利用具有多种行为特征的卷积神经网络实时检测驾驶员瞌睡和分心情况

Jaira -Salayon- Hernandez, Fernando -Teston- Pardales Jr, Neña Mae -Sumaylo- Lendio, Ian Exequiel -Sibayan- Manalili, Eufemia -Acol- Garcia, Antonio -Calumba- Tee Jr.
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引用次数: 0

摘要

驾驶员瞌睡和分心导致的交通事故对全世界的道路安全构成了重大威胁,菲律宾的伤亡率令人震惊。由于伤亡人数众多,迫切需要采取积极主动的措施。认识到人为因素是造成事故的主要原因,本研究旨在开发一种实时驾驶员瞌睡和分心检测系统,以降低风险。该系统使用非侵入式摄像头传感器和卷积神经网络(CNN),监测驾驶员的行为,包括面部表情、眼球运动和车道位置,以检测瞌睡和分心的迹象。本研究细致地概述了系统程序,采用定量开发研究方法来设计和评估系统的有效性。对参与长时间驾驶的人员进行了实际道路测试,确保了数据收集的真实性。研究结果表明,该系统在嗜睡和分心检测方面表现出色,准确率高,并能在检测到潜在风险时触发有效的警报系统。CNN 技术的集成凸显了该系统显著提高道路安全的潜力,为驾驶员、汽车制造商和道路安全机构带来了立竿见影的好处。这项研究为未来主动驾驶安全技术的发展奠定了基础,强调了解决驾驶员在道路上昏昏欲睡和分心问题的极端重要性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Real-time driver drowsiness and distraction detection using convolutional neural network with multiple behavioral features
Road accidents caused by driver drowsiness and distraction represent significant threats to worldwide road safety, with fatalities and injuries at alarming rates in the Philippines. With a significant number of casualties, the need for proactive measures is urgent. Recognizing the human factor as the primary cause of accidents, this study aimed to develop a real-time driver drowsiness and distraction detection system to mitigate risks. Using non-intrusive camera sensors and convolutional neural networks (CNN), the system monitors the driver’s behavior, including facial expressions, eye movements, and lane position, to detect signs of drowsiness and distraction. This study meticulously outlines the systematic procedures, employing a quantitative developmental research approach to design and assess the effectiveness of the system. Real-world on-road testing with participants engaged in long-duration driving ensures the authenticity of data collection. The findings highlight the system's promising performance in drowsiness and distraction detection, with high accuracy rates and an effective alert system triggered upon detection of potential risks. The integration of CNN technology underscores the system's potential to significantly enhance road safety, offering immediate benefits for drivers, vehicle manufacturers, and road safety authorities. This research sets a foundation for future advancements in proactive driver safety technologies, emphasizing the critical importance of addressing driver drowsiness and distraction on the roads.
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