一种利用压力传感器提取按键模式的嵌入式系统

C. Leberknight, M. Recce
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引用次数: 2

摘要

流行的生物识别安全技术包括指纹和虹膜识别系统。这些技术非常精确,因为与个人手指或眼睛相关的模式非常独特和静态。然而,当这些技术用于物理访问控制时,它们会告知潜在的攻击者需要特定的特征才能获得访问。行为计量学旨在通过对不同行为模式的隐蔽监控来开发新的策略来增强物理安全。本研究提出了一种新颖的独立行为测量原型,该原型结合了具有独特压力特征的标准密码安全性,以秘密分析个人输入模式。该原型在62个人类受试者和9种分类算法的控制设置下进行评估。kNN算法的分类率最高,达到94%。这项研究是为数不多的几篇通过大规模人体试验实证生物识别性能的论文之一,并且还确定了影响分类器性能的几个关键设计考虑因素。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
An embedded system for extracting keystroke patterns using pressure sensors
Popular biometric security technologies include fingerprint and iris recognition systems. These technologies are extremely accurate because the patterns associated with an individual's finger or eye are very unique and static. However, when these technologies are used for physical access control they inform the potential adversary that specific characteristics are required to gain access. Behaviometrics aims to develop new strategies to enhance physical security via covert monitoring of distinct behavioral patterns. This research presents a novel stand-alone behaviometric prototype that incorporates standard password security with unique pressure characteristics to covertly analyse individual typing patterns. The prototype is evaluated under a controlled setting with 62 human subjects and nine classification algorithms. The kNN algorithm produced the highest classification rate of 94%. This research is one of the few papers that empirically substantiates biometric performance with a large-scale human subject trial, and also identifies several critical design considerations that impact classifier performance.
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