Fairness and privacy preservation for facial images: GAN-based methods

Computers & Security(2022)

引用 4|浏览25
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摘要
Facial images are widely adopted for computer vision tasks such as face recognition or attribute classifications. Consequently, the adoption of mass real facial images leads to significant identification privacy leakage concerns. Meanwhile, the model classification results suffer unfair predictions towards features such as genders due to biased training data distributions. Although methods have been proposed to resolve the privacy and fairness issues separately, simultaneous protection methods are merely studied. In this study, for facial attributes classifications, we propose one unified framework with GAN models to generate synthetic images for privacy protections and contrastive learning based loss designs to enforce fairness protections simultaneously. Meanwhile, unlike other privacy or fairness protection methods, the proposed methods can maintain high data and model utilities. We evaluate our approaches with the high image resolution dataset CelebA-HD, and the results show our methods meet both privacy and fairness requirements.
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关键词
Privacy preservation,Fairness protections,Utility impact,Contrastive learning,Facial images,Generative adversarial networks
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