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Using data assimilation method to predict people flow in areas of incomplete data availability

机译:使用数据同化方法来预测不完整数据可用性区域中的人员流动

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People flow dynamics from the basis of various applications such as traffic flow analysis, surveillance, business building security, and crowd motion prediction. With the development of sensing technology, diverse sensors have accumulated sufficient data for a proper understanding of pedestrian movement. As the amount of data increases, the automatic acquisition of crowd behavior and walking information has become more imperative. However, despite large developments in sensing technology, detecting and tracking pedestrians over a relatively large area is costly and high-maintenance. In contrast to traditional individual-based analysis, we consider the movement of pedestrians as a whole entity by incorporating dynamic continuum flow theory and demonstrating how it is applied in our kernel-function-based model of people flow density. In order to reconstruct people flow in areas that are partially invisible to sensors, we assess data assimilation methods to predict the whole areas people flow. The experiments which involve 1D/2D simulation and real tracking data demonstrate the validity of our proposed method. Experimental results of real tracking data show that the estimated density in the invisible area is acceptably close to the true value.
机译:人流动态来自各种应用程序,例如交通流分析,监视,业务建设安全性和人群运动预测。随着传感技术的发展,各种各样的传感器已经积累了足够的数据,以正确理解行人的运动。随着数据量的增加,自动获取人群行为和步行信息变得势在必行。然而,尽管传感技术已经取得了很大的发展,但是在相对较大的区域上检测和跟踪行人是昂贵且高维护性的。与传统的基于个人的分析相比,我们通过结合动态连续流理论并说明如何将行人作为一个整体进行运动,并论证了如何将其应用于我们基于核函数的人流密度模型。为了在传感器部分看不见的区域重建人员流动,我们评估了数据同化方法以预测人员流动的整个区域。涉及一维/二维仿真和真实跟踪数据的实验证明了该方法的有效性。真实跟踪数据的实验结果表明,在不可见区域中的估计密度可以接受地接近真实值。

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