Toward robust and privacy-enhanced facial recognition: A decentralized blockchain-based approach with GANs and deep learning

Muhammad Ahmad Nawaz Ul Ghani,Kun She, Muhammad Arslan Rauf, Shumaila Khan, Masoud Alajmi,Yazeed Yasin Ghadi,Hend Khalid Alkahtani

MATHEMATICAL BIOSCIENCES AND ENGINEERING(2024)

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摘要
In recent years, the extensive use of facial recognition technology has raised concerns about data privacy and security for various applications, such as improving security and streamlining attendance systems and smartphone access. In this study, a blockchain-based decentralized facial recognition system (DFRS) that has been designed to overcome the complexities of technology. The DFRS takes a trailblazing approach, focusing on finding a critical balance between the benefits of facial recognition and the protection of individuals' private rights in an era of increasing monitoring. First, the facial traits are segmented into separate clusters which are maintained by the specialized node that maintains the data privacy and security. After that, the data obfuscation is done by using generative adversarial networks. To ensure the security and authenticity of the data, the facial data is encoded and stored in the blockchain. The proposed system achieves significant results on the CelebA dataset, a complete and novel solution for secure facial recognition and data security for privacy protection.
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关键词
facial recognition,data security,blockchain,privacy protection,decentralized system
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