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Utilizing Transfer Learning and Homomorphic Encryption in a Privacy Preserving and Secure Biometric Recognition System

机译:在隐私保护和安全生物特征识别系统中利用转移学习和同态加密

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Biometric verification systems have become prevalent in the modern world with the wide usage of smartphones. These systems heavily rely on storing the sensitive biometric data on the cloud. Due to the fact that biometric data like fingerprint and iris cannot be changed, storing them on the cloud creates vulnerability and can potentially have catastrophic consequences if these data are leaked. In the recent years, in order to preserve the privacy of the users, homomorphic encryption has been used to enable computation on the encrypted data and to eliminate the need for decryption. This work presents DeepZeroID: a privacy-preserving cloud-based and multiple-party biometric verification system that uses homomorphic encryption. Via transfer learning, training on sensitive biometric data is eliminated and one pre-trained deep neural network is used as feature extractor. By developing an exhaustive search algorithm, this feature extractor is applied on the tasks of biometric verification and liveness detection. By eliminating the need for training on and decrypting the sensitive biometric data, this system preserves privacy, requires zero knowledge of the sensitive data distribution, and is highly scalable. Our experimental results show that DeepZeroID can deliver 95.47% F1 score in the verification of combined iris and fingerprint feature vectors with zero true positives and with a 100% accuracy in liveness detection.
机译:随着智能手机的广泛使用,生物特征识别系统已在现代世界中普及。这些系统严重依赖于将敏感的生物识别数据存储在云上。由于无法更改指纹和虹膜等生物识别数据,因此将它们存储在云中会造成漏洞,如果这些数据泄露,可能会造成灾难性后果。近年来,为了保护用户的隐私,同态加密已被用于对加密数据进行计算并消除解密需求。这项工作介绍了DeepZeroID:DeepZeroID:一种基于隐私保护的基于云的多方生物特征验证系统,该系统使用同态加密。通过转移学习,消除了对敏感生物特征数据的训练,并且使用了一个预训练的深度神经网络作为特征提取器。通过开发穷举搜索算法,此特征提取器可应用于生物特征验证和活动检测任务。通过消除对敏感生物特征数据进行训练和解密的需要,该系统可以保护隐私,对敏感数据分布的知识为零,并且具有高度可扩展性。我们的实验结果表明,DeepZeroID在验证真虹膜和指纹特征向量的组合时,可以提供95.47%的F1分数,真实正值为零,并且活度检测的准确性为100%。

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