Automatic Privacy Prediction to Accelerate Social Image Sharing

@article{Kuang2017AutomaticPP,
  title={Automatic Privacy Prediction to Accelerate Social Image Sharing},
  author={Zhenzhong Kuang and Zongmin Li and Dan Lin and Jianping Fan},
  journal={2017 IEEE Third International Conference on Multimedia Big Data (BigMM)},
  year={2017},
  pages={197-200}
}
The manual process for privacy setting could be very time-consuming and challenging for common users. By assuming that there are hidden correlations between the visual properties of images (i.e., visual features) or object classes and the privacy settings for image sharing, an effective algorithm is developed in this paper to achieve automatic prediction of image privacy, so that the best-matching privacy setting can be recommended automatically for each single image being shared. Our algorithm… CONTINUE READING

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