Detecting Phone Theft Using Machine Learning

Xinyu Liu, D. Wagner, Serge Egelman
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引用次数: 6

Abstract

Millions of smartphones are stolen in the United States every year, putting victims' personal information at risk since many users often do not lock their phones. To protect individuals' smartphones and the private data stored on them, we developed a system that automatically detects pickpocket and grab-and-run theft, in which a thief grabs the phone from a victim's hand then runs away. Our system applies machine learning to smartphone accelerometer data in order to detect possible theft incidents. Based on a field study and simulated theft scenarios, we are able to detect all thefts at a cost of 1 false alarm per week. Given that many smartphone users refuse to enable screen locking mechanisms over complaints that it takes too long to unlock their devices, our system could be used in conjunction with these systems in order to drastically decrease the number of times a user is asked to provide a lock code. That is, our system could be used to prompt smartphone users for PINs or passcodes only when theft events have been detected.
使用机器学习检测手机盗窃
在美国,每年有数百万智能手机被盗,由于许多用户通常不锁手机,因此受害者的个人信息面临风险。为了保护个人的智能手机和存储在智能手机上的私人数据,我们开发了一个系统,可以自动检测扒手和抢跑盗窃,即小偷从受害者手中抢走手机然后逃跑。我们的系统将机器学习应用于智能手机加速度计数据,以检测可能的盗窃事件。根据实地研究和模拟盗窃场景,我们能够以每周1次误报的成本检测到所有盗窃。考虑到许多智能手机用户因为抱怨解锁时间太长而拒绝启用屏幕锁定机制,我们的系统可以与这些系统结合使用,以大幅减少用户被要求提供锁码的次数。也就是说,我们的系统只有在检测到盗窃事件时才会提示智能手机用户输入pin码或密码。
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