Improving Performance and Usability in Mobile Keystroke Dynamic Biometric Authentication

Faisal Alshanketi, I. Traoré, Ahmed Awad E. Ahmed
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引用次数: 45

Abstract

In the last few years, the number of mobile devices such as smartphones and tablets, in circulation, has increased dramatically. The primary and often only protection mechanism in these devices is authentication using a password or a Personal Identification Number (PIN). Passwords are notoriously known to be a weak authentication mechanism, no matter how complex the underlying format is. A more secure alternative option which has gained interest recently is extracting keystroke dynamic biometrics from supplied passwords for mobile authentication. In this paper, we show that using random forests classifier, improved accuracy performance can be achieved for mobile keystroke dynamic biometric authentication. We also propose a new algorithm for handling typos, which is an essential step in improving usability. We study both timing features and pressure-based features. Experimental evaluation is based on two public datasets and a third dataset collected in our lab. The best performance, obtained by combining timing and pressure features, is an Equal Error Rate (EER) of 2.3% for a population of 42 users.
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改进移动击键动态生物识别认证的性能和可用性
在过去几年中,流通中的智能手机和平板电脑等移动设备的数量急剧增加。在这些设备中,主要且通常唯一的保护机制是使用密码或个人识别号码(PIN)进行身份验证。众所周知,无论底层格式有多复杂,密码都是一种弱的身份验证机制。一种更安全的替代方案最近引起了人们的兴趣,即从提供的移动身份验证密码中提取按键动态生物识别技术。在本文中,我们证明了使用随机森林分类器可以提高移动击键动态生物特征认证的准确性。我们还提出了一种处理错别字的新算法,这是提高可用性的重要步骤。我们研究了时序特征和基于压力的特征。实验评估基于两个公共数据集和我们实验室收集的第三个数据集。通过结合时序和压力特征获得的最佳性能是42个用户的平均错误率(EER)为2.3%。
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