弱光条件下疲劳驾驶检测系统

Ahmed Ibnouf, Ayman Fadlallah, Muaiz Ali, A. Zidouri
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引用次数: 0

摘要

近年来,车祸的数量一直在逐渐增加。这一增长的一个主要因素是司机的困倦。图像识别中对困倦检测的研究较多,但往往忽视了弱光条件下的困倦检测。本文的重点是在弱光条件下检测昏昏欲睡的驾驶员。提出了一种基于行为的疲劳驾驶检测系统。本文提出的DDDS采用一种改善光照的预处理算法,然后重点检测驾驶员的面部和眼睛,计算眨眼时间。人脸识别采用深度神经网络模型,眼睛检测采用Haar级联分类器。每只眼睛都是基于卷积神经网络(CNN)模型来预测其状态是“打开”还是“关闭”。提出的CNN使用1452个样本的数据集开发,在测试数据集上的准确率为97.92%,占1452个样本的15%。在光线不足的情况下,实施了不同的案例来评估拟议的DDDS。即使在恶劣和恶劣的光线条件下,该系统也能够识别驾驶员的状态。
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Drowsy Driver Detection System For Poor Light Conditions
In recent years, the number of car accidents has been gradually increasing. A major factor in this increase is the drowsiness of drivers. There are many image recognition research studies on drowsiness detection but tend to neglect the case of low-light conditions. This paper focuses on detecting drowsy drivers in low-light conditions. In this paper, a behavioralbased drowsy driver detection system (DDDS) was proposed. The proposed DDDS applies a preprocessing algorithm that improves illumination and then focuses on detecting the driver’s face and eyes to calculate eye blink duration. A deep neural network model was used for facial recognition, and Haar Cascade classifiers were used for eyes detection. Every single eye was based to a Convolutional Neural Network (CNN) model to predict its state as either ‘‘Open’’ or ‘‘Closed’’. The proposed CNN was developed using a dataset of 1452 samples and gave an accuracy of 97.92% on the testing dataset, 15% of the 1452 samples. Different case scenarios in poor light conditions were implemented to evaluate the proposed DDDS. The system was able to identify the state of the driver even in harsh and severe poor light conditions.
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