• Corpus ID: 6415198

CS 229 Project Report : Automated photo tagging in Facebook

@inproceedings{Schuon2007CS2P,
  title={CS 229 Project Report : Automated photo tagging in Facebook},
  author={Sebastian Schuon and Harry Robertson and Hao Zou schuon and Harry Robertson},
  year={2007}
}
We examine the problem of automatically identifying and tagging users in photos on a social networking environment known as Facebook. The presented automatic facial tagging system is split into three subsystems: obtaining image data from Facebook, detecting faces in the images and recognizing the faces to match faces to individuals. Firstly, image data is extracted from Facebook by interfacing with the Facebook API. Secondly, the Viola-Jones’ algorithm is used for locating and detecting faces… 

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