Corpus ID: 2008204

Notes on image annotation

@article{Barriuso2012NotesOI,
  title={Notes on image annotation},
  author={Adela Barriuso and Antonio Torralba},
  journal={ArXiv},
  year={2012},
  volume={abs/1210.3448}
}
  • Adela Barriuso, Antonio Torralba
  • Published 2012
  • Computer Science
  • ArXiv
  • We are under the illusion that seeing is effortless, but frequently the visual system is lazy and makes us believe that we understand something when in fact we don't. Labeling a picture forces us to become aware of the difficulties underlying scene understanding. Suddenly, the act of seeing is not effortless anymore. We have to make an effort in order to understand parts of the picture that we neglected at first glance. In this report, an expert image annotator relates her experience on… CONTINUE READING

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