首页> 外国专利> REGISTRATION AND VERIFICATION OF BIOMETRIC MODALITIES USING ENCRYPTION TECHNIQUES IN A DEEP NEURAL NETWORK

REGISTRATION AND VERIFICATION OF BIOMETRIC MODALITIES USING ENCRYPTION TECHNIQUES IN A DEEP NEURAL NETWORK

机译:使用深神经网络中的加密技术注册和验证生物识别模式

摘要

Conventionally, biometric template protection has been achieved to improve matching performance with high levels of security by use of deep convolution neural network models. However, such attempts have prominent security limitations mapping information of images to binary codes is stored in an unprotected form. Given this model and access to the stolen protected templates, the adversary can exploit the False Accept Rate (FAR) of the system. Secondly, once the server system is compromised all the users need to be re-enrolled again. Unlike conventional systems and approaches, present disclosure provides systems and methods that implement encrypted deep neural network(s) for biometric template protection for enrollment and verification wherein the encrypted deep neural network(s) is utilized for mapping feature vectors to a randomly generated binary code and a deep neural network model learnt is encrypted thus achieving security and privacy for data protection.
机译:传统上,已经实现了生物识别模板保护,以通过使用深度卷积神经网络模型提高具有高级别的匹配性能。然而,这种尝试具有突出的安全限制,将图像的信息映射到二进制代码以不受保护的形式存储。鉴于此模型和访问被盗的受保护模板,对手可以利用系统的虚假接受率(远)。其次,一旦服务器系统泄露,所有用户都需要再次重新注册。与传统系统和方法不同,本公开提供了为生物识别模板保护实现加密的深神经网络的系统和方法,用于注册和验证,其中加密的深度神经网络用于将特征向量映射到随机生成的二进制代码。并且学习的深度神经网络模型是加密的,从而实现了用于数据保护的安全性和隐私。

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