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Improving identification accuracy on low resolution and poor quality iris images using an artificial neural network-based matching metric

机译:使用基于人工神经网络的匹配指标提高低分辨率和质量差的虹膜图像的识别精度

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摘要

The iris is currently believed to be one of the most accurate biometrics for human identification. The majority of fielded iris identification systems use fractional Hamming distance to compare a new feature template to a stored database. Fractional Hamming distance is extremely fast, but mathematically weights all regions of the iris equally. Research has shown that different regions of the iris contain varying levels of discriminatory information when using circular boundary assumptions. This research evaluates four statistical metrics for accuracy improvements on low resolution and poor quality images. Each metric statistically weights iris regions in an attempt to use the iris information in a more intelligent manner. A similarity metric extracted from the output stage of an artificial neural network demonstrated the most promise. Experiments were performed using occluded, subsampled, and motion blurred images from the CASIA, University of Bath, and ICE 2005 databases. The neural network-based metric improved accuracy at nearly every operating point.
机译:当前认为虹膜是用于人类识别的最准确的生物特征之一。大多数现场虹膜识别系统使用分数汉明距离将新特征模板与存储的数据库进行比较。分数汉明距离非常快,但是在数学上会平均加权虹膜的所有区域。研究表明,使用圆形边界假设时,虹膜的不同区域包含不同级别的歧视性信息。这项研究评估了四个统计指标,以提高低分辨率和劣质图像的准确性。每个度量统计地加权虹膜区域,以尝试以更智能的方式使用虹膜信息。从人工神经网络的输出阶段提取的相似性度量显示出最大的希望。实验是使用来自CASIA,巴斯大学和ICE 2005数据库的被遮挡,二次采样和运动模糊的图像进行的。基于神经网络的指标提高了几乎每个工作点的准确性。

著录项

  • 来源
    《Journal of electronic imaging》 |2011年第1期|p.013013.1-013013.10|共10页
  • 作者单位

    U. S. Naval AcademySystems Engineering DepartmentAnnapolis, Maryland 21402;

    U. S. Naval AcademyElectrical and Computer Engineering DepartmentAnnapolis, Maryland 21402;

  • 收录信息 美国《科学引文索引》(SCI);美国《工程索引》(EI);
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

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