Non-cooperating vehicle tracking in VANETs using the conditional logit model

T. Reza, M. Barbeau, G. Lamothe, Badr Alsubaihi
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引用次数: 9

Abstract

Vehicular Ad Hoc Networks (VANETs) are widely considered as indispensable elements of the future intelligent transportation systems that are aiming to apply information and communications technologies to improve transportation safety and quality of experience. We present our take on a relatively unexplored problem, exploiting VANETs for on-road surveillance. The proposal is inspired by multi-agent systems intended for surveillance, e.g., a distributed camera network. We propose a tracking system composed of three operational modules, namely, localization, tracking data collection and prediction of future locations of a target. Camera equipped onboard units (OBUs) act as remote mobile sensors. Tracking messages are communicated among the OBUs and roadside units (RSUs). These messages are also triggered in the possible locations of the target in a timely manner. Therefore, it is imperative to scope the search to limit the number of OBUs and RSUs involved in the tracking operation, thus, minimizing the number of tracking messages. To this end, a movement modeling technique utilizes the OBU-observations to classify the target's movement pattern to aid future trajectory prediction. In our previous work, we proposed a Dirichlet-multinomial (D-M) model under the Bayesian estimation framework. In this paper, we present newly identified cues towards improving the movement estimation model. The D-M model is constrained to the assumption that all the choice sets are identical across trials. We demonstrate that this is almost never the case. The improved model exploits a choice model, called the conditional logit. The conditional logit model is attractive when choice sets vary across trials. Additionally, we weight outcome of each trial according to the given choice sets to achieve higher estimation accuracy. We evaluate the new model by means of an experimental analysis and compare results with the D-M model.
基于条件logit模型的VANETs非合作车辆跟踪
车辆自组织网络(vanet)被广泛认为是未来智能交通系统不可或缺的组成部分,旨在应用信息和通信技术来提高交通安全和体验质量。我们提出了一个相对未被探索的问题,利用VANETs进行道路监控。该提议的灵感来自于用于监视的多智能体系统,例如分布式摄像机网络。我们提出了一个由定位、跟踪数据收集和预测目标未来位置三个操作模块组成的跟踪系统。机载摄像机(OBUs)作为远程移动传感器。跟踪消息在OBUs和路边单元(rsu)之间进行通信。这些信息也会在目标的可能位置及时触发。因此,必须限定搜索范围,以限制参与跟踪操作的OBUs和rsu的数量,从而使跟踪消息的数量最小化。为此,运动建模技术利用obu观测对目标的运动模式进行分类,以帮助未来的轨迹预测。在我们之前的工作中,我们提出了一个在贝叶斯估计框架下的Dirichlet-multinomial (D-M)模型。在本文中,我们提出了改进运动估计模型的新线索。D-M模型的约束是假设所有的选择集在不同的试验中都是相同的。我们证明,这种情况几乎从未发生过。改进的模型利用了一个选择模型,称为条件logit。当选择集在不同的试验中不同时,条件logit模型是有吸引力的。此外,我们根据给定的选择集对每个试验的结果进行加权,以获得更高的估计精度。通过实验分析对新模型进行了评价,并与D-M模型进行了比较。
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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