首页> 外文会议>Image Processing (ICIP 2009), 2009 >Extracting gender discriminating features from facial needle-maps
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Extracting gender discriminating features from facial needle-maps

机译:从面部针图提取性别区分特征

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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.
机译:在本文中,我们展示了如何从2.5D面部针形图提取性别区分特征。非欧几里得数据的标准本征空间分析方法是主测地线分析(PGA)。基于PGA,我们提出了一种新颖的监督加权PGA方法,该方法将局部权重合并到标准PGA中,以提高提取特征的性别区分能力。权重图是根据标记的数据进行迭代优化的,这与文献中使用的其他与性别相关的权重不同。实验结果证明了该方法的有效性及其在性别分类中的成功应用。

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