A Bayesian Approach on People Localization in Multicamera Systems

@article{Utasi2013ABA,
  title={A Bayesian Approach on People Localization in Multicamera Systems},
  author={{\'A}kos Utasi and Csaba Benedek},
  journal={IEEE Transactions on Circuits and Systems for Video Technology},
  year={2013},
  volume={23},
  pages={105-115}
}
In this paper, we introduce a Bayesian approach on multiple people localization in multicamera systems. First, pixel-level features are extracted, which are based on physical properties of the 2-D image formation process, and provide information about the head and leg positions of the pedestrians, distinguishing standing and walking people, respectively. Then, features from the multiple camera views are fused to create evidence for the location and height of people in the ground plane. This… CONTINUE READING
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