Paper Title :A Novel Approach to Detect Driver Drowsiness Using Deep CNN
Author :Ruchitha Panyam, Mandhadapu Samsritha Chowdary, N.Sreeven Reddy, Sree Jagadeesh Malla
Article Citation :Ruchitha Panyam ,Mandhadapu Samsritha Chowdary ,N.Sreeven Reddy ,Sree Jagadeesh Malla ,
(2023 ) " A Novel Approach to Detect Driver Drowsiness Using Deep CNN " ,
International Journal of Advance Computational Engineering and Networking (IJACEN) ,
pp. 32-37,
Volume-11,Issue-9
Abstract : Road accidents have only been increasing with time, and a significant contributor is negligent driving due to
tiredness. A driver may unintentionally fall asleep, resulting in tragic accidents and a loss of lives. To bring down the count
of such accidents, Driver Drowsiness Detection systems have come into existence to alert drivers when they doze off.
Various Machine Learning and Deep Learning models are used in these systems. After drawing comparative analysis
between various Deep Learning models used in drowsiness detection systems such as CNN, Deep CNN, and LSTM, we
have focused our research on the CNN and Deep CNN models. The trained model considers the eye state and the frequency
of blinking. It also considers the frequency of yawning by the driver in a given period. Depending on the eye state and yawn
state, the model classifies the driver as drowsy or not. Though CNN can detect drowsiness in drivers, the Deep CNN model
overcomes its limitations by providing a more efficient solution with an accuracy of 99.53%.Using the proposed model, we
can enable a hardware system in automobiles to alert drivers if they feel drowsy.
Keywords - CNN, Deep CNN, LSTM, Face Detection, Drowsiness
Type : Research paper
Published : Volume-11,Issue-9
DOIONLINE NO - IJACEN-IRAJ-DOIONLINE-20142
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Copyright: © Institute of Research and Journals
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Published on 2023-12-04 |
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