Identity-Preserving Aging of Face Images via Latent Diffusion Models

2023 IEEE INTERNATIONAL JOINT CONFERENCE ON BIOMETRICS, IJCB(2023)

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摘要
The performance of automated face recognition systems is inevitably impacted by the facial aging process. However, high quality datasets of individuals collected over several years are typically small in scale. In this work, we propose, train, and validate the use of latent text-to-image diffusion models for synthetically aging and de-aging face images. Our models succeed with few-shot training, and have the added benefit of being controllable via intuitive textual prompting. We observe high degrees of visual realism in the generated images while maintaining biometric fidelity measured by commonly used metrics. We evaluate our method on two benchmark datasets (CelebA and AgeDB) and observe significant reduction (similar to 44%) in the False Non-Match Rate compared to existing state-of the-art baselines.
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关键词
Diffusion Model,Latent Model,Face Images,Face Recognition,Facial Age,Age Groups,Adolescents,Training Set,Middle-aged,Small Set,Class Labels,Training Images,Subjective Image,Latent Representation,Age Progression,Target Age,Contrastive Loss,Matching Performance,Backward Process,Regular Set,Tokenized,Text Encoder,Noise Map,Facial Attributes,U-Net Model,Young Adults,Autoencoder,User Study,Denoising
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