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Fan et al., 2008 - Google Patents

Nonintrusive driver fatigue detection

Fan et al., 2008

Document ID
3649890548590390147
Author
Fan X
Yin B
Sun Y
Publication year
Publication venue
2008 IEEE International Conference on Networking, Sensing and Control

External Links

Snippet

Driver fatigue is an important factor in many transportation accidents. Therefore, detecting driver fatigue is extremely important to improving transportation safety. When a driver fatigues, he will take many special visual cues on his face. In this paper, we combine visual …
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