Maintaining Privacy in Face Recognition Using Federated Learning Method

被引:4
|
作者
Woubie, Abraham [1 ]
Solomon, Enoch [2 ]
Attieh, Joseph [3 ]
机构
[1] Silo AI, Helsinki 00180, Finland
[2] Virginia State Univ, Dept Comp Sci, Petersburg, VA 23806 USA
[3] Univ Helsinki, Dept Digital Humanities, Helsinki 00014, Finland
关键词
Face recognition; Federated learning; Data models; Servers; Training; Privacy; Data privacy; Edge computing; Edge computation; federated learning; privacy; secure aggregator; face recognition;
D O I
10.1109/ACCESS.2024.3373691
中图分类号
TP [自动化技术、计算机技术];
学科分类号
0812 ;
摘要
The state-of-the-art face recognition systems are typically trained on a single computer, utilizing extensive image datasets collected from various users. Nevertheless, these datasets often contain sensitive personal information that users may hesitate to disclose. To address potential privacy concerns, we explore the application of federated learning, both with and without secure aggregators, in the context of both supervised and unsupervised face recognition systems. Federated learning facilitates the training of a shared model without necessitating the sharing of individual private data, achieving this by training models on decentralized edge devices housing the data. In our proposed system, each edge device independently trains its own model, which is subsequently transmitted either to a secure aggregator or directly to the central server. To introduce diverse data without the need for data transmission, we employ generative adversarial networks to generate imposter data at the edge. Following this, the secure aggregator or central server combines these individual models to construct a global model, which is then relayed back to the edge devices. Experimental findings based on the CelebA datasets reveal that employing federated learning in both supervised and unsupervised face recognition systems offers dual benefits. Firstly, it safeguards privacy since the original data remains on the edge devices. Secondly, the experimental results demonstrate that the aggregated model yields nearly identical performance compared to the individual models, particularly when the federated model does not utilize a secure aggregator. Hence, our results shed light on the practical challenges associated with privacy-preserving face image training, particularly in terms of the balance between privacy and accuracy.
引用
收藏
页码:39603 / 39613
页数:11
相关论文
共 50 条
  • [1] Federated Learning for Privacy-Preserving Speaker Recognition
    Woubie, Abraham
    Backstrom, Tom
    IEEE ACCESS, 2021, 9 : 149477 - 149485
  • [2] A Survey of Differential Privacy Techniques for Federated Learning
    Wang, Xin
    Li, Jiaqian
    Ding, Xueshuang
    Zhang, Haoji
    Sun, Lianshan
    IEEE ACCESS, 2025, 13 : 6539 - 6555
  • [3] Asynchronous Federated Learning With Local Differential Privacy for Privacy-Enhanced Recommender Systems
    Zhao, Xiaopeng
    Bai, Xiao
    Sun, Guohao
    Yan, Zhe
    IEEE INTERNET OF THINGS JOURNAL, 2025, 12 (07): : 7915 - 7929
  • [4] A Differentially Privacy Assisted Federated Learning Scheme to Preserve Data Privacy for IoMT Applications
    Barnawi, Ahmed
    Chhikara, Prateek
    Tekchandani, Rajkumar
    Kumar, Neeraj
    Alzahrani, Bander
    IEEE TRANSACTIONS ON NETWORK AND SERVICE MANAGEMENT, 2024, 21 (04): : 4686 - 4700
  • [5] Privacy-Enhanced Federated Learning Against Poisoning Adversaries
    Liu, Xiaoyuan
    Li, Hongwei
    Xu, Guowen
    Chen, Zongqi
    Huang, Xiaoming
    Lu, Rongxing
    IEEE TRANSACTIONS ON INFORMATION FORENSICS AND SECURITY, 2021, 16 : 4574 - 4588
  • [6] PPFed: A Privacy-Preserving and Personalized Federated Learning Framework
    Zhang, Guangsheng
    Liu, Bo
    Zhu, Tianqing
    Ding, Ming
    Zhou, Wanlei
    IEEE INTERNET OF THINGS JOURNAL, 2024, 11 (11): : 19380 - 19393
  • [7] Privacy-Preserving Heterogeneous Personalized Federated Learning With Knowledge
    Pan, Yanghe
    Su, Zhou
    Ni, Jianbing
    Wang, Yuntao
    Zhou, Jinhao
    IEEE TRANSACTIONS ON NETWORK SCIENCE AND ENGINEERING, 2024, 11 (06): : 5969 - 5982
  • [8] Joint Privacy Enhancement and Quantization in Federated Learning
    Lang, Natalie
    Sofer, Elad
    Shaked, Tomer
    Shlezinger, Nir
    IEEE TRANSACTIONS ON SIGNAL PROCESSING, 2023, 71 : 295 - 310
  • [9] Decentralized Privacy Using Blockchain-Enabled Federated Learning in Fog Computing
    Qu, Youyang
    Gao, Longxiang
    Luan, Tom H.
    Xiang, Yong
    Yu, Shui
    Li, Bai
    Zheng, Gavin
    IEEE INTERNET OF THINGS JOURNAL, 2020, 7 (06): : 5171 - 5183
  • [10] Toward Secure Weighted Aggregation for Privacy-Preserving Federated Learning
    He, Yunlong
    Yu, Jia
    IEEE TRANSACTIONS ON INFORMATION FORENSICS AND SECURITY, 2025, 20 : 3475 - 3488