Research on Eye-state Based Monitoring for Drivers' Dozing

@article{Qingzhang2009ResearchOE,
  title={Research on Eye-state Based Monitoring for Drivers' Dozing},
  author={Chen Qingzhang and Wang Wenfu and Chu Yuqin},
  journal={2009 Third International Symposium on Intelligent Information Technology Application},
  year={2009},
  volume={1},
  pages={373-376}
}
In the paper, an eye-state based doze monitoring method is proposed, which sets improvements in face detection and doze monitoring. Although having been researched intensively in face detection, multi-pose problem still remains to be solved, so a new multi-pose oriented AdaBoost algorithm for face detection is set forth to enhance the detection accuracy. According to the practical application, the paper also proposes a new eye-state recognition algorithm, in which two eye features are… 
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