MoLe: Motion Leaks through Smartwatch Sensors

He Wang, Tsung-Te Lai, Romit Roy Choudhury
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引用次数: 254

Abstract

Imagine a user typing on a laptop keyboard while wearing a smart watch. This paper asks whether motion sensors from the watch can leak information about what the user is typing. While its not surprising that some information will be leaked, the question is how much? We find that when motion signal processing is combined with patterns in English language, the leakage is substantial. Reported results show that when a user types a word $W$, it is possible to shortlist a median of 24 words, such that $W$ is in this shortlist. When the word is longer than $6$ characters, the median shortlist drops to $10$. Of course, such leaks happen without requiring any training from the user, and also under the (obvious) condition that the watch is only on the left hand. We believe this is surprising and merits awareness, especially in light of various continuous sensing apps that are emerging in the app market. Moreover, we discover additional "leaks" that can further reduce the shortlist -- we leave these exploitations to future work.
鼹鼠:智能手表传感器的运动泄漏
想象一下,用户戴着智能手表在笔记本电脑键盘上打字。这篇论文的问题是,手表上的运动传感器是否能泄露用户输入内容的信息。虽然一些信息会被泄露并不奇怪,但问题是会泄露多少?我们发现,当运动信号处理与英语语言模式相结合时,泄漏量很大。报告的结果表明,当用户输入一个单词$W$时,可能会出现24个单词的中位数短列表,因此$W$就在这个短列表中。当单词长度超过$6$字符时,候选列表的中位数下降到$10$。当然,这样的泄漏并不需要用户的任何培训,而且(显然)手表只在左手上。我们认为这是令人惊讶的,值得关注,特别是考虑到应用市场上不断涌现的各种连续传感应用。此外,我们发现了额外的“漏洞”,可以进一步减少候选名单-我们将这些开发留给未来的工作。
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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