Inferring smartphone keypress via smartwatch inertial sensing

Sougata Sen, Karan Grover, Vigneshwaran Subbaraju, Archan Misra
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引用次数: 9

Abstract

Due to numerous benefits, sensor-rich smartwatches and wrist-worn wearable devices are quickly gaining popularity. The popularity of these devices also raises privacy concerns. In this paper we explore one such privacy concern: the possibility of extracting the location of a user's touch-event on a smartphone, using the inertial sensor data of a smartwatch worn by the user on the same arm. This is a major concern not only because it might be possible for an attacker to extract private and sensitive information from the inputs provided but also because the attack mode utilises a device (smartwatch) that is distinct from the device being attacked (smartphone). Through a user study we find that such attacks are possible. Specifically, we can infer the user's entry pattern on a qwerty keyboard, with an error bound of ±2 neighboring keys, with 73.85% accuracy. As a possible preventive mechanism, we also show that adding a little white noise to inertial sensor data can reduce the inference accuracy by almost 30%, without affecting the accuracy of macro-gesture recognition.
通过智能手表惯性感应推断智能手机按键
由于诸多好处,传感器丰富的智能手表和手腕可穿戴设备正在迅速普及。这些设备的普及也引发了人们对隐私的担忧。在本文中,我们探讨了这样一个隐私问题:利用用户在同一只手臂上佩戴的智能手表的惯性传感器数据,提取用户在智能手机上触摸事件位置的可能性。这是一个主要问题,不仅因为攻击者可能从提供的输入中提取私人和敏感信息,而且因为攻击模式利用的设备(智能手表)与被攻击的设备(智能手机)不同。通过对用户的研究,我们发现这种攻击是可能的。具体来说,我们可以在qwerty键盘上推断用户的输入模式,误差范围为±2个相邻键,准确率为73.85%。作为一种可能的预防机制,我们还表明,在惯性传感器数据中添加一点白噪声可以将推理精度降低近30%,而不会影响宏手势识别的精度。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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