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HMOG: New Behavioral Biometric Features for Continuous Authentication of Smartphone Users

机译:HMOG:用于智能手机用户连续身份验证的新行为生物特征

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We introduce hand movement, orientation, and grasp (HMOG), a set of behavioral features to continuously authenticate smartphone users. HMOG features unobtrusively capture subtle micro-movement and orientation dynamics resulting from how a user grasps, holds, and taps on the smartphone. We evaluated authentication and biometric key generation (BKG) performance of HMOG features on data collected from 100 subjects typing on a virtual keyboard. Data were collected under two conditions: 1) sitting and 2) walking. We achieved authentication equal error rates (EERs) as low as 7.16% (walking) and 10.05% (sitting) when we combined HMOG, tap, and keystroke features. We performed experiments to investigate why HMOG features perform well during walking. Our results suggest that this is due to the ability of HMOG features to capture distinctive body movements caused by walking, in addition to the hand-movement dynamics from taps. With BKG, we achieved the EERs of 15.1% using HMOG combined with taps. In comparison, BKG using tap, key hold, and swipe features had EERs between 25.7% and 34.2%. We also analyzed the energy consumption of HMOG feature extraction and computation. Our analysis shows that HMOG features extracted at a 16-Hz sensor sampling rate incurred a minor overhead of 7.9% without sacrificing authentication accuracy. Two points distinguish our work from current literature: 1) we present the results of a comprehensive evaluation of three types of features (HMOG, keystroke, and tap) and their combinations under the same experimental conditions and 2) we analyze the features from three perspectives (authentication, BKG, and energy consumption on smartphones).
机译:我们介绍了手的移动,方向和抓地力(HMOG),这是一组行为特征,可以不断对智能手机用户进行身份验证。 HMOG功能可以毫不费力地捕获由用户如何握住,握住和轻敲智能手机而产生的细微运动和方向动态。我们从在虚拟键盘上打字的100名受试者收集的数据评估了HMOG功能的身份验证和生物识别密钥生成(BKG)性能。在两个条件下收集数据:1)坐着和2)步行。当我们结合使用HMOG,敲击和击键功能时,我们获得的身份验证均等错误率(EER)分别低至7.16%(行走)和10.05%(坐在)。我们进行了实验,以研究为什么HMOG功能在行走过程中表现良好。我们的结果表明,这是由于HMOG功能能够捕获由步行引起的独特身体运动,以及水龙头的手部运动动态。借助BKG,我们将HMOG与水龙头结合使用,可实现15.1%的EER。相比之下,使用敲击,按键保持和滑动功能的BKG的EER在25.7%和34.2%之间。我们还分析了HMOG特征提取和计算的能耗。我们的分析表明,以16 Hz传感器采样率提取的HMOG功能在不牺牲身份验证准确性的情况下会产生7.9%的较小开销。有两点将我们的工作与当前文献区分开来:1)我们在三种条件下(在相同的实验条件下)对三种类型的特征(HMOG,击键和敲击)及其组合进行了全面评估,并且2)从三个角度分析了这些特征(身份验证,BKG和智能手机上的能耗)。

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