Başak, Ahmet ErenGüdükbay, UğurDurupınar, F.2019-02-212019-02-2120180097-8493http://hdl.handle.net/11693/49843We propose a data-driven approach for tuning, validating and optimizing crowd simulations by learning parameters from real-life videos. We discuss the common traits of incidents and their video footages suitable for the learning step. We then demonstrate the learning process in three real-life incidents: a bombing attack, a panic situation on the subway and a Black Friday rush. We reanimate the incidents using an existing emotion contagion and crowd simulation framework and optimize the parameters that characterize agent behavior with respect to the data extracted from the video footages of the incidents.EnglishCrowd simulationData-driven optimizationEmotion contagionParameter learningUsing real life incidents for creating realistic virtual crowds with data-driven emotion contagionArticle10.1016/j.cag.2018.02.004