Fingerprint Recognition Scheme Based on Deep Learning and Homomorphic Encryption

Jianhong Zhang, Hongwei Su, Yue Li, Haowei Yang
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引用次数: 0

Abstract

In fingerprint identification, fingerprint features, as a kind of biological feature, are unique, universal, and irrevocable. If it is maliciously attacked, leaked, and tamperedwith, the security of users’ personal fingerprint privacy information will be faced with huge challenges. This paper proposes a fingerprint feature recognition privacy security scheme based on deep learning convolutional neural network and homomorphic encryption algorithm to solve this problem. In this scheme, we add fingerprint classification algorithm to CNN(Convolutional Neural Network) for efficient fingerprint classification and feature extraction. In addition, the BFV homomorphic encryption algorithm is used to encrypt fingerprint feature data and perform matching operations in the ciphertext domain, and fingerprint feature ciphertext database is built to achieve quickly search and matching of feature ciphertext. Finally, we adopt the national secret SM4 and the national secret SM9 algorithms to improve the security of fingerprint signature ciphertext transmission and the ability to resist malicious attacks. The experimental results show that the scheme considers the accuracy of fingerprint identification and overall efficiency and improve the security of fingerprint feature data transmission, storage, and comparison.
基于深度学习和同态加密的指纹识别方案
在指纹识别中,指纹特征作为一种生物特征,具有唯一性、通用性和不可撤销性。如果遭到恶意攻击、泄露、篡改,用户个人指纹隐私信息的安全性将面临巨大挑战。针对这一问题,本文提出了一种基于深度学习卷积神经网络和同态加密算法的指纹特征识别隐私安全方案。在该方案中,我们将指纹分类算法加入到CNN(卷积神经网络)中,进行高效的指纹分类和特征提取。此外,采用BFV同态加密算法对指纹特征数据进行加密,并在密文域中进行匹配操作,建立指纹特征密文数据库,实现特征密文的快速搜索和匹配。最后,我们采用了国密SM4和国密SM9算法,提高了指纹签名密文传输的安全性和抵御恶意攻击的能力。实验结果表明,该方案兼顾了指纹识别的准确性和整体效率,提高了指纹特征数据传输、存储和比对的安全性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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