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Forecasting Pedestrian Movements Using Recurrent Neural Networks: An Application of Crowd Monitoring Data

机译:使用经常性神经网络预测行人运动:人群监测数据的应用

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摘要

Currently, effective crowd management based on the information provided by crowd monitoring systems is difficult as this information comes in at the moment adverse crowd movements are already occurring. Up to this moment, very little forecasting techniques have been developed that predict crowd flows a longer time period ahead. Moreover, most contemporary state estimation methods apply demanding pre-processing steps, such as map-matching. The objective of this paper is to design, train and benchmark a data-driven procedure to forecast crowd movements, which can in real-time predict crowd movement. This procedure entails two steps. The first step comprises of a cell sequence derivation method that allows the representation of spatially continuous GPS traces in terms of discrete cell sequences. The second step entails the training of a Recursive Neural Network (RNN) with a Gated Recurrent Unit (GRU) and six benchmark models to forecast the next location of pedestrians. The RNN-GRU is found to outperform the other tested models. Some additional tests of the ability of the RNN-GRU to forecast illustrate that the RNN-GRU preserves its predictive power when a limited amount of data is used from the first few hours of a multi-day event and temporal information is incorporated in the cell sequences.
机译:目前,基于人群监测系统提供的信息的有效人群管理很难,因为此信息发生在逆势人群移动已经发生。到目前为止,已经开发出非常小的预测技术,以预测人群更长的时间段。此外,大多数当代状态估计方法应用要求预处理步骤,例如Map-匹配。本文的目的是设计,列车和基准数据驱动程序来预测人群运动,可以在实时预测人群运动中。此过程需要两个步骤。第一步包括细胞序列推导方法,其允许在离散的细胞序列方面表示空间连续的GPS迹线。第二步需要使用门控经常性单元(GRU)和六个基准模型进行递归神经网络(RNN),以预测行人的下一个位置。发现RNN-GRU以优于其他测试模型。 RNN-GRU预测能力的一些额外测试表明,当从多日事件的前几个小时使用有限数量的数据时,RNN-GRU保留其预测功率,并且在小区中结合到时间信息序列。

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