Naturalistic driving data (NDD) can help understand drivers' reactions to each driving scenario and provide personalized context to driving behavior. However, NDD requires a high amount of manual labor to label certain driver's state and behavioral patterns. Unsupervised analysis of NDD can be used to automatically detect different patterns from the driver and vehicle data. In this paper, we propose a methodology to understand changes in driver's physiological responses within different driving patterns. Our methodology first decomposes a driving scenario by using a Bayesian Change Point detection model. We then apply the Latent Dirichlet Allocation method on both driver state and behavior data to detect patterns. We present two case studies in which vehicles were equipped to collect exterior, interior, and driver behavioral data. Four patterns of driving behaviors (i.e., harsh brake, normal brake, curved driving, and highway driving), as well as two patterns of driver's heart rate (HR) (i.e., normal vs. abnormal high HR), and gaze entropy (i.e., low versus high), were detected in these two case studies. The findings of these case studies indicated that among our participants, the drivers' HR had a higher fraction of abnormal patterns during harsh brakes, accelerating and curved driving. Additionally, free-flow driving with close to zero accelerations on the highway was accompanied by more fraction of normal HR as well as a lower gaze entropy pattern. With the proposed methodology we can better understand variations in driver's psychophysiological states within different driving scenarios. The findings of this work, has the potential to guide future autonomous vehicles to take actions that are fit to each specific driver.
翻译:自然驾驶数据(NDD)可以帮助理解司机对每种驾驶场景的反应,并为驾驶行为提供个性化背景。然而,自然驾驶数据(NDD)需要大量人工劳动来标注某些驾驶员的状态和行为模式。对自然驾驶数据(NDD)的未经监督的分析可以用来自动检测与驾驶员和车辆数据不同的模式。在本文中,我们提出一种方法来理解驾驶员生理反应在不同驾驶模式中的变化。我们的方法首先使用Bayesian Change Point 检测模型来分解驾驶方案。我们然后在驾驶员的状态和行为数据中应用迟缓的Drichlet分配方法来检测模式。我们提出了两种案例研究中,对车辆的外观、内观和司机行为模式进行了大量的手工劳动。四种驾驶行为模式(即刹车、正常刹车、弯式驾驶员和高速驾驶员)以及两种驾驶员心率模式(HR) (i) (i) (i. 正常与异常高的HR) 和视觉变异性(即低与高性) 。在这两项案例研究中都检测到了更接近的驾驶员的驱动动过程。