论文标题

使用生理措施有条件自动驾驶的实时信任预测

Real-time Trust Prediction in Conditionally Automated Driving Using Physiological Measures

论文作者

Ayoub, Jackie, Avetisian, Lilit, Yang, X. Jessie, Zhou, Feng

论文摘要

信任校准在驾驶员与自动车辆(AVS)之间相互作用期间提出了一个主要挑战。为了校准信任,实时衡量驾驶员的信任很重要。一种可能的方法是使用机器学习模型和生理测量方法对其动态变化进行建模。在本文中,我们提出了一种基于机器学习模型的技术,以实时使用生理测量来预测驱动因素对条件AV的动态信任。我们在一个驾驶模拟器中进行了研究,要求参与者在三个条件下自动驾驶的控制,包括控制条件,错误警报条件,在不同情况下具有八个接管请求(TOR)的错过条件。在实验过程中记录了驱动因素的生理措施,包括电流皮肤反应(GSR),心率(HR)指数和眼睛跟踪指标。使用五种机器学习模型,我们发现极端梯度提升(XGBOOST)表现最好,并且能够以89.1%的F1分数实时预测驾驶员的信任。我们的发现为如何设计车辆信任监控系统提供了良好的影响,以校准驾驶员的信任,以实时促进驾驶员与AV之间的互动。

Trust calibration presents a main challenge during the interaction between drivers and automated vehicles (AVs). In order to calibrate trust, it is important to measure drivers' trust in real time. One possible method is through modeling its dynamic changes using machine learning models and physiological measures. In this paper, we proposed a technique based on machine learning models to predict drivers' dynamic trust in conditional AVs using physiological measurements in real time. We conducted the study in a driving simulator where participants were requested to take over control from automated driving in three conditions that included a control condition, a false alarm condition, a miss condition with eight takeover requests (TORs) in different scenarios. Drivers' physiological measures were recorded during the experiment, including galvanic skin response (GSR), heart rate (HR) indices, and eye-tracking metrics. Using five machine learning models, we found that eXtreme Gradient Boosting (XGBoost) performed the best and was able to predict drivers' trust in real time with an f1-score of 89.1%. Our findings provide good implications on how to design an in-vehicle trust monitoring system to calibrate drivers' trust to facilitate interaction between the driver and the AV in real time.

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