传感器增强击键动力学对抗统计攻击的有效性研究

V. Stanciu, Riccardo Spolaor, M. Conti, Cristiano Giuffrida
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引用次数: 46

摘要

近年来,简单的基于密码的身份验证系统越来越被证明对现实世界中的许多类型的设备是无效的。因此,许多研究人员将精力集中在设计新的生物识别认证系统上。移动设备的出现进一步加速了这一趋势,移动设备提供了许多传感器和实现各种移动生物识别认证系统的功能。然而,随着生物识别技术的进步,攻击也变得越来越复杂,许多生物识别技术在实践中面对高级攻击者时最终被证明是不够的。在本文中,我们研究了传感器增强击键动力学的有效性,这是一种最近的移动生物识别认证机制,它结合了一组特别丰富的功能。在我们的分析中,我们考虑了不同类型的攻击,重点关注从一般人口统计中提取的高级攻击。这种攻击已经被证明是有效的,大大降低了许多最先进的生物识别认证系统的准确性。我们实施了针对传感器增强的击键动力学的统计攻击,并评估了其对检测准确性的影响。一方面,我们的结果表明,传感器增强的击键动力学通常对统计攻击具有鲁棒性,具有边际等错误率影响(<0.14%)。另一方面,我们的结果表明,令人惊讶的是,击键定时功能极大地削弱了单独由传感器功能提供的安全保证。我们的研究结果表明,传感器动态可能是针对最近提出的实际攻击的更强的生物识别认证机制。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
On the Effectiveness of Sensor-enhanced Keystroke Dynamics Against Statistical Attacks
In recent years, simple password-based authentication systems have increasingly proven ineffective for many classes of real-world devices. As a result, many researchers have concentrated their efforts on the design of new biometric authentication systems. This trend has been further accelerated by the advent of mobile devices, which offer numerous sensors and capabilities to implement a variety of mobile biometric authentication systems. Along with the advances in biometric authentication, however, attacks have also become much more sophisticated and many biometric techniques have ultimately proven inadequate in face of advanced attackers in practice. In this paper, we investigate the effectiveness of sensor-enhanced keystroke dynamics, a recent mobile biometric authentication mechanism that combines a particularly rich set of features. In our analysis, we consider different types of attacks, with a focus on advanced attacks that draw from general population statistics. Such attacks have already been proven effective in drastically reducing the accuracy of many state-of-the-art biometric authentication systems. We implemented a statistical attack against sensor-enhanced keystroke dynamics and evaluated its impact on detection accuracy. On one hand, our results show that sensor-enhanced keystroke dynamics are generally robust against statistical attacks with a marginal equal-error rate impact (<0.14%). On the other hand, our results show that, surprisingly, keystroke timing features non-trivially weaken the security guarantees provided by sensor features alone. Our findings suggest that sensor dynamics may be a stronger biometric authentication mechanism against recently proposed practical attacks.
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