首页> 外文会议>International Conference on Image, Vision and Computing >CVBL IRIS Gender Classification Database Image Processing and Biometric Research, Computer Vision and Biometric Laboratory (CVBL)
【24h】

CVBL IRIS Gender Classification Database Image Processing and Biometric Research, Computer Vision and Biometric Laboratory (CVBL)

机译:CVBL IRIS性别分类数据库图像处理和生物识别研究,计算机视觉和生物识别实验室(CVBL)

获取原文

摘要

Iris recognition has been an interesting subject for many research studies in the last two decades and has raised many challenges for the researchers. One new and interesting challenge in the iris studies is gender recognition using iris images. Gender classification can be applied to reduce processing time of the identification process. On the other hand, it can be used in applications such as access control systems, and gender-based marketing and so on. To the best of our knowledge, only a few numbers of studies are conducted on gender recognition through analysis of iris images. Considering the importance of this research area and its commercial applications, it is highly essential for researchers to make use of efficient color features in their algorithms which necessitates the production of color iris image databases. The present study introduces an iris image database for gender classification and proposes a new gender classification algorithm for its evaluation. The database consists of iris images taken from 720 subjects including 370 females and 350 males in university students. For each student, more than 6 images were taken from his/her both left and right eyes. After examining the images, 3 images from the left eye and 3 images from the right eye were selected among the most appropriate images and were included in the database. All 4320 images from this database were taken under the same condition and by the same color camera. Finally, the quality and the efficiency of the introduced database are evaluated using a new method that extract Zernike moments on spectral features and two well-known classifiers, namely, SVM and KNN. The results revealed that there is a significant improvement in gender classification compared with the similar databases.
机译:虹膜识别是过去二十年的许多研究研究的一个有趣的主题,并为研究人员提出了许多挑战。虹膜研究中的一个新的和有趣的挑战是使用虹膜图像的性别识别。可以应用性别分类来减少识别过程的处理时间。另一方面,它可以用于访问控制系统和基于性别的营销等应用中。据我们所知,通过分析IRIS图像,只有几个研究就对性别识别进行了对性别认可。考虑到这一研究区的重要性及其商业应用,研究人员对其算法中的有效颜色特征进行了高效,这是必然需要生产颜色虹膜图像数据库的重要性。本研究介绍了用于性别分类的虹膜图像数据库,并提出了一种新的性别分类算法的评估。该数据库包括从720名科目的虹膜图像组成,包括370名女性和大学生350名男性。对于每个学生,从他/她左右眼睛都有超过6张图片。在检查图像之后,在最合适的图像中选择来自左眼的3个来自右眼的3个图像,并被包括在数据库中。来自此数据库的所有4320张图像都在相同的条件下和相同的颜色相机拍摄。最后,使用一种新方法评估引入的数据库的质量和效率,该方法在光谱特征和两个公知的分类器上提取Zernike矩,即SVM和KNN。结果表明,与类似的数据库相比,性别分类存在显着改善。

著录项

相似文献

  • 外文文献
  • 中文文献
  • 专利
获取原文

客服邮箱:kefu@zhangqiaokeyan.com

京公网安备:11010802029741号 ICP备案号:京ICP备15016152号-6 六维联合信息科技 (北京) 有限公司©版权所有
  • 客服微信

  • 服务号