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Main Authors: Shen, Sipeng, Zhang, Yunming, Ye, Dengpan, Shi, Xiuwen, Tang, Long, Duan, Haoran, Shang, Yueyun, Tian, Zhihong
Format: Preprint
Published: 2024
Subjects:
Online Access:https://arxiv.org/abs/2412.17038
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author Shen, Sipeng
Zhang, Yunming
Ye, Dengpan
Shi, Xiuwen
Tang, Long
Duan, Haoran
Shang, Yueyun
Tian, Zhihong
author_facet Shen, Sipeng
Zhang, Yunming
Ye, Dengpan
Shi, Xiuwen
Tang, Long
Duan, Haoran
Shang, Yueyun
Tian, Zhihong
contents While face recognition (FR) models have brought remarkable convenience in face verification and identification, they also pose substantial privacy risks to the public. Existing facial privacy protection schemes usually adopt adversarial examples to disrupt face verification of FR models. However, these schemes often suffer from weak transferability against black-box FR models and permanently damage the identifiable information that cannot fulfill the requirements of authorized operations such as forensics and authentication. To address these limitations, we propose ErasableMask, a robust and erasable privacy protection scheme against black-box FR models. Specifically, via rethinking the inherent relationship between surrogate FR models, ErasableMask introduces a novel meta-auxiliary attack, which boosts black-box transferability by learning more general features in a stable and balancing optimization strategy. It also offers a perturbation erasion mechanism that supports the erasion of semantic perturbations in protected face without degrading image quality. To further improve performance, ErasableMask employs a curriculum learning strategy to mitigate optimization conflicts between adversarial attack and perturbation erasion. Extensive experiments on the CelebA-HQ and FFHQ datasets demonstrate that ErasableMask achieves the state-of-the-art performance in transferability, achieving over 72% confidence on average in commercial FR systems. Moreover, ErasableMask also exhibits outstanding perturbation erasion performance, achieving over 90% erasion success rate.
format Preprint
id arxiv_https___arxiv_org_abs_2412_17038
institution arXiv
publishDate 2024
record_format arxiv
spellingShingle ErasableMask: A Robust and Erasable Privacy Protection Scheme against Black-box Face Recognition Models
Shen, Sipeng
Zhang, Yunming
Ye, Dengpan
Shi, Xiuwen
Tang, Long
Duan, Haoran
Shang, Yueyun
Tian, Zhihong
Computer Vision and Pattern Recognition
Artificial Intelligence
While face recognition (FR) models have brought remarkable convenience in face verification and identification, they also pose substantial privacy risks to the public. Existing facial privacy protection schemes usually adopt adversarial examples to disrupt face verification of FR models. However, these schemes often suffer from weak transferability against black-box FR models and permanently damage the identifiable information that cannot fulfill the requirements of authorized operations such as forensics and authentication. To address these limitations, we propose ErasableMask, a robust and erasable privacy protection scheme against black-box FR models. Specifically, via rethinking the inherent relationship between surrogate FR models, ErasableMask introduces a novel meta-auxiliary attack, which boosts black-box transferability by learning more general features in a stable and balancing optimization strategy. It also offers a perturbation erasion mechanism that supports the erasion of semantic perturbations in protected face without degrading image quality. To further improve performance, ErasableMask employs a curriculum learning strategy to mitigate optimization conflicts between adversarial attack and perturbation erasion. Extensive experiments on the CelebA-HQ and FFHQ datasets demonstrate that ErasableMask achieves the state-of-the-art performance in transferability, achieving over 72% confidence on average in commercial FR systems. Moreover, ErasableMask also exhibits outstanding perturbation erasion performance, achieving over 90% erasion success rate.
title ErasableMask: A Robust and Erasable Privacy Protection Scheme against Black-box Face Recognition Models
topic Computer Vision and Pattern Recognition
Artificial Intelligence
url https://arxiv.org/abs/2412.17038