VibID:通过生物振动法进行用户识别

L. Yang, Wei Wang, Qian Zhang
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引用次数: 26

摘要

用户身份识别是可穿戴设备安全保护和数据隐私保护的关键问题。通过正确的用户识别,可穿戴设备可以针对不同的用户进行个性化设置,自动标记相应的数据,保护用户隐私,防止非法用户欺骗攻击。目前针对可穿戴设备提出的用户识别方案要么依赖于成本较高的专用设备,要么需要用户干预,不方便。在这项工作中,我们利用生物振动仪为小规模场景(例如家庭场景)的可穿戴设备提供了一种新的用户识别解决方案。与现有的用户识别解决方案不同,我们的系统只使用大多数可穿戴设备已经可用的低成本传感器。其核心思想是,当人体受到振动激励时,振动响应反映了使用者的物理特性,即质量、刚度和阻尼。同时,由于用户的生物多样性,不同用户的身体特征也有很大的差异。因此,我们可以利用用户振动响应的差异作为标识符。基于这个想法,我们提出了VibID,它只使用一个低成本的振动电机和加速度计来对用户的手臂产生不显眼的振动并捕获相应的响应。通过检查不同频率的振动模式,VibID建立了一个集成机器学习模型,以识别谁在使用该设备。在人体受试者身上进行了大量的实验,以证明我们的系统在小规模场景中是可靠的,并且对各种混杂因素(例如手臂位置,肌肉状态,用户移动性和佩戴位置)具有鲁棒性。我们还表明,在8个用户的非受控场景中,我们的系统仍然可以确保91%以上的识别精度。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
VibID: User Identification through Bio-Vibrometry
User identification is an essential problem for security protection and data privacy preservation of wearable devices. With proper user identification, wearable devices can adopt personalized settings for different users, automatically label the corresponding data to protect user privacy, and help prevent illegal user spoofing attacks. Current user identification solutions proposed for wearable devices either rely on dedicated devices with high cost or require user intervention which is not convenient. In this work, we leverage the bio-vibrometry to enable a novel user identification solution for wearable devices in small-scale scenarios, e.g., household scenario. Unlike existing user identification solutions, our system only uses the low-cost sensors that are already available for most wearable devices. The key idea is that, when human body is exposed to a vibration excitation, the vibration response reflects the physical characteristics of user, i.e., the mass, stiffness and damping. Meanwhile, due to users' biological diversity, such physical characteristics of different users are quite distinctive. Therefore, we can leverage the discrepancy in users' vibration responses as an identifier. Based on this idea, we propose VibID, which only uses a low-cost vibration motor and accelerometer to generate an unobtrusive vibration to users' arms and capture the corresponding responses. By examining the vibration patterns at different frequencies, VibID builds an ensemble machine learning model to recognize who is using the device. Extensive experiments are conducted on human subjects to demonstrate that our system is reliable in small- scale scenarios and robust to various confounding factors, e.g., arm position, muscle state, user mobility and wearing location. We also show that, in an uncontrolled scenario of 8 users, our system can still ensure a identification accuracy above 91%.
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