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DDDAS-Based Information-Aggregation for Crowd Dynamics Modeling with UAVs and UGVs

机译:基于DDDAS的信息聚合,用于无人机和无人机的人群动力学建模

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Unmanned aerial vehicles (UAVs) and unmanned ground vehicles (UGVs) collaboratively play important roles in crowd tracking for applications such as border patrol and crowd surveillance. Dynamic data-driven application systems (DDDAS) paradigm has been developed for these applications to take advantage of real-time monitoring data. In the DDDAS paradigm, one crucial step in crowd surveillance is crowd dynamics modeling, which is based on multi-resolution crowd observation data collected from both UAVs and UGVs. Data collected from UAVs capture global crowd motion but have low resolution while those from UGVs have high resolution information of local crowd motion. This paper proposes an information-aggregation approach for crowd dynamics modeling by incorporating multi-resolution data, where a grid-based method is developed to model crowd motion with UAVs’ low-resolution global perception, and an autoregressive model is employed to model individuals’ motion based on UGVs’ detailed perception. A simulation experiment is provided to illustrate and demonstrate the effectiveness of the proposed approach.
机译:无人驾驶飞机(UAV)和无人驾驶飞机(UGV)在人群跟踪(如边境巡逻和人群监视)中共同发挥重要作用。已为这些应用程序开发了动态数据驱动的应用程序系统(DDDAS)范例,以利用实时监视数据。在DDDAS范式中,人群监视的关键步骤之一是人群动力学建模,该模型基于从无人机和UGV收集的多分辨率人群观察数据。从无人机收集的数据可捕获全球人群运动,但分辨率较低,而从无人机收集的数据则具有本地人群运动的高分辨率信息。本文提出了一种融合多分辨率数据的人群动态建模信息集​​成方法,其中开发了一种基于网格的方法来利用无人机的低分辨率全局感知对人群运动进行建模,并采用自回归模型来对个体的运动进行建模。基于UGV的详细感知的运动。提供了一个仿真实验来说明和演示所提出方法的有效性。

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