基于用户认证的物联网压电力触摸系统

Anbiao Huang, Shuo Gao, A. Nathan
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引用次数: 2

摘要

在物联网(IoT)应用中,安全访问智能系统(例如智能手机)对于保护私人信息非常重要。在各种认证技术中,基于用户触摸行为的击键认证方法越来越受到关注。这是由于其独特的优点,例如在大多数智能系统中不需要额外的硬件组件和易于使用。在本文中,我们提出了一种利用用户的触摸时间和力信息来获得高用户认证精度的技术,这些信息是由压电触摸面板获得的。将人工神经网络与用户的触摸特征相结合,实现了1.09%的等错误率(EER),验证了所提出的技术实现高度安全用户身份验证的可行性,从而推动了可在物联网领域部署的安全技术的发展。
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A User Authentication Enabled Piezoelectric Force Touch System for the Internet of Things
In Internet of Things (IoT) applications, secure access to smart systems, e.g., smartphones, is important for protecting private information. Among various authentication techniques, keystroke authentication methods based on touch behavior of the user have received increasing attention. This is due to the unique benefits, such as no additional hardware component and the ease of use in most smart systems. In this paper, we present a technique for obtaining high user authentication accuracy by utilizing a user’s touch time and force information, which are obtained from a piezoelectric touch panel. After combining artificial neural networks with the user’s touch features, an equal error rate (EER) of 1.09% is achieved, validating the feasibility of the proposed technique for achieving highly secure user authentication, hence advancing the development of security techniques potentially deployable in the field of IoT.
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