Driver Drowsiness Detection and Alert System Using Computer Vision

Author(s):  
K. Vinutha ◽  
N. Ashwini ◽  
Amrit Raj ◽  
Jayam Sukruth ◽  
M. Praneeth ◽  
...  
2021 ◽  
Vol 11 (2) ◽  
pp. 240
Author(s):  
Samy Bakheet ◽  
Ayoub Al-Hamadi

Due to their high distinctiveness, robustness to illumination and simple computation, Histogram of Oriented Gradient (HOG) features have attracted much attention and achieved remarkable success in many computer vision tasks. In this paper, an innovative framework for driver drowsiness detection is proposed, where an adaptive descriptor that possesses the virtue of distinctiveness, robustness and compactness is formed from an improved version of HOG features based on binarized histograms of shifted orientations. The final HOG descriptor generated from binarized HOG features is fed to the trained Naïve Bayes (NB) classifier to make the final driver drowsiness determination. Experimental results on the publicly available NTHU-DDD dataset verify that the proposed framework has the potential to be a strong contender for several state-of-the-art baselines, by achieving a competitive detection accuracy of 85.62%, without loss of efficiency or stability.


Drowsiness is major cause of accidents. So, this drowsiness detection system alerts the drowsy drivers in order to reduce the risk of potential accidents. The proposed system uses computer vision and image processing technology of MATLAB for detecting the drowsiness. MATLAB detects if eyes are closed or open using various image processing techniques performed using Viola-Jones face features detecting algorithm and skin y,cb,cr values detection function ,converting image into a binary image which was further employed to extract eye characteristics, and its closing frequency, determining drowsiness.


2021 ◽  
Author(s):  
BRINDHA HARINI R ◽  
YAMINI R

Abstract Driver Drowsiness is the one of the reasons for increase in accident rates. Various facial recognition methods have been proposed to detect and alert the driver in-order to avoid accidents. Hence, this system is proposed to reduce the number of accidents due to drivers fatigue and hence increase the transportation safety. This system deals with automatic driver drowsiness detection based on visual information captured by the system.The driver is lively captured after which the images are further processed, and the fatigue is checked for. It creates an alarm for the driver immediately in case of fatigue detection, also an implementation to alert the vehicles owner and others concerned about the safety are alerted as well. The system enhances the safety measures by which accidents due to drivers drowsiness can be minimized.


Information ◽  
2020 ◽  
Vol 12 (1) ◽  
pp. 3
Author(s):  
Shuang Chen ◽  
Zengcai Wang ◽  
Wenxin Chen

The effective detection of driver drowsiness is an important measure to prevent traffic accidents. Most existing drowsiness detection methods only use a single facial feature to identify fatigue status, ignoring the complex correlation between fatigue features and the time information of fatigue features, and this reduces the recognition accuracy. To solve these problems, we propose a driver sleepiness estimation model based on factorized bilinear feature fusion and a long- short-term recurrent convolutional network to detect driver drowsiness efficiently and accurately. The proposed framework includes three models: fatigue feature extraction, fatigue feature fusion, and driver drowsiness detection. First, we used a convolutional neural network (CNN) to effectively extract the deep representation of eye and mouth-related fatigue features from the face area detected in each video frame. Then, based on the factorized bilinear feature fusion model, we performed a nonlinear fusion of the deep feature representations of the eyes and mouth. Finally, we input a series of fused frame-level features into a long-short-term memory (LSTM) unit to obtain the time information of the features and used the softmax classifier to detect sleepiness. The proposed framework was evaluated with the National Tsing Hua University drowsy driver detection (NTHU-DDD) video dataset. The experimental results showed that this method had better stability and robustness compared with other methods.


2018 ◽  
Vol 12 (2) ◽  
pp. 127-133 ◽  
Author(s):  
Lei Zhao ◽  
Zengcai Wang ◽  
Xiaojin Wang ◽  
Qing Liu

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