segath:基于片段的行为生物识别认证方法。

Yanyan Li, Mengjun Xie, Jiang Bian
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引用次数: 7

摘要

在移动设备上应用行为生物识别认证已经进行了许多研究,并显示出有希望的结果。然而,鉴于行为生物识别技术的动态特性,对其验证准确性的担忧仍然普遍存在。在本文中,我们从一个新的角度来解决准确性问题-行为片段,即一个手势的片段而不是整个手势作为行为生物识别认证的基本构建块。基于这种独特的视角,我们提出了一种新的行为生物识别认证方法,称为SegAuth,它可以应用于各种基于手势或运动的认证场景。segath可以通过关注每个用户在手势中频繁出现的独特手势片段来实现高精度。在segath中,来自手势/动作的时间序列首先被划分为片段,然后转换为一组字符串令牌,其中代表独特的重复片段的令牌比那些在用户中常见的令牌具有更高的真实概率。从手势派生的所有标记中计算出的总体真实分数用于确定用户的真实性。我们使用4个不同的数据集评估了segath的有效性。实验结果表明,segath在评价数据集上可以获得比现有流行方法更高的一致性精度。
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SegAuth: A Segment-based Approach to Behavioral Biometric Authentication.

Many studies have been conducted to apply behavioral biometric authentication on/with mobile devices and they have shown promising results. However, the concern about the verification accuracy of behavioral biometrics is still common given the dynamic nature of behavioral biometrics. In this paper, we address the accuracy concern from a new perspective-behavior segments, that is, segments of a gesture instead of the whole gesture as the basic building block for behavioral biometric authentication. With this unique perspective, we propose a new behavioral biometric authentication method called SegAuth, which can be applied to various gesture or motion based authentication scenarios. SegAuth can achieve high accuracy by focusing on each user's distinctive gesture segments that frequently appear across his or her gestures. In SegAuth, a time series derived from a gesture/motion is first partitioned into segments and then transformed into a set of string tokens in which the tokens representing distinctive, repetitive segments are associated with higher genuine probabilities than those tokens that are common across users. An overall genuine score calculated from all the tokens derived from a gesture is used to determine the user's authenticity. We have assessed the effectiveness of SegAuth using 4 different datasets. Our experimental results demonstrate that SegAuth can achieve higher accuracy consistently than existing popular methods on the evaluation datasets.

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