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Distributed Mean-Field-Type Filters for Traffic Networks

机译:用于交通网络的分布式平均字段型过滤器

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Traffic surveillance plays an important role in the development of a smart city, and it is a fundamental part in many applications such as security monitoring and traffic analysis. People are thrilled by the abundant data generated from the huge traffic networks but have difficulty in using them. In this paper, we propose a distributed mean-field-type filtering (DMF) framework to handle those noisy, partial-observed, and high-dimensional data. The filter incorporates a mean-field term into the system model and decomposes the state space into highly independent parts; filtering is performed in each part and then integrated. Our approach iterates through four operations: sampling, prediction, decomposition, and correction. Theoretical analysis provides a linear bound for the global error, which is independent of the network's cardinality. We implemented DMF in aircraft and vehicle tracking scenarios. Performance evaluation on synthetic and real-world data demonstrates the advantage of our approach over traditional mean-field free filters.
机译:交通监测在智能城市的发展中起着重要作用,它是许多应用中的基本部分,如安全监测和交通分析。人们受到来自庞大交通网络生成的丰富数据,但难以使用它们。在本文中,我们提出了一种分布式平均场型过滤(DMF)框架,以处理那些嘈杂,部分观察和高维数据。过滤器将平均场术语包含在系统模型中,并将状态空间分解为高度独立的部件;在每个部件中执行过滤,然后进行集成。我们的方法通过四次操作迭代:采样,预测,分解和校正。理论分析为全局错误提供了线性绑定,它与网络的基数无关。我们在飞机和车辆跟踪方案中实施了DMF。综合和实世界数据的绩效评估展示了我们对传统意思自由过滤器的方法的优势。

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