Video-based Bottleneck Detection utilizing Lagrangian Dynamics in Crowded Scenes

21 Aug 2019Maik SimonMarkus KüchholdTobias SenstErik BochinskiThomas Sikora

Avoiding bottleneck situations in crowds is critical for the safety and comfort of people at large events or in public transportation. Based on the work of Lagrangian motion analysis we propose a novel video-based bottleneckdetector by identifying characteristic stowage patterns in crowd-movements captured by optical flow fields... (read more)

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