In this paper, we show how to extract gender discriminating features from 2.5D facial needle-maps. The standard eigenspace analysis method for non-Euclidean data is principal geodesic analysis (PGA). Based on PGA, we propose a novel supervised weighted PGA method which incorporates local weights into standard PGA to improve gender discriminating capability of the extracted features. The weight map is iteratively optimized from the labeled data, which is different from other gender relevant weights used in the literature. Experimental results illustrate the effectiveness of this method and its successful application to gender classification.
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关键词
facial needle-maps,pga method,standard pga,face recognition,local weight,successful application,eigenspace analysis,gender discriminating features extraction,gender issues,feature extraction,gender classification,principal geodesic analysis,non-euclidean data,standard eigenspace analysis method,gender relevant weight,eigenvalues and eigenfunctions,3d image processing,extracting gender,face,3d imaging,shape,electronics packaging,principal component analysis
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