Longitudinal Performance of Iris Recognition in Children: Time Intervals
up to Six years
- URL: http://arxiv.org/abs/2303.12720v1
- Date: Fri, 10 Mar 2023 01:39:09 GMT
- Title: Longitudinal Performance of Iris Recognition in Children: Time Intervals
up to Six years
- Authors: Priyanka Das, Naveen G Venkataswamy, Laura Holsopple, Masudul H
Imtiaz, Michael Schuckers and Stephanie Schuckers
- Abstract summary: Gaps in the knowledge base on the temporal stability of iris recognition performance in children have impacted decision-making during applications at the global scale.
This report presents the most extensive analysis of longitudinal iris recognition performance in children with data from the same 230 children over 6.5 years between enrollment and query for ages 4 to 17 years.
Assessment of match scores, statistical modelling of variability factors impacting match scores and in-depth assessment of the root causes of the false rejections concludes no impact on iris recognition performance due to aging.
- Score: 2.854451361373021
- License: http://creativecommons.org/licenses/by/4.0/
- Abstract: The temporal stability of iris recognition performance is core to its success
as a biometric modality. With the expanding horizon of applications for
children, gaps in the knowledge base on the temporal stability of iris
recognition performance in children have impacted decision-making during
applications at the global scale. This report presents the most extensive
analysis of longitudinal iris recognition performance in children with data
from the same 230 children over 6.5 years between enrollment and query for ages
4 to 17 years. Assessment of match scores, statistical modelling of variability
factors impacting match scores and in-depth assessment of the root causes of
the false rejections concludes no impact on iris recognition performance due to
aging.
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