Facial Recognition using Modified Local Binary Pattern and Random Forest

@article{OConnor2013FacialRU,
  title={Facial Recognition using Modified Local Binary Pattern and Random Forest},
  author={Brian O'Connor and Kaushik Roy},
  journal={International Journal of Artificial Intelligence \& Applications},
  year={2013},
  volume={4},
  pages={25-33}
}
  • Brian O'Connor, K. Roy
  • Published 2013
  • Computer Science
  • International Journal of Artificial Intelligence & Applications
This paper presents an efficient algorithm for face recognition using the local binary pattern (LBP) and random forest (RF). The novelty of this research effort is that a modified local binary pattern (MLBP), which combines both the sign and magnitude features for the improvement of facial texture classification performance, is applied. Furthermore, RF is used to select the most important features from the extracted feature sequence. The performance of the proposed scheme is validated using a… Expand
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