Abstract

Large Scale Pedestrian Tracking

We present a novel, realtime algorithm to compute the trajectory of each pedestrian in moderately dense crowd scenes. Our formulation is based on an adaptive particle filtering scheme that uses a multi-agent motion model based on velocity-obstacles, and takes into account local interactions as well as physical and personal constraints of each pedestrian. Our method dynamically changes the number of particles allocated to each pedestrian based on different confidence metrics. Additionally, we use a new high-definition crowd video dataset, which is used to evaluate the performance of different pedestrian tracking algorithms. This dataset consists of videos of indoor and outdoor scenes, recorded at different locations with 30-80 pedestrians. We highlight the performance benefits of our algorithm over prior techniques using this dataset. In practice, our algorithm can compute trajectories of tens of pedestrians on a multi-core desktop CPU at interactive rates (27-30 frames per second). To the best of our knowledge, our approach is 4-5 times faster than prior methods, which provide similar accuracy.

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Publication

  • "Realtime Multilevel Crowd Tracking using Reciprocal Velocity Obstacles" [PDF] - IEEE International Conference on Pattern Recognition 2014 - Aniket Bera, Dinesh Manocha

  • Dataset

    High resolution crowd/pedestrian video datasets mostly recorded at 720p or 1080p
    NPLACE-3
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    IITF-5
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    NDLS-1
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    NPLACE-1
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    NDLS-2
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    NPLACE-3
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    IITF-4
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    IITF-2
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    IITF-3
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    IITF-1
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    Acknowledgements

  • We would like to thank M.V. Priyank and Swati Pokhariyal for helping us with the video datasets.
  • This project was funded by Intel, The Boeing Company and National Science Foundation




    Related Links/Contact Information

  • If you would like to use the dataset, please contact the authors (Aniket Bera and Dinesh Manocha) at ab@cs.unc.edu
  • To see more work on motion and crowd simulation models in our GAMMA group, visit - http://gamma-web.iacs.umd.edu/research/crowds/