Drowsiness detection using Raspberry Pi for EVs and smart cars

Wichian Ooppakaew, J. Onshaunjit, Jakkree Srinonchat
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Abstract

Drowsiness detection is highly significant in assuring the safety and effectiveness of intelligent automobiles and electric vehicles (EVs). It used to be that managing driver fatigue was only a question of comfort for contemporary transportation systems. However, with the rapid improvements that have been made in automotive technology and the growing prevalence of autonomous features, this need has developed into a fundamental requirement. Sleepiness detection systems perform the role of watchful co-pilots by continually monitoring the driver's behavior and sounding alerts or taking other appropriate actions when indicators of tiredness are identified. They are an effective strategy to limit the dangerous practice of sleepy driving, which is responsible for many motor vehicle accidents. These accidents are caused by a combination of factors, including fatigue, distraction, and inattention. In the current investigation, a Raspberry Pi is a real-time monitoring system to determine drowsiness. The dataset had one thousand unique images, each depicting a different feature of a real-world driving event. These images have been organized into the following four categories: open eyes (250 images), closed eyes (250 images), open mouth (250 images), and closed mouth (250 images). During this investigation, the experimental circumstances were looked at during daylight and the evening hours. For the system to function correctly, it relies on the Eye Aspect Ratio (EAR) algorithm and the facial landmarks method. The recommended strategy showed a higher degree of accuracy when put into practice. However, the study found that false negative blinks were noticed due to noise that could not be repaired within the collected signal. In the future, we want to concentrate our research efforts on determining whether or not the recommended technique is effective in a broader variety of contexts.
使用 Raspberry Pi 为电动汽车和智能汽车提供昏昏欲睡检测功能
瞌睡检测对于确保智能汽车和电动汽车(EV)的安全性和有效性意义重大。过去,管理驾驶员疲劳只是当代交通系统的一个舒适性问题。然而,随着汽车技术的飞速进步和自动驾驶功能的日益普及,这一需求已发展成为一项基本要求。嗜睡检测系统通过持续监控驾驶员的行为,并在发现疲劳迹象时发出警报或采取其他适当措施,从而扮演了警戒副驾驶员的角色。这些系统是限制疲劳驾驶危险行为的有效策略,疲劳驾驶是许多机动车事故的罪魁祸首。这些事故是由疲劳、分心和注意力不集中等多种因素造成的。在目前的调查中,Raspberry Pi 是一个实时监控系统,用于判断瞌睡情况。数据集有一千幅独特的图像,每幅图像都描绘了真实世界驾驶事件的不同特征。这些图像被分为以下四类:睁眼(250 张图像)、闭眼(250 张图像)、张嘴(250 张图像)和闭嘴(250 张图像)。在这次调查中,实验环境分别在白天和晚上进行。该系统的正常运行依赖于眼部高宽比(EAR)算法和面部地标法。在实际应用中,推荐的策略显示出更高的准确性。不过,研究发现,由于采集信号中存在无法修复的噪声,因此会出现假性眨眼现象。今后,我们希望集中研究力量,确定所推荐的技术在更广泛的情况下是否有效。
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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