Automated Individual Pig Localisation, Tracking and Behaviour Metric Extraction Using Deep Learning

@article{Cowton2019AutomatedIP,
  title={Automated Individual Pig Localisation, Tracking and Behaviour Metric Extraction Using Deep Learning},
  author={Jake Cowton and Ilias Kyriazakis and Jaume Bacardit},
  journal={IEEE Access},
  year={2019},
  volume={7},
  pages={108049-108060}
}
Individual pig tracking is key to stepping away from group-level treatment and towards individual pig care. By doing so we can monitor individual pig behaviour changes over time and use these as indicators of health and well-being, which, in turn, will assist in the early detection of disease allowing for earlier and more effective intervention. However, it is a much more computationally challenging than performing this task at group level; mistakes in identification and tracking accumulate and… CONTINUE READING

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