Notice
5.8. Other approaches: Social Forces
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Descriptif
In this video we will reviewone of the alternatives we are proposing to the use of HiddenMarkov models and typical trajectories: the Social Force model.
Thème
Documentation
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iPython notebooks
Access or download the iPython notebooks used in the videos. To execute the notebooks on your computer
Avec les mêmes intervenants et intervenantes
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5.9. Other approaches: Planning-based approaches
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5.1. Introduction
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Vasquez GoveaAlejandro DizanIn this video, we are going to start working towards building a motion model.
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