Impact of Occlusion Masks on Gender Classification from Iris Texture

Author:

Yáñez Claudio1ORCID,Tapia Juan E.2ORCID,Perez Claudio A.1ORCID,Busch Christoph2ORCID

Affiliation:

1. Department of Electrical Engineering, and Advanced Mining Technology Center, IMPACT, Center of Interventional Medicine for Precision and Advanced Cellular Therapy, Universidad de Chile, Santiago, Chile

2. da/sec-Biometrics and Internet Security Research Group, Hochschule Darmstadt, Darmstadt University of Applied Sciences, Darmstadt, Germany

Abstract

Gender classification on normalized iris images has been previously attempted with varying degrees of success. In these previous studies, it has been shown that occlusion masks may introduce gender information; occlusion masks are used in iris recognition to remove non-iris elements. When, the goal is to classify the gender using exclusively the iris texture, the presence of gender information in the masks may result in apparently higher accuracy, thereby not reflecting the actual gender information present in the iris. However, no measures have been taken to eliminate this information while preserving as much iris information as possible. We propose a novel method to assess the gender information present in the iris more accurately by eliminating gender information in the masks. This consists of pairing iris with similar masks and different gender, generating a paired mask using the OR operator, and applying this mask to the iris. Additionally, we manually fix iris segmentation errors to study their impact on the gender classification. Our results show that occlusion masks can account for 6.92% of the gender classification accuracy on average. Therefore, works aiming to perform gender classification using the iris texture from normalized iris images should eliminate this correlation.

Funder

Horizon 2020 Framework Programme

Publisher

Institution of Engineering and Technology (IET)

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