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Eye state detection for use in advanced driver assistance systems

机译:眼睛状态检测,用于高级驾驶员辅助系统

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Most automobiles lack reliable smart systems that can constantly track the driver's behaviour and raise alarms as required. Extant systems are either too slow or not robust enough to cope with different types of drivers and conditions. In this paper, a robust system to continuously track the driver's eye and detect its state (open/close) is proposed. Frames from a live camera feed are constantly processed. Viola Jones algorithm, using Haar filters extracts the eye. The extraction is efficient with and without spectacles (translucent) and the system can even estimate the Region of Interest (RoI) where it is most likely to find the eye in the event that no eyes are explicitly detected. A trained CNN model using the LeNet architecture classifies the extracted eyes. The rate at which predictions are made is also higher than existing systems. The system raises an alarm if, after analysing the data points, it detects any anomalies.
机译:大多数汽车缺乏可靠的智能系统,这些系统无法持续跟踪驾驶员的行为并根据需要发出警报。现有的系统太慢或不够健壮,无法应付不同类型的驱动程序和条件。在本文中,提出了一种鲁棒的系统来连续跟踪驾驶员的眼睛并检测其状态(打开/关闭)。来自实时摄像机供稿的帧会不断进行处理。 Viola Jones算法,使用Haar滤镜提取眼睛。无论有没有眼镜(半透明),提取过程都是有效的,并且该系统甚至可以在未明确检测到眼睛的情况下估计最有可能找到眼睛的感兴趣区域(RoI)。使用LeNet架构的经过训练的CNN模型对提取的眼睛进行分类。做出预测的速度也高于现有系统。如果在分析数据点后发现任何异常,系统将发出警报。

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