Gender Classification from Iris Texture Images Using a New Set of Binary Statistical Image Features

Juan E. Tapia, Claudia Arellano
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引用次数: 5

Abstract

Soft biometric information such as gender can contribute to many applications like as identification and security. This paper explores the use of a Binary Statistical Features (BSIF) algorithm for classifying gender from iris texture images captured with NIR sensors. It uses the same pipeline for iris recognition systems consisting of iris segmentation, normalisation and then classification. Experiments show that applying BSIF is not straightforward since it can create artificial textures causing misclassification. In order to overcome this limitation, a new set of filters was trained from eye images and different sized filters with padding bands were tested on a subject-disjoint database. A Modified-BSIF (MBSIF) method was implemented. The latter achieved better gender classification results (94.6% and 91.33% for the left and right eye respectively). These results are competitive with the state of the art in gender classification. In an additional contribution, a novel gender labelled database was created and it will be available upon request.
基于二值统计特征的虹膜纹理图像性别分类
诸如性别之类的软生物特征信息可以用于许多应用程序,如身份识别和安全。本文探讨了使用二进制统计特征(BSIF)算法对近红外传感器捕获的虹膜纹理图像进行性别分类。它使用与虹膜识别系统相同的流程,包括虹膜分割、归一化和分类。实验表明,应用BSIF并不简单,因为它会产生人工纹理,导致误分类。为了克服这一限制,从眼睛图像中训练了一组新的滤波器,并在主题不相交的数据库上测试了不同尺寸的带有填充带的滤波器。实现了一种改进的bsif (MBSIF)方法。后者的性别分类效果较好(左眼94.6%,右眼91.33%)。这些结果在性别分类方面具有竞争力。另一项贡献是建立了一个新的标记性别的数据库,可应要求提供。
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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