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Issue No.05 - Sept.-Oct. (2013 vol.28)
pp: 56-60
Giuseppe Vizzari , University of Milano-Bicocca
Stefania Bandini , University of Milano-Bicocca
ABSTRACT
Here, a recent research trend is presented that integrates modeling, simulation, and visual analysis approaches for improving the study of pedestrians and crowd dynamics.
INDEX TERMS
artificial transportation systems, modeling, simulation, visual analytics, crowd movement, crowd flow, crowd dynamics, intelligent transportation systems,
CITATION
Giuseppe Vizzari, Stefania Bandini, "Studying Pedestrian and Crowd Dynamics through Integrated Analysis and Synthesis", IEEE Intelligent Systems, vol.28, no. 5, pp. 56-60, Sept.-Oct. 2013, doi:10.1109/MIS.2013.135
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