首页> 外文会议>21st IEEE International WETICE Conference >Inferring Crowd Conditions from Pedestrians' Location Traces for Real-Time Crowd Monitoring during City-Scale Mass Gatherings
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Inferring Crowd Conditions from Pedestrians' Location Traces for Real-Time Crowd Monitoring during City-Scale Mass Gatherings

机译:从行人的位置跟踪推断人群状况,以便在城市规模的群众聚会中实时监视人群

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There is a need for event organizers and emergency response personnel to detect emerging, potentially critical crowd situations at an early stage during city-wide mass gatherings. In this work, we introduce and describe mathematical methods based on pedestrian-behavior models to infer and visualize crowd conditions from pedestrians' GPS location traces. We tested our approach during the 2011 Lord Mayor's Show in London by deploying a system able to infer and visualize in real-time crowd density, crowd turbulence, crowd velocity and crowd pressure. To collection location updates from festival visitors, a mobile phone app that supplies the user with event-related information and periodically logs the device's location was distributed. We collected around four million location updates from over 800 visitors. The City of London Police consulted the crowd condition visualization to monitor the event. As an evaluation of the usefulness of our approach, we learned through interviews with police officers that our approach helps to assess occurring crowd conditions and to spot critical situations faster compared to the traditional video-based methods. With that, appropriate measure can be deployed quickly helping to resolve a critical situation at an early stage.
机译:需要事件组织者和紧急响应人员在城市范围内的群众聚会的早期阶段检测正在出现的,潜在的危急人群情况。在这项工作中,我们介绍和描述基于行人行为模型的数学方法,以从行人的GPS位置轨迹推断和可视化人群状况。我们在2011年伦敦市长市长表演期间测试了我们的方法,方法是部署一个系统,以实时推断和可视化人群密度,人群湍流,人群速度和人群压力。为了收集节日游客的位置更新,分发了一个手机应用程序,该应用程序为用户提供了与事件有关的信息,并定期记录该设备的位置。我们从800多位访客那里收集了大约400万个位置更新。伦敦金融城警方参考了人群状况可视化来监视事件。为了评估我们方法的有效性,我们通过与警察的访谈了解到,与传统的基于视频的方法相比,我们的方法有助于评估人群的状况并更快地发现紧急情况。这样一来,便可以迅速部署适当的措施,以帮助在早期阶段解决紧急情况。

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