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Nonlinear analysis of pedestrian flow Reynolds number in video scenes

机译:视频场景中行人流量雷诺数的非线性分析

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摘要

Research on crowd motion state plays an essential role for public safety and security. This paper aims to investigate the chaotic characteristics of pedestrian flow as a dynamical system. Firstly, pedestrian flow Reynolds number is proposed, which is a novel feature descriptor derived from Hydrodynamics, to describe crowd motion state. Secondly, the calculation method of pedestrian flow Reynolds number in video is put forward to characterize the motion state of the pedestrian flow. Thirdly, nonlinear time series analysis tools, including time delay embedding and largest Lyapunov exponent are applied to verify the chaos of pedestrian flow's motion. Experiments are performed on different data sets and the result that all the largest Lyapunov exponent are positive could indeed demonstrate the complexity and chaos of crowd motion. Meanwhile, it turns out that pedestrian flow Reynolds number put forward in the paper can effectively characterize the motion state of pedestrian flow. Our work paves a new way for research on crowd turbulence. It could potentially be applied to pattern analysis of crowd abnormal behavior analysis, crowd motion understanding, which can be used to improve the efficiency of public security management. (C) 2019 Elsevier Ltd. All rights reserved.
机译:人群运动状态对公共安全和安全性起重要作用。本文旨在调查作为动态系统的行人流的混沌特征。首先,提出了行人流程雷诺数,这是衍生自流体动力学的新颖特征描述符,以描述人群运动状态。其次,向视频中的行人流雷诺数的计算方法被提出了表征行人流动的运动状态。第三,非线性时间序列分析工具(包括时间延迟嵌入和最大Lyapunov指数)应用于验证行人流动运动的混乱。实验在不同的数据集上进行,结果是所有最大的Lyapunov指数是积极的,确实可以证明人群运动的复杂性和混乱。同时,事实证明,本文提出的行人流雷诺数可以有效地表征行人流动的运动状态。我们的工作为人群湍流进行了一种新的途径。它可能适用于人群异常行为分析的模式分析,人群运动理解,可用于提高公安管理效率。 (c)2019年elestvier有限公司保留所有权利。

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