On the "Illusion" of Gender Bias in Face Recognition: Explaining the Fairness Issue Through Non-demographic Attributes
Journal:
arXiv
Published Date:
Jan 21, 2025
Abstract
Face recognition systems (FRS) exhibit significant accuracy differences based
on the user's gender. Since such a gender gap reduces the trustworthiness of
FRS, more recent efforts have tried to find the causes. However, these studies
make use of manually selected, correlated, and small-sized sets of facial
features to support their claims. In this work, we analyse gender bias in face
recognition by successfully extending the search domain to decorrelated
combinations of 40 non-demographic facial characteristics. First, we propose a
toolchain to effectively decorrelate and aggregate facial attributes to enable
a less-biased gender analysis on large-scale data. Second, we introduce two new
fairness metrics to measure fairness with and without context. Based on these
grounds, we thirdly present a novel unsupervised algorithm able to reliably
identify attribute combinations that lead to vanishing bias when used as filter
predicates for balanced testing datasets. The experiments show that the gender
gap vanishes when images of male and female subjects share specific attributes,
clearly indicating that the issue is not a question of biology but of the
social definition of appearance. These findings could reshape our understanding
of fairness in face biometrics and provide insights into FRS, helping to
address gender bias issues.