基于人脸特征人天线效应的驾驶员困倦检测验证

Mohamed M. El-Barbary, George S. Maximous, Shehab Tarek, H. A. Bastawrous
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引用次数: 3

摘要

随着汽车、火车、摩托车、飞机和其他交通工具的不断使用,人们需要研究汽车安全,以避免因鲁莽、困倦或昏昏欲睡的司机造成的事故。通过利用当前的技术进步,可以快速改进和创造新的安全措施和功能。本研究提出了一种基于人天线触摸传感器的驾驶员困倦检测系统,该系统简单、经济、准确,并且有很大的改进空间。通过面部地标检测和眼睛宽高比计算,收集从处理捕获驾驶员面部特征的图像中获得的同步数据,进一步验证了所述的使用。得出的结果是基于驾驶员困倦与方向盘握握模式和闭眼这两种现象之间的强烈相关性。叠加的数据显示了驾驶员在人类天线效应和眼睛宽高比(EAR)计算方面可能出现的不同状态。这些结果也显示了对人体天线触摸传感器进行更多研究和改进的潜力。
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Validation of Driver Drowsiness Detection Based on Humantenna Effect Using Facial Features
Along with the continued use of vehicles such as cars, trains, motorbikes, planes and other transportation methods came the need to research automotive safety to avoid accidents that may be caused by reckless, sleepy or drowsy drivers. By utilizing current technological advancements, it could be possible to rapidly improve and create new safety measures and features in these vehicles. This research presents validated results for a proposed driver drowsiness detection system based on the humantenna touch sensor that is simple, cost efficient, accurate and has a lot of room for improvement. The use of this said is further validated by collecting simultaneous data obtained from processing the images capturing the facial features of the driver through facial landmark detection and eye aspect ratio calculation. The results obtained were based on the strong correlation between driver drowsiness and both phenomena, the steering wheel grip pattern and eye closure. The superposed data showed the different states possible for a driver in terms of humantenna effect and eye aspect ratio (EAR) calculations. These results also showed the potential for more research and improvement of the humantenna touch sensor.
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