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Invariant Feature Regularization for Fair Face Recognition

Authors :
Ma, Jiali
Yue, Zhongqi
Tomoyuki, Kagaya
Tomoki, Suzuki
Jayashree, Karlekar
Pranata, Sugiri
Zhang, Hanwang
Publication Year :
2023

Abstract

Fair face recognition is all about learning invariant feature that generalizes to unseen faces in any demographic group. Unfortunately, face datasets inevitably capture the imbalanced demographic attributes that are ubiquitous in real-world observations, and the model learns biased feature that generalizes poorly in the minority group. We point out that the bias arises due to the confounding demographic attributes, which mislead the model to capture the spurious demographic-specific feature. The confounding effect can only be removed by causal intervention, which requires the confounder annotations. However, such annotations can be prohibitively expensive due to the diversity of the demographic attributes. To tackle this, we propose to generate diverse data partitions iteratively in an unsupervised fashion. Each data partition acts as a self-annotated confounder, enabling our Invariant Feature Regularization (INV-REG) to deconfound. INV-REG is orthogonal to existing methods, and combining INV-REG with two strong baselines (Arcface and CIFP) leads to new state-of-the-art that improves face recognition on a variety of demographic groups. Code is available at https://github.com/PanasonicConnect/InvReg.<br />Comment: Accepted by International Conference on Computer Vision (ICCV) 2023

Details

Database :
arXiv
Publication Type :
Report
Accession number :
edsarx.2310.14652
Document Type :
Working Paper