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Eathentication: A Chewing-based Authentication Method

机译:Eathentication:一种基于咀嚼的身份验证方法

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摘要

Nowadays, authentication systems are a milestone for the security of modern societies. In particular, researchers proposed several effective authentication mechanisms for mobile devices. Unfortunately, most of these still require the user to interact lately with the smartphone screen, which is often undesirable in many setting where the user can not take the phone (e.g., at an airport’s gate, in the crowded subway, while driving). In several of these scenarios, users are anyway wearing earphones. In this paper, we propose Eathentication: a novel user-friendly authentication method based on an assessment of the ear channel movement during chewing. Eathentication exploits proximity led sensors mounted on earphones to measures the movement of ear channel. We conducted our experiments collecting data from 23 participants, during three chewing sessions. During the experiment, the subject performed the test, moving the jaw and chewing different types of food. We trained different Machine Learning models on single participant performing intra-subject and inter-subject prediction. Results show that Eathentication can effectively authenticate people based on their chewing behaviour on the investigated stimuli. For the better classifier, our method achieved a False Acceptance Rate of $0.041pm 0.016$ and a False Rejection Rate of $0.128pm 0.043$.
机译:如今,身份验证系统已成为现代社会安全的里程碑。特别是,研究人员提出了几种针对移动设备的有效身份验证机制。不幸的是,大多数情况下仍然需要用户最近与智能手机屏幕进行交互,这在用户无法接电话的许多环境中(例如,在机场门口,拥挤的地铁中,开车时)常常是不希望的。在其中的几种情况下,用户无论如何都戴着耳机。在本文中,我们提出了Eathentication:一种新的用户友好的身份验证方法,该方法基于对咀嚼过程中耳道运动的评估。 Eathentication利用安装在耳机上的接近感应传感器来测量耳道的运动。我们进行了实验,在3次咀嚼环节中收集了23位参与者的数据。在实验过程中,受试者进行了测试,移动了下颌并咀嚼了不同类型的食物。我们在执行受试者间和受试者间预测的单个参与者上训练了不同的机器学习模型。结果表明,Eathetication可以基于人们对所研究刺激的咀嚼行为来有效地对其进行身份验证。对于更好的分类器,我们的方法获得了$ 0.041 \ pm 0.016 $的错误接受率和$ 0.128 \ pm 0.043 $的错误拒绝率。

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