WINK: Wireless Inference of Numerical Keystrokes via Zero-Training Spatiotemporal Analysis

Edwin Yang, Qiuye He, Song Fang
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引用次数: 3

Abstract

Sensitive numbers play an unparalleled role in identification and authentication. Recent research has revealed plenty of side-channel attacks to infer keystrokes, which require either a training phase or a dictionary to build the relationship between an observed signal disturbance and a keystroke. However, training-based methods are unpractical as the training data about the victim are hard to obtain, while dictionary-based methods cannot infer numbers, which are not combined according to linguistic rules like letters are. We observe that typing a number creates not only a number of observed disturbances in space (each corresponding to a digit), but also a sequence of periods between each disturbance. Based upon existing work that utilizes inter-keystroke timing to infer keystrokes, we build a novel technique called WINK that combines the spatial and time domain information into a spatiotemporal feature of keystroke-disturbed wireless signals. With this spatiotemporal feature, WINK can infer typed numbers without the aid of any training. Experimental results on top of software-defined radio platforms show that WINK can vastly reduce the guesses required for breaking certain 6-digit PINs from 1 million to as low as 16, and can infer over 52% of user-chosen 6-digit PINs with less than 100 attempts.
WINK:通过零训练时空分析的数字击键无线推理
敏感号码在身份识别和身份验证中发挥着无与伦比的作用。最近的研究揭示了大量推断击键的侧信道攻击,这需要一个训练阶段或字典来建立观察到的信号干扰和击键之间的关系。然而,基于训练的方法是不实用的,因为受害者的训练数据很难获得,而基于字典的方法不能推断数字,数字不像字母那样根据语言规则组合。我们观察到,输入一个数字不仅会在空间中产生许多可观察到的扰动(每个扰动对应于一个数字),而且还会在每个扰动之间产生一系列周期。基于现有的利用击键间隔时间来推断击键的工作,我们建立了一种称为WINK的新技术,该技术将空间和时域信息结合成击键干扰无线信号的时空特征。有了这个时空特征,WINK可以在没有任何训练的情况下推断输入的数字。在软件定义无线电平台上的实验结果表明,WINK可以大大减少破译某些6位数密码所需的猜测次数,从100万次减少到16次,并且可以在不到100次尝试的情况下推断出超过52%的用户选择的6位数密码。
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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