Privacy Policy Inference of User-Uploaded Images On Content Sharing Sites

E.Yasoda Rani, M.Subba Reddy


With the expanding volume of images clients share through social destinations, keeping up privacy has turned into a noteworthy issue, as shown by an ongoing influx of exposed occurrences where clients incidentally shared individual information. In light of these episodes, the need of instruments to enable clients to control access to their common substance is evident. Toward tending to this need, we propose an Adaptive Privacy Policy Prediction (A3P) framework to enable clients to form privacy settings for their images. We look at the job of social setting, picture substance, and metadata as conceivable pointers of clients' privacy inclinations. We propose a two-level structure which as indicated by the client's accessible history on the site, decides the best accessible privacy policy for the client's images being transferred.

Full Text:



  • There are currently no refbacks.

Copyright (c) 2018 Edupedia Publications Pvt Ltd

Creative Commons License
This work is licensed under a Creative Commons Attribution-NonCommercial-ShareAlike 4.0 International License.


EduPedia Publications Pvt Ltd, D-351, Prem Nagar-2, Suleman Nagar, Kirari, Nagloi, New Delhi PIN-Code 110086, India Through Phone Call us now: +919958037887 or +919557022047

All published Articles are Open Access at

Paper submission: or


Mobile:                  +919557022047 & +919958037887


Journals Maintained and Hosted by

EduPedia Publications (P) Ltd in Association with Other Institutional Partners

Pen2Print and IJR are registered trademark of the Edupedia Publications Pvt Ltd.