Swipe Dynamics as a Means of Authentication: Results From a Bayesian Unsupervised Approach

Parker Lamb, Alexander Millar, Ramon Fuentes
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引用次数: 2

Abstract

The field of behavioural biometrics stands as an appealing alternative to more traditional biometric systems due to the ease of use from a user perspective and potential robustness to presentation attacks. This paper focuses its attention to a specific type of behavioural biometric utilising swipe dynamics, also referred to as touch gestures. In touch gesture authentication, a user swipes across the touchscreen of a mobile device to perform an authentication attempt. A key characteristic of touch gesture authentication and new behavioural biometrics in general is the lack of available data to train and validate models. From a machine learning perspective, this presents the classic curse of dimensionality problem and the methodology presented here focuses on Bayesian unsupervised models as they are well suited to such conditions. This paper presents results from a set of experiments consisting of 38 sessions with labelled ‘victim’ as well as blind and over-the-shoulder presentation attacks. Three models are compared using this dataset; two single-mode models: a shrunk covariance estimate and a Bayesian Gaussian distribution, as well as a Bayesian non-parametric infinite mixture of Gaussians, modelled as a Dirichlet Process. Equal error rates (EER) for the three models are compared and attention is paid to how these vary across the two single-mode models at differing numbers of enrolment samples.
滑动动态作为一种认证手段:来自贝叶斯无监督方法的结果
行为生物识别技术领域是传统生物识别系统的一个有吸引力的替代方案,因为从用户的角度来看,它易于使用,并且对呈现攻击具有潜在的鲁棒性。本文将重点关注一种特定类型的行为生物识别技术,利用滑动动态,也被称为触摸手势。在触摸手势认证中,用户在移动设备的触摸屏上滑动来执行认证尝试。一般来说,触摸手势认证和新行为生物识别技术的一个关键特征是缺乏可用的数据来训练和验证模型。从机器学习的角度来看,这提出了经典的维数诅咒问题,这里提出的方法侧重于贝叶斯无监督模型,因为它们非常适合这种情况。本文介绍了一组实验的结果,包括38个带有“受害者”标签的会话,以及盲目和过肩呈现攻击。利用该数据集对三种模型进行了比较;两种单模模型:缩小协方差估计和贝叶斯高斯分布,以及贝叶斯非参数无限混合高斯分布,建模为狄利克雷过程。对三种模型的等错误率(EER)进行了比较,并注意了在不同的登记样本数量下,这两种单模模型的错误率是如何变化的。
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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