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 [BibTeX] [Marc21]
Score Normalization for Demographic Fairness in Face Recognition
Type of publication: Conference paper
Citation: Linghu_IJCB_2024
Publication status: Accepted
Booktitle: IEEE International Joint Conference on Biometrics (IJCB 2024)
Year: 2024
Abstract: Fair biometric algorithms have similar verification performance across different demographic groups given a single decision threshold. Unfortunately, for state-of-the-art face recognition networks, score distributions differ between demographics. Contrary to work that tries to align those distributions by extra training or fine-tuning, we solely focus on score post-processing methods. As proved, well-known sample-centered score normalization techniques, Z-norm and T-norm, do not improve fairness for high-security operating points. Thus, we extend the standard Z/T-norm to integrate demographic information in normalization. Additionally, we investigate several possibilities to incorporate cohort similarities for both genuine and impostor pairs per demographic to improve fairness across different operating points. We run experiments on two datasets with different demographics (gender and ethnicity) and show that our techniques generally improve the overall fairness of five state-of-the-art pre-trained face recognition networks, without downgrading verification performance. We also indicate that an equal contribution of False Match Rate (FMR) and False Non-Match Rate (FNMR) in fairness evaluation is required for the highest gains. Code and protocols are available.
Keywords:
Projects SAFER
Authors Linghu, Yu
de Freitas Pereira, Tiago
Ecabert, Christophe
Marcel, Sébastien
Günther, Manuel
Added by: [UNK]
Total mark: 0
Attachments
  • Linghu_IJCB_2024.pdf
Notes