Meta Balanced Network for Fair Face Recognition
Mei Wang, Yaobin Zhang, Weihong Deng

TL;DR
This paper introduces a comprehensive approach to address skin-tone bias in face recognition by creating a new benchmark, providing balanced training datasets, and proposing a meta-learning algorithm that adapts margins to ensure fair performance across skin tones.
Contribution
It presents the first systematic benchmark for skin-tone bias, new balanced datasets, and a novel meta-learning algorithm for fair face recognition.
Findings
MBN reduces skin-tone bias in face recognition.
Balanced datasets improve fairness across skin tones.
Meta learning adapts margins for equitable performance.
Abstract
Although deep face recognition has achieved impressive progress in recent years, controversy has arisen regarding discrimination based on skin tone, questioning their deployment into real-world scenarios. In this paper, we aim to systematically and scientifically study this bias from both data and algorithm aspects. First, using the dermatologist approved Fitzpatrick Skin Type classification system and Individual Typology Angle, we contribute a benchmark called Identity Shades (IDS) database, which effectively quantifies the degree of the bias with respect to skin tone in existing face recognition algorithms and commercial APIs. Further, we provide two skin-tone aware training datasets, called BUPT-Globalface dataset and BUPT-Balancedface dataset, to remove bias in training data. Finally, to mitigate the algorithmic bias, we propose a novel meta-learning algorithm, called Meta Balanced…
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Taxonomy
MethodsAttentive Walk-Aggregating Graph Neural Network
