Toward Image Privacy Classification and Spatial Attribution of Private Content

@article{Zhong2019TowardIP,
  title={Toward Image Privacy Classification and Spatial Attribution of Private Content},
  author={Haoti Zhong and Hao Li and Anna Cinzia Squicciarini and Sarah Rajtmajer and David J. Miller},
  journal={2019 IEEE International Conference on Big Data (Big Data)},
  year={2019},
  pages={1351-1360}
}
  • Haoti Zhong, Hao Li, +2 authors David J. Miller
  • Published in
    IEEE International Conference…
    2019
  • Computer Science
  • Machine labeling of image content as private or public is a notoriously difficult problem, with the usual image processing challenges compounded by the highly personal, subjective, and contextual nature of access control decision making. In general, a user’s privacy expectation for a given image is consequential to specific contents therein and the presence of sensitive content somewhere in the image is sufficient to warrant a private label. In this work, we extend the problem of determining a… CONTINUE READING

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