Real Time Face Recognition Using Polynomial Regression and Sub-region Color Component Distribution

@inproceedings{Mondal2010RealTF,
  title={Real Time Face Recognition Using Polynomial Regression and Sub-region Color Component Distribution},
  author={Manishankar Mondal and M. A. Hossain and Md. M. Rahman and Kamrul Hasan Talukder},
  year={2010}
}
An efficient architecture for real time face recognition is presented here using Polynomial Regression for feature edge detection and by determining color-component distribution for feature-regions. Here we determine second order polynomial equation by polynomial regression for the edges of eyelid and chin. Chin does not change in different expressions, the change of eyelid is also rare and these show clear edges in the picture. For determining polynomial equations the coordinate system is very… CONTINUE READING

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