Keystroke Recognition Using WiFi Signals

Kamran Ali, A. Liu, Wen Wang, Muhammad Shahzad
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引用次数: 503

Abstract

Keystroke privacy is critical for ensuring the security of computer systems and the privacy of human users as what being typed could be passwords or privacy sensitive information. In this paper, we show for the first time that WiFi signals can also be exploited to recognize keystrokes. The intuition is that while typing a certain key, the hands and fingers of a user move in a unique formation and direction and thus generate a unique pattern in the time-series of Channel State Information (CSI) values, which we call CSI-waveform for that key. In this paper, we propose a WiFi signal based keystroke recognition system called WiKey. WiKey consists of two Commercial Off-The-Shelf (COTS) WiFi devices, a sender (such as a router) and a receiver (such as a laptop). The sender continuously emits signals and the receiver continuously receives signals. When a human subject types on a keyboard, WiKey recognizes the typed keys based on how the CSI values at the WiFi signal receiver end. We implemented the WiKey system using a TP-Link TL-WR1043ND WiFi router and a Lenovo X200 laptop. WiKey achieves more than 97.5\% detection rate for detecting the keystroke and 96.4% recognition accuracy for classifying single keys. In real-world experiments, WiKey can recognize keystrokes in a continuously typed sentence with an accuracy of 93.5%.
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使用WiFi信号的击键识别
击键隐私对于确保计算机系统的安全和人类用户的隐私至关重要,因为键入的内容可能是密码或隐私敏感信息。在本文中,我们首次展示了WiFi信号也可以被用来识别击键。直观的感觉是,在键入某个键时,用户的手和手指以独特的形式和方向移动,从而在通道状态信息(CSI)值的时间序列中生成独特的模式,我们称之为该键的CSI-波形。本文提出了一种基于WiFi信号的按键识别系统WiKey。WiKey由两个商用现货(COTS) WiFi设备组成,一个发送方(如路由器)和一个接收方(如笔记本电脑)。发送方不断发出信号,接收方不断接收信号。当一个人在键盘上输入时,WiKey根据WiFi信号接收端的CSI值来识别输入的键。我们使用TP-Link TL-WR1043ND WiFi路由器和一台联想X200笔记本电脑实现了WiKey系统。WiKey对按键的检测准确率超过97.5%,对单个按键的识别准确率达到96.4%。在现实世界的实验中,WiKey可以识别连续输入句子中的击键,准确率为93.5%。
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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