A Robust Iris Segmentation Algorithm Based on Pupil Region for Visible Wavelength Environments
Künye
FATHEE, Hala N., Shaaban SAHMOUD & Jassim M. ABDUL-JABBAR. "A Robust Iris Segmentation Algorithm Based on Pupil Region for Visible Wavelength Environments". 3rd International Seminar on Research of Information Technology and Intelligent Systems (ISRITI), 9315343 (2020): 655-660.Özet
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.