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Improving Iris Recognition through Quality and Interoperability Metrics.

机译:通过质量和互操作性指标改善虹膜识别能力。

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摘要

The ability to identify individuals based on their iris is known as iris recognition. Over the past decade iris recognition has garnered much attention because of its strong performance in comparison with other mainstream biometrics such as fingerprint and face recognition. Performance of iris recognition systems is driven by application scenario requirements. Standoff distance, subject cooperation, underlying optics, and illumination are a few examples of these requirements which dictate the nature of images an iris recognition system has to process. Traditional iris recognition systems, dubbed "stop and stare", operate under highly constrained conditions. This ensures that the captured image is of sufficient quality so that the success of subsequent processing stages, segmentation, encoding, and matching are not compromised. When acquisition constraints are relaxed, such as for surveillance or iris on the move, the fidelity of subsequent processing steps lessens.;In this dissertation we propose a multi-faceted framework for mitigating the difficulties associated with non-ideal iris. We develop and investigate a comprehensive iris image quality metric that is predictive of iris matching performance. The metric is composed of photometric measures such as defocus, motion blur, and illumination, but also contains domain specific measures such as occlusion, and gaze angle. These measures are then combined through a fusion rule based on Dempster-Shafer theory. Related to iris segmentation, which is arguably one of the most important tasks in iris recognition, we develop metrics which are used to evaluate the precision of the pupil and iris boundaries. Furthermore, we illustrate three methods which take advantage of the proposed segmentation metrics for rectifying incorrect segmentation boundaries. Finally, we look at the issue of iris image interoperability and demonstrate that techniques from the field of hardware fingerprinting can be utilized to improve iris matching performance when images captured from distinct sensors are involved.
机译:根据虹膜识别个人的能力称为虹膜识别。在过去的十年中,虹膜识别由于其与其他主流生物识别技术(例如指纹和面部识别)相比的强大性能而备受关注。虹膜识别系统的性能取决于应用场景的要求。间隔距离,对象合作,基础光学和照明是这些要求的一些示例,这些要求决定了虹膜识别系统必须处理的图像的性质。传统的虹膜识别系统被称为“停止并凝视”,在高度受限的条件下运行。这确保了所捕获的图像具有足够的质量,从而不会损害后续处理阶段,分段,编码和匹配的成功。当放松采集限制时,例如监视或移动中的虹膜,随后的处理步骤的保真度就会降低。本论文我们提出了一个多方面的框架来减轻与非理想虹膜相关的困难。我们开发并研究了可预测虹膜匹配性能的综合虹膜图像质量指标。该度量由诸如散焦,运动模糊和照明之类的光度度量组成,但也包含诸如遮挡和注视角度之类的领域特定度量。然后通过基于Dempster-Shafer理论的融合规则将这些度量组合起来。与虹膜分割有关,虹膜分割可以说是虹膜识别中最重要的任务之一,我们开发了用于评估瞳孔和虹膜边界精度的指标。此外,我们说明了三种利用建议的分割指标来纠正不正确的分割边界的方法。最后,我们研究了虹膜图像互操作性的问题,并证明了当涉及从不同传感器捕获的图像时,可以利用来自硬件指纹识别领域的技术来提高虹膜匹配性能。

著录项

  • 作者

    Kalka, Nathan D.;

  • 作者单位

    West Virginia University.;

  • 授予单位 West Virginia University.;
  • 学科 Computer Science.
  • 学位 Ph.D.
  • 年度 2012
  • 页码 183 p.
  • 总页数 183
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

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