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PATH: Person authentication using trace histories

机译:路径:使用跟踪历史的人身份验证

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摘要

In this paper, a solution to the problem of Active Authentication using trace histories is addressed. Specifically, the task is to perform user verification on mobile devices using historical location traces of the user as a function of time. Considering the movement of a human as a Markovian motion, a modified Hidden Markov Model (HMM)-based solution is proposed. The proposed method, namely the Marginally Smoothed HMM (MSHMM), utilizes the marginal probabilities of location and timing information of the observations to smooth-out the emission probabilities while training. Hence, it can efficiently handle unforeseen observations during the test phase. The verification performance of this method is compared to a sequence matching (SM) method, a Markov Chain-based method (MC) and an HMM with basic Laplace Smoothing (HMM-lap). Experimental results using the location information of the UMD Active Authentication Dataset-02 (UMDAA02) and the GeoLife dataset are presented. The proposed MSHMM method outperforms the compared methods in terms of equal error rate (EER). Additionally, the effects of different parameters on the proposed method are discussed.
机译:在本文中,解决了使用跟踪历史的主动认证问题的解决方案。具体地,任务是使用用户的历史位置迹线作为时间的函数来对移动设备进行用户验证。考虑到人类作为马尔可夫运动的运动,提出了一种改进的隐藏马尔可夫模型(HMM)的基础解决方案。所提出的方法,即边际平滑的HMM(MSHMM),利用了观察结果的位置和定时信息的边际概率,以在训练时平滑排放概率。因此,它可以在测试阶段有效地处理不可预见的观察。将该方法的验证性能与序列匹配(SM)方法,基于Markov链的方法(MC)和具有基本Laplace平滑的HMM(HMM-LAP)进行比较。呈现了使用UMD活动认证数据集-02(UMDAA02)和地理生命定数据集的位置信息的实验结果。所提出的MSHMM方法在相同的错误率(eer)方面优于比较方法。另外,讨论了不同参数对所提出的方法的影响。

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