Implicit Smartphone User Authentication with Sensors and Contextual Machine Learning

Wei-Han Lee, R. Lee
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引用次数: 61

Abstract

Authentication of smartphone users is important because a lot of sensitive data is stored in the smartphone and the smartphone is also used to access various cloud data and services. However, smartphones are easily stolen or co-opted by an attacker. Beyond the initial login, it is highly desirable to re-authenticate end-users who are continuing to access security-critical services and data. Hence, this paper proposes a novel authentication system for implicit, continuous authentication of the smartphone user based on behavioral characteristics, by leveraging the sensors already ubiquitously built into smartphones. We propose novel context-based authentication models to differentiate the legitimate smartphone owner versus other users. We systematically show how to achieve high authentication accuracy with different design alternatives in sensor and feature selection, machine learning techniques, context detection and multiple devices. Our system can achieve excellent authentication performance with 98.1% accuracy with negligible system overhead and less than 2.4% battery consumption.
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基于传感器和上下文机器学习的隐式智能手机用户认证
智能手机用户的身份验证非常重要,因为智能手机中存储了大量敏感数据,智能手机也用于访问各种云数据和服务。然而,智能手机很容易被盗或被攻击者利用。除了初始登录之外,非常需要对继续访问安全关键服务和数据的最终用户进行重新身份验证。因此,本文提出了一种新的认证系统,利用智能手机中无处不在的传感器,基于行为特征对智能手机用户进行隐式连续认证。我们提出了新的基于上下文的身份验证模型,以区分合法的智能手机所有者与其他用户。我们系统地展示了如何在传感器和特征选择、机器学习技术、上下文检测和多设备中使用不同的设计方案来实现高认证准确性。我们的系统可以实现出色的认证性能,准确率达到98.1%,系统开销可以忽略不计,电池消耗不到2.4%。
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