预测大型活动中全市人群动态:一个深度学习系统

Renhe Jiang, Z. Cai, Zhaonan Wang, Chuang Yang, Z. Fan, Quanjun Chen, Xuan Song, R. Shibasaki
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引用次数: 3

摘要

赛事人群管理一直是一个具有重大社会影响的研究课题。当地震、台风、全国性节日等重大事件发生时,人群管理成为政府(如警察)和公共服务运营商(如地铁/公交运营商)保护民众安全或维持公共基础设施运行的首要任务。然而,在这样的事件情况下,人类的行为将变得与日常生活大不相同,这使得预测大型事件中的人群动态变得非常具有挑战性,特别是在全市范围内。因此,在本研究中,我们的目标是仅从当前的瞬时观测中提取“深层”趋势,并对短期未来的趋势进行准确的预测,这被认为是处理事件情况的有效方法。受此启发,我们建立了一个名为DeepUrbanEvent的在线系统,它可以迭代地将当前一小时的全市人群动态作为输入,并报告下一个小时的预测结果作为输出。采用递归神经网络构建的新型深度学习架构旨在以类似于视频预测任务的方式有效地对这些高度复杂的序列数据进行建模。实验结果表明,所提方法的性能优于现有方法。最后,我们将我们的原型系统应用于多个现实世界的大型事件,并表明它是一个高度可部署的在线人群管理系统。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Predicting Citywide Crowd Dynamics at Big Events: A Deep Learning System
Event crowd management has been a significant research topic with high social impact. When some big events happen such as an earthquake, typhoon, and national festival, crowd management becomes the first priority for governments (e.g., police) and public service operators (e.g., subway/bus operator) to protect people’s safety or maintain the operation of public infrastructures. However, under such event situations, human behavior will become very different from daily routines, which makes prediction of crowd dynamics at big events become highly challenging, especially at a citywide level. Therefore in this study, we aim to extract the “deep” trend only from the current momentary observations and generate an accurate prediction for the trend in the short future, which is considered to be an effective way to deal with the event situations. Motivated by these, we build an online system called DeepUrbanEvent, which can iteratively take citywide crowd dynamics from the current one hour as input and report the prediction results for the next one hour as output. A novel deep learning architecture built with recurrent neural networks is designed to effectively model these highly complex sequential data in an analogous manner to video prediction tasks. Experimental results demonstrate the superior performance of our proposed methodology to the existing approaches. Lastly, we apply our prototype system to multiple big real-world events and show that it is highly deployable as an online crowd management system.
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