Gender classification from multispectral periocular images

Juan E. Tapia, Ignacio A. Viedma
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引用次数: 13

Abstract

Gender classification from multispectral periocular and iris images is a new topic on soft-biometric research. The feature extracted from RGB images and Near Infrared Images shows complementary information independent of the spectrum of the images. This paper shows that we canfusion these information improving the accuracy of gender classification. Most gender classification methods reported in the literature has used images from face databases and all the features for classification purposes. Experimental results suggest: (a) Features extracted in different scales can perform better than using only one feature in a single scale; (b) The periocular images performed better than iris images on VIS and NIR; c) The fusion of features on different spectral images NIR and VIS allows improve the accuracy; (c) The feature selection applied to NIR and VIS allows select relevant features and d) Our accuracy 90% is competitive with the state of the art.
基于多光谱眼周图像的性别分类
基于多光谱眼周和虹膜图像的性别分类是软生物识别研究的一个新课题。从RGB图像和近红外图像中提取的特征显示出独立于图像光谱的互补信息。本文表明,我们可以融合这些信息,提高性别分类的准确性。文献报道的大多数性别分类方法都是使用人脸数据库中的图像和所有特征进行分类。实验结果表明:(a)在不同尺度上提取的特征比在单一尺度上只提取一个特征的效果更好;(b)眼周图像在VIS和NIR上优于虹膜图像;c) NIR和VIS不同光谱图像的特征融合,提高了精度;(c)应用于近红外和VIS的特征选择允许选择相关特征;d)我们90%的准确率与最先进的技术相竞争。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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