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A dual model/artificial neural network framework for privacy analysis in traffic monitoring systems

机译:交通监控系统隐私分析的双模型/人工神经网络框架

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摘要

Most large scale traffic information systems rely on a combination of fixed sensors (e.g. loop detectors, cameras) and user generated data, the latter in the form of probe traces sent by smartphones or GPS devices onboard vehicles. While this type of data is relatively inexpensive to gather, it can pose multiple privacy risks, even if the location tracks are anonymous. In particular, an issue could be the possibility for an attacker to infer user location tracks from anonymous location data, which affects users privacy. In this article, we propose a new framework for analyzing a variety of privacy problems arising in transportation systems. The state of traffic is modeled by the Lighthill-Whitham-Richards traffic flow model, which is a first order scalar conservation law with a concave flux function. Given a set of traffic flow data, we show that the constraints resulting from this partial differential equation are mixed integer linear inequalities for some decision variable. These constraints allow us to determine the likelihood of two distinct location tracks being generated by the same vehicle. We then use these model-based reidentification metrics to train an artificial neural network classifier. Numerical implementations are performed on experimental data from the Mobile Century experiment, and show that this framework significantly outperforms naive reidentification techniques.
机译:大多数大规模交通信息系统依赖于固定传感器(例如环路检测器,摄像机)和用户生成的数据的组合,后者以智能手机或GPS设备在板上车辆发送的探针迹线的形式。虽然这种类型的数据相对廉价地收集,但即使位置曲目是匿名的,它也可以提出多种隐私风险。特别是,一个问题可能是攻击者从匿名位置数据推断用户位置曲目的可能性,这会影响用户隐私。在本文中,我们提出了一个新的框架,用于分析运输系统中出现的各种隐私问题。交通状况由Lighthill-Whitham-Richards交通流量模型建模,这是一个具有凹版磁通功能的一阶标量保守法。给定一组流量流数据,我们表明由该部分微分方程产生的约束是一些决策变量的混合整数线性不等式。这些约束允许我们确定由同一车辆产生的两个不同位置轨道的可能性。然后,我们使用这些基于模型的重新鉴定度量来培训人工神经网络分类器。数值实现是对来自移动世纪实验的实验数据进行的,并表明该框架显着优于朴实的重新凝避技术。

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