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Cooperative Multi-sensor Multi-vehicle Localization in Vehicular Adhoc Networks

机译:车载ADHOC网络中的协同多传感器多车辆定位

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Intelligent Transportation System (ITS) is an important application domain for information reuse and integration. Efficient integration and deployment of information and communication technologies (ICT) can potentially reduce travel time and emission, improve usage of parking and public spaces, offer personalized travel related services, and more importantly, improve safety for drivers and pedestrians in large municipalities. Personalized travel related services and recommendation systems rely mainly on precise identification of position of the vehicles. In this paper we propose a cooperative multi-sensor multi-vehicle localization algorithm with high accuracy for terrestrial vehicles. Noisy observations in the form of GPS coordinates of nearby vehicles as well as inter-vehicle distance measurements are assumed to be available. These heterogeneous sources of information are fused together and used to estimate the number and motion model parameters of the vehicles in the field. The problem is formulated in the context of Bayesian framework and vehicle locations are estimated via a Sequential Monte-Carlo Probability Hypothesis Density (SMC-PHD) filter. Given that the GPS data and inter-vehicle distance measurements are available except for short periods of time, simulation results indicate that the proposed algorithm provides approximately threefold improvement in location accuracy compared to that achieved with GPS.
机译:智能交通系统(ITS)是信息的重用与集成的一个重要应用领域。高效整合以及信息和通信技术的部署(ICT)可能会减少旅行时间和排放,提高停车设施和公共空间,提供个性化的旅游相关服务的使用,更重要的是,提高对大市司机和行人的安全。个性化的旅游相关的服务和推荐系统主要依靠的车辆位置的精确识别。在本文中,我们提出了高精度地面交通工具合作的多传感器多车辆定位算法。在附近的车辆以及车辆间距离测量的GPS坐标的形式嘈杂的意见被认为是可用的。的信息,这些异构源熔合在一起并将其用于估计在该领域的车辆的数目和运动模型参数。问题是在贝叶斯框架和车辆的位置的上下文配制经由序贯蒙特卡洛概率假设密度(SMC-PHD)滤波器估计。鉴于GPS数据和车辆间距离测量是除了很短的时间可用,模拟结果表明,所提出的算法提供了在定位精度大约3倍的改进相比于与GPS实现。

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