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arxiv: 1610.03121 · v1 · pith:FDNIXYQJnew · submitted 2016-10-10 · ⚛️ physics.soc-ph

Measuring and Modelling Crowd Flows - Fusing Stationary and Tracking Data

classification ⚛️ physics.soc-ph
keywords datastationarysourcesathletescrowdeventsfloating-carflow
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The two main data categories of vehicular traffic flow, stationary detector data and floating-car data, are also available for many Marathons and other mass-sports events: Loop detectors and other stationary data sources find their counterpart in the RFID tags of the athletes recording the split times at several stations during the race. Additionally, more and more athletes use smart-phone apps generating track data points that are the equivalent of floating-car data. We present a methodology to detect congestions and estimate the location of jam-fronts, the delay times, and the spatio-temporal speed and density distribution of the athlete's crowd flow by fusing these two data sources based on a first-order macroscopic model with triangular fundamental diagram. The method can be used in real-time or for analyzing past events. Using synthetic "ground truth" data generated by simulations with the Intelligent-Driver Model, we show that, in a real-time application, the proposed algorithm is robust and effective with minimal data requirements. Generally, two stationary data sources and about ten "floating-athlete" trajectories per hour are sufficient.

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