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Reconstruct Face from Features Using GAN Generator as a Distribution Constraint

Authors :
Dong, Xingbo
Miao, Zhihui
Ma, Lan
Shen, Jiajun
Jin, Zhe
Guo, Zhenhua
Teoh, Andrew Beng Jin
Publication Year :
2022

Abstract

Face recognition based on the deep convolutional neural networks (CNN) shows superior accuracy performance attributed to the high discriminative features extracted. Yet, the security and privacy of the extracted features from deep learning models (deep features) have been often overlooked. This paper proposes the reconstruction of face images from deep features without accessing the CNN network configurations as a constrained optimization problem. Such optimization minimizes the distance between the features extracted from the original face image and the reconstructed face image. Instead of directly solving the optimization problem in the image space, we innovatively reformulate the problem by looking for a latent vector of a GAN generator, then use it to generate the face image. The GAN generator serves as a dual role in this novel framework, i.e., face distribution constraint of the optimization goal and a face generator. On top of the novel optimization task, we also propose an attack pipeline to impersonate the target user based on the generated face image. Our results show that the generated face images can achieve a state-of-the-art successful attack rate of 98.0\% on LFW under type-I attack @ FAR of 0.1\%. Our work sheds light on the biometric deployment to meet the privacy-preserving and security policies.

Details

Database :
arXiv
Publication Type :
Report
Accession number :
edsarx.2206.04295
Document Type :
Working Paper