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ID3^33: Identity-Preserving-yet-Diversified Diffusion Models for Synthetic Face Recognition

26 September 2024
Shen Li
Jianqing Xu
Jiaying Wu
Miao Xiong
Ailin Deng
Jiazhen Ji
Y. Huang
Wenjie Feng
Shouhong Ding
Bryan Hooi
ArXivPDFHTML
Abstract

Synthetic face recognition (SFR) aims to generate synthetic face datasets that mimic the distribution of real face data, which allows for training face recognition models in a privacy-preserving manner. Despite the remarkable potential of diffusion models in image generation, current diffusion-based SFR models struggle with generalization to real-world faces. To address this limitation, we outline three key objectives for SFR: (1) promoting diversity across identities (inter-class diversity), (2) ensuring diversity within each identity by injecting various facial attributes (intra-class diversity), and (3) maintaining identity consistency within each identity group (intra-class identity preservation). Inspired by these goals, we introduce a diffusion-fueled SFR model termed ID3\text{ID}^3ID3. ID3\text{ID}^3ID3 employs an ID-preserving loss to generate diverse yet identity-consistent facial appearances. Theoretically, we show that minimizing this loss is equivalent to maximizing the lower bound of an adjusted conditional log-likelihood over ID-preserving data. This equivalence motivates an ID-preserving sampling algorithm, which operates over an adjusted gradient vector field, enabling the generation of fake face recognition datasets that approximate the distribution of real-world faces. Extensive experiments across five challenging benchmarks validate the advantages of ID3\text{ID}^3ID3.

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