Behavioral biometrics-based continuous authentication is a promising authentication scheme, which uses behavioral biometrics recorded by built-in sensors to authenticate smartphone users throughout the session. However, current continuous authentication methods suffer some limitations: 1) behavioral biometrics from impostors are needed to train continuous authentication models. Since the distribution of negative samples from diverse attackers are unknown, it is a difficult problem to solve in real-world scenarios; 2) most deep learning-based continuous authentication methods need to train two models to improve authentication performance. A deep learning model for deep feature extraction, and a machine learning-based classifier for classification; 3) weak capability of capturing users' behavioral patterns leads to poor authentication performance. To solve these issues, we propose a relative attention-based one-class adversarial autoencoder for continuous authentication of smartphone users. First, we propose a one-class adversarial autoencoder to learn latent representations of legitimate users' behavioral patterns, which is trained only with legitimate smartphone users' behavioral biometrics. Second, we present the relative attention layer to capture richer contextual semantic representation of users' behavioral patterns, which modifies the standard self-attention mechanism using convolution projection instead of linear projection to perform the attention maps. Experimental results demonstrate that we can achieve superior performance of 1.05% EER, 1.09% EER, and 1.08% EER with a high authentication frequency (0.7s) on three public datasets.
翻译:以行为为基础的持续认证是很有希望的认证机制,它使用内置传感器记录的行为生物鉴别方法对智能用户进行全场认证。然而,目前持续的认证方法受到一些限制:1)需要假冒者的行为生物鉴别方法来培训连续认证模型。由于各种袭击者的负面样本分布不明,因此在现实世界情景中很难解决;2)最深层次的基于学习的连续认证方法需要培训两种模式,以改善认证性能。深层特征提取的深层学习模型和机器学习分类分类用于分类;3)捕捉用户行为模式导致认证性能差。为解决这些问题,我们建议使用一个相对的、基于关注的单级对抗性辩论自动编码器来持续认证智能用户的认证模式。首先,我们建议用一个单级的对抗性自动编码器来学习合法用户行为模式的潜在描述,只有经过合法智能用户行为特征生物鉴别技术的培训。第二,我们介绍相对关注层,以捕捉更丰富的用户背景的语义性描述行为模式(1.08) 捕捉到用户的行为模式,我们用标准性ER值的自我评级预测系统进行1.09的自我定位。