Corpus ID: 32287680

Implementation of Real Time Driver Drowsiness Detection System

@inproceedings{Bharambe2015ImplementationOR,
  title={Implementation of Real Time Driver Drowsiness Detection System},
  author={Snehal S. Bharambe and Pranjal Mahajan},
  year={2015}
}
Today, number of accidents happen during drowsy driving on roads and are increasing day by day. It is a known fact that many accidents occur due to driver’s fatigue and sometimes due to inattention factor. This research mainly engages on maximizing the effort in identifying the drowsiness state of driver in real driving conditions. The goal of driver drowsiness detection systems is an attempt to contribute in reducing these road accidents. The secondary data collected focuses on past research… Expand

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