A Robust Iris Segmentation Algorithm Based on Pupil Region for Visible Wavelength Environments

Hala N. Fathee, Shaaban A. Sahmoud, J. Abdul-Jabbar
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Abstract

In the last decade, the research on iris biometric has received increasing attention. Most of this research targets the iris recognition scenarios in constrained or controlled conditions, where considering the unconstrained environments is still needs more research work. In unconstrained environments, the sources of noise in eye regions are significantly more than constrained environments, leading to severe degradation in the iris region. As a result, iris segmentation step has a crucial significance and becomes a major issue in unconstrained iris recognition, since most of the traditional iris segmentation techniques fail under such challenging conditions. In this paper, a new segmentation algorithm is proposed to handle iris images acquired in visible wavelength environments. The proposed segmentation algorithm decreases the degradation and noise by starting from the most easily distinguishable region of the iris, which is the dark circular region called pupil. After that, the iris is localized accurately using a fast-circular Hough transform. Finally, the upper and lower eyelids and eyelashes are determined and removed from the iris region by applying a set of more suitable methods for unconstrained environments. The proposed algorithm is compared with several state-of-the-art segmentation algorithms using the UBIRIS database, and the results validate the effectiveness and stability of the proposed algorithm.
可见光环境下基于瞳孔区域的鲁棒虹膜分割算法
近十年来,虹膜生物识别技术的研究越来越受到人们的关注。本研究大多针对有约束或受控条件下的虹膜识别场景,其中考虑无约束环境仍需要更多的研究工作。在无约束环境下,人眼区域的噪声源明显多于约束环境,导致虹膜区域的严重退化。因此,虹膜分割步骤具有至关重要的意义,成为无约束虹膜识别中的一个主要问题,因为传统的虹膜分割技术大多无法在这种具有挑战性的条件下实现。针对可见光环境下虹膜图像的分割问题,提出了一种新的分割算法。本文提出的分割算法从虹膜最容易区分的区域开始,即称为瞳孔的暗圆形区域,从而降低了退化和噪声。然后,利用快速循环霍夫变换对虹膜进行精确定位。最后,通过一套更适合于无约束环境的方法,确定和去除虹膜区域的上下眼睑和睫毛。利用UBIRIS数据库,将所提算法与几种最先进的分割算法进行了比较,结果验证了所提算法的有效性和稳定性。
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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