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Performance Analysis of Multi-Motion Sensor Behavior for Active Smartphone Authentication

机译:主动智能手机身份验证的多运动传感器行为性能分析

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The increasing use of smartphones as personal computing platforms to access personal information has stressed the demand for secure and usable authentication techniques, and for constantly protecting privacy. Smartphone sensors can measure users' unique behavioral characteristics when they interact with smartphones, based on different habits, gestures, and angle preferences of touch actions. This paper investigates the reliability and applicability of using motion-sensor behavior for active and continuous smartphone authentication across various operational scenarios, and presents a systematic evaluation of the distinctiveness and permanence properties of the behavior. For each sample of sensor behavior, kinematic information sequences are extracted and analyzed, which are characterized by statistic-, frequency-, and wavelet-domain features, to provide accurate and fine-grained characterization of users' touch actions. A Markov-based decision procedure, using one-class learning techniques, is developed and applied to the feature space for performing authentication. Analyses are conducted using the sensor data of 520 200 touch actions from 102 subjects across various operational scenarios. Extensive experiments show that motion-sensor behavior exhibits sufficient discriminability and stability for active and continuous authentication, and can achieve a false-rejection rate of 5.03% and a false-acceptance rate of 3.98%. Additional experiments on usability to operation length, sensitivity to application scenario, scalability to user size, contribution to different sensors, and response to behavior change are provided to further explore the effectiveness and applicability. We also implement an authentication system into the Android system that can react to the presence of the legitimate user.
机译:智能手机越来越多地用作访问个人信息的个人计算平台,这凸显了对安全和可用身份验证技术以及不断保护隐私的需求。智能手机传感器可以根据用户的不同习惯,手势和触摸操作的角度偏好来测量用户与智能手机进行交互时的独特行为特征。本文研究了在各种操作场景下使用运动传感器行为进行主动和连续智能手机身份验证的可靠性和适用性,并对行为的独特性和持久性进行了系统评估。对于传感器行为的每个样本,都要提取和分析运动信息序列,并以统计,频率和小波域特征为特征,以提供用户触摸动作的准确且细粒度的表征。使用一类学习技术的基于马尔可夫的决策程序已开发,并应用于特征空间以执行身份验证。在各种操作场景下,使用来自102个对象的520 200个触摸动作的传感器数据进行分析。大量实验表明,运动传感器行为对于主动和连续身份验证具有足够的可分辨性和稳定性,并且可以实现5.03%的错误拒绝率和3.98%的错误接受率。提供了关于操作长度可用性,对应用场景的敏感性,对用户规模的可伸缩性,对不同传感器的贡献以及对行为变化的响应的其他实验,以进一步探索有效性和适用性。我们还在Android系统中实现了一个身份验证系统,可以对合法用户的存在做出反应。

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