Detecting unsafe driving states, such as stress, drowsiness, and fatigue, is an important component of ensuring driving safety and an essential prerequisite for automatic intervention systems in vehicles. These concerning conditions are primarily connected to the driver's low or high arousal levels. In this study, we describe a framework for processing multimodal physiological time-series from wearable sensors during driving and locating points of prominent change in drivers' physiological arousal state. These points of change could potentially indicate events that require just-in-time intervention. We apply time-series segmentation on heart rate and breathing rate measurements and quantify their robustness in capturing change points in electrodermal activity, treated as a reference index for arousal, as well as on self-reported stress ratings, using three public datasets. Our experiments demonstrate that physiological measures are veritable indicators of change points of arousal and perform robustly across an extensive ablation study.
翻译:检测压力、沉睡和疲劳等不安全驾驶状态是确保驾驶安全的重要组成部分,也是车辆自动干预系统的基本先决条件。这些条件主要与驾驶员的低或高刺激水平有关。在本研究中,我们描述一个框架,用于在驾驶期间从可磨损的传感器中处理多式生理时间序列,并查找驾驶员生理状态显著变化的点。这些变化点可能表明需要及时干预的事件。我们对心率和呼吸速率测量进行时间序列分解,并用数量表示其在捕捉电极活动变化点方面的稳健性,作为振动和自我报告的压力评级的参考指数,使用三个公共数据集。我们的实验表明,生理计量是振动点的可靠指标,在广泛的反热研究中进行强有力的演练。