Detecting Driver Sleepiness using Convolutional Neural Networks

Shaik Tousif -, Abdul Saboor -, Syed Saffwan Ahmed -, Sumayya Begum -
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Abstract

The development in computer vision has aided drivers in the form of automatic self-driving cars etc. The accidents are caused by driver's exhaustion and drowsiness about 20%. Its carriages a dangerous issue for which numerous methods were proposed. However, they are not appropriate for real-time implementation. The major encounters confronted by these approaches are forcefulness to handle dissimilarity in human face and lightning conditions. Our intention is to implement a smart operating system that can lower the rate of road accidents considerably. This method enables us to find driver's face features like eye closure percentage, eye-mouth aspect ratios, blink rate, yawning, head movement, etc. In this classification, the driver is uninterruptedly observed by using a webcam. The car driver’s facial features along with the eye movements are observed using a cascade classifier. Eye images are pull out and fed to Custom designed Convolutional Neural Network for categorizing whether both left and right eye are closed. Based on the sorting, the eye closure score is considered. Upon finding that the driver is being detected drowsy that a high alarm will be raised.
使用卷积神经网络检测驾驶员困倦
计算机视觉的发展以自动驾驶汽车等形式帮助驾驶员。大约20%的事故是由司机疲劳和困倦造成的。它的车厢是一个危险的问题,提出了许多方法。然而,它们并不适合实时实现。这些方法面临的主要问题是难以处理人脸和闪电条件的差异。我们的目的是实现一个智能操作系统,可以大大降低交通事故的发生率。这种方法使我们能够找到驾驶员的面部特征,如闭眼百分比,眼口宽高比,眨眼频率,打哈欠,头部运动等。在这种分类中,使用网络摄像头不间断地观察驾驶员。使用级联分类器观察汽车驾驶员的面部特征和眼球运动。提取眼睛图像并将其输入自定义设计的卷积神经网络,用于分类左眼和右眼是否闭合。在此基础上,考虑闭眼评分。一旦发现司机被检测到昏昏欲睡,就会发出高警报。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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