Friend or Foe?: Your Wearable Devices Reveal Your Personal PIN

Chen Wang, Xiaonan Guo, Yan Wang, Yingying Chen, Bo Liu
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引用次数: 129

Abstract

The proliferation of wearable devices, e.g., smartwatches and activity trackers, with embedded sensors has already shown its great potential on monitoring and inferring human daily activities. This paper reveals a serious security breach of wearable devices in the context of divulging secret information (i.e., key entries) while people accessing key-based security systems. Existing methods of obtaining such secret information relies on installations of dedicated hardware (e.g., video camera or fake keypad), or training with labeled data from body sensors, which restrict use cases in practical adversary scenarios. In this work, we show that a wearable device can be exploited to discriminate mm-level distances and directions of the user's fine-grained hand movements, which enable attackers to reproduce the trajectories of the user's hand and further to recover the secret key entries. In particular, our system confirms the possibility of using embedded sensors in wearable devices, i.e., accelerometers, gyroscopes, and magnetometers, to derive the moving distance of the user's hand between consecutive key entries regardless of the pose of the hand. Our Backward PIN-Sequence Inference algorithm exploits the inherent physical constraints between key entries to infer the complete user key entry sequence. Extensive experiments are conducted with over 5000 key entry traces collected from 20 adults for key-based security systems (i.e. ATM keypads and regular keyboards) through testing on different kinds of wearables. Results demonstrate that such a technique can achieve 80% accuracy with only one try and more than 90% accuracy with three tries, which to our knowledge, is the first technique that reveals personal PINs leveraging wearable devices without the need for labeled training data and contextual information.
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朋友还是敌人?:你的可穿戴设备会泄露你的个人密码
内置传感器的可穿戴设备(如智能手表和活动追踪器)的激增,已经显示出其在监测和推断人类日常活动方面的巨大潜力。本文揭示了可穿戴设备在人们访问基于密钥的安全系统时泄露秘密信息(即密钥条目)的严重安全漏洞。获取此类秘密信息的现有方法依赖于安装专用硬件(例如,摄像机或假键盘),或使用来自身体传感器的标记数据进行培训,这限制了在实际对手场景中的使用情况。在这项工作中,我们展示了一种可穿戴设备可以用来区分用户细粒度手部运动的毫米级距离和方向,这使得攻击者能够重现用户手部的轨迹,并进一步恢复秘密密钥条目。特别是,我们的系统证实了在可穿戴设备中使用嵌入式传感器的可能性,即加速度计,陀螺仪和磁力计,无论手的姿势如何,都可以推导出用户手在连续输入键之间的移动距离。我们的反向pin序列推断算法利用密钥条目之间固有的物理约束来推断完整的用户密钥条目序列。通过在不同类型的可穿戴设备上进行测试,收集了20名成年人的5000多个按键输入痕迹,用于基于按键的安全系统(即ATM键盘和普通键盘)。结果表明,这种技术只需一次尝试就可以达到80%的准确率,三次尝试就可以达到90%以上的准确率,据我们所知,这是第一种利用可穿戴设备在不需要标记训练数据和上下文信息的情况下显示个人pin的技术。
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