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dWatch: A Reliable and Low-Power Drowsiness Detection System for Drivers Based on Mobile Devices

机译:DWATCH:基于移动设备的驱动程序可靠和低功耗的嗜好检测系统

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摘要

Drowsiness detection is critical to driver safety, considering thousands of deaths caused by drowsy driving annually. Professional equipment is capable of providing high detection accuracy, but the high cost limits their applications in practice. The use of mobile devices such as smart watches and smart phones holds the promise of providing a more convenient, practical, non-invasive method for drowsiness detection. In this article, we propose a real-time driver drowsiness detection system based on mobile devices, referred to as dWatch, which combines physiological measurements with motion states of a driver to achieve high detection accuracy and low power consumption. Specifically, based on heart rate measurements, we design different methods for calculating heart rate variability (HRV) and sensing yawn actions, respectively, which are combined with steering wheel motion features extracted from motion sensors for drowsiness detection. We also design a driving posture detection algorithm to control the operation of the heart rate sensor to reduce system power consumption. Extensive experimental results show that the proposed system achieves a detection accuracy up to 97.1% and reduces energy consumption by 33%.
机译:令人沮丧的检测对于驾驶员安全至关重要,考虑到每年令人昏昏欲睡造成的成千上万的死亡。专业设备能够提供高检测精度,但高成本在实践中限制了它们的应用。使用智能手表和智能手机等移动设备具有提供更方便,实用,非侵入性方法的承诺,用于嗜睡检测。在本文中,我们提出了一种基于移动设备的实时驱动器嗜睡检测系统,称为DWATCT,其将生理测量与驾驶员的运动状态相结合以实现高检测精度和低功耗。具体地,基于心率测量,我们设计用于计算心率变异性(HRV)和感测哈欠动作的不同方法,这些方法与从运动传感器提取的转向轮运动特征组合,以便嗜睡检测。我们还设计了一种驾驶姿势检测算法来控制心率传感器的操作,以降低系统功耗。广泛的实验结果表明,该系统的检测精度可达97.1%,并降低了能源消耗量为33%。

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