Understanding Crowd Behaviors in a Social Event by Passive WiFi Sensing and Data Mining
Understanding crowd behaviors in a large social event is crucial for event management. Passive WiFi sensing, by collecting WiFi probe requests sent from mobile devices, provides a better way to monitor crowds compared with people counters and cameras in terms of free interference, larger coverage, l...
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Zusammenfassung: | Understanding crowd behaviors in a large social event is crucial for event
management. Passive WiFi sensing, by collecting WiFi probe requests sent from
mobile devices, provides a better way to monitor crowds compared with people
counters and cameras in terms of free interference, larger coverage, lower
cost, and more information on people's movement. In existing studies, however,
not enough attention has been paid to the thorough analysis and mining of
collected data. Especially, the power of machine learning has not been fully
exploited. In this paper, therefore, we propose a comprehensive data analysis
framework to fully analyze the collected probe requests to extract three types
of patterns related to crowd behaviors in a large social event, with the help
of statistics, visualization, and unsupervised machine learning. First,
trajectories of the mobile devices are extracted from probe requests and
analyzed to reveal the spatial patterns of the crowds' movement. Hierarchical
agglomerative clustering is adopted to find the interconnections between
different locations. Next, k-means and k-shape clustering algorithms are
applied to extract temporal visiting patterns of the crowds by days and
locations, respectively. Finally, by combining with time, trajectories are
transformed into spatiotemporal patterns, which reveal how trajectory duration
changes over the length and how the overall trends of crowd movement change
over time. The proposed data analysis framework is fully demonstrated using
real-world data collected in a large social event. Results show that one can
extract comprehensive patterns from data collected by a network of passive WiFi
sensors. |
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DOI: | 10.48550/arxiv.2002.04401 |