VariFace: Fair and Diverse Synthetic Dataset Generation for Face Recognition
Michael Yeung, Toya Teramoto, Songtao Wu, Tatsuo Fujiwara, Kenji, Suzuki, Tamaki Kojima

TL;DR
VariFace is a novel diffusion-based pipeline that generates fair and diverse synthetic face datasets, significantly improving face recognition performance and surpassing real datasets in some benchmarks.
Contribution
It introduces three methods—Face Recognition Consistency, Face Vendi Score Guidance, and Divergence Score Conditioning—to enhance diversity and fairness in synthetic face data.
Findings
Outperforms previous synthetic datasets in face recognition accuracy.
Achieves comparable performance to real datasets when constrained to same size.
Surpasses real dataset performance across multiple evaluation benchmarks.
Abstract
The use of large-scale, web-scraped datasets to train face recognition models has raised significant privacy and bias concerns. Synthetic methods mitigate these concerns and provide scalable and controllable face generation to enable fair and accurate face recognition. However, existing synthetic datasets display limited intraclass and interclass diversity and do not match the face recognition performance obtained using real datasets. Here, we propose VariFace, a two-stage diffusion-based pipeline to create fair and diverse synthetic face datasets to train face recognition models. Specifically, we introduce three methods: Face Recognition Consistency to refine demographic labels, Face Vendi Score Guidance to improve interclass diversity, and Divergence Score Conditioning to balance the identity preservation-intraclass diversity trade-off. When constrained to the same dataset size,…
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Taxonomy
TopicsFace recognition and analysis
