Spectral Keyboard Streams: Towards Effective and Continuous Authentication

A. Alshehri, Frans Coenen, Danushka Bollegala
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Abstract

In this paper, an innovative approach to keyboard user monitoring (authentication), using keyboard dynamics and founded on the concept of time series analysis, is presented. The work is motivated by the need for robust authentication mechanisms in the context of on-line assessment such as those featured in many online learning platforms. Four analysis mechanisms are considered: analysis of keystroke time series in their raw form (without any translation), analysis consequent to translating the time series into a more compact form using either the Discrete Fourier Transform or the Discrete Wavelet Transform, and a "benchmark" feature vector representation of the form typically used in previous related work. All four mechanisms are fully described and evaluated. A best authentication accuracy of 99% was obtained using the wavelet transform.
频谱键盘流:迈向有效和持续的认证
本文基于时间序列分析的概念,提出了一种基于键盘动力学的键盘用户监控(认证)方法。这项工作的动机是在在线评估的背景下需要强大的认证机制,例如许多在线学习平台的特点。考虑了四种分析机制:以原始形式(没有任何转换)分析击键时间序列,使用离散傅立叶变换或离散小波变换将时间序列转换成更紧凑形式的分析,以及先前相关工作中通常使用的形式的“基准”特征向量表示。这四种机制都得到了充分的描述和评估。利用小波变换获得了99%的最佳认证精度。
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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