Labeled dataset for integral evaluation of moving object detection algorithms: LASIESTA

@article{Cuevas2016LabeledDF,
  title={Labeled dataset for integral evaluation of moving object detection algorithms: LASIESTA},
  author={Carlos Cuevas and Eva Mar{\'i}a Y{\'a}{\~n}ez and Narciso Garc{\'i}a},
  journal={Comput. Vis. Image Underst.},
  year={2016},
  volume={152},
  pages={103-117}
}
Complete database for assessing the quality of foreground detection strategies.Indoor and outdoor sequences with many categories addressing different challenges.All the sequences are fully annotated at both pixel and object levels.Information concerning stationary foreground objects.Sequences recorded with static and moving cameras. Display Omitted A public, complete, compact, and well structured database is proposed, which allows to test moving object detection strategies. The database is… CONTINUE READING

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