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通过皮肤电反应和心电图信号分析评估模拟自动驾驶和手动驾驶中的应激。

Stress Evaluation in Simulated Autonomous and Manual Driving through the Analysis of Skin Potential Response and Electrocardiogram Signals.

机构信息

Polytechnic Department of Engineering and Architecture, University of Udine, Via delle Scienze 206, 33100 Udine, Italy.

出版信息

Sensors (Basel). 2020 Apr 28;20(9):2494. doi: 10.3390/s20092494.

Abstract

The evaluation of car drivers' stress condition is gaining interest as research on Autonomous Driving Systems (ADS) progresses. The analysis of the stress response can be used to assess the acceptability of ADS and to compare the driving styles of different autonomous drive algorithms. In this contribution, we present a system based on the analysis of the Electrodermal Activity Skin Potential Response (SPR) signal, aimed to reveal the driver's stress induced by different driving situations. We reduce motion artifacts by processing two SPR signals, recorded from the hands of the subjects, and outputting a single clean SPR signal. Statistical features of signal blocks are sent to a Supervised Learning Algorithm, which classifies between stress and normal driving (non-stress) conditions. We present the results obtained from an experiment using a professional driving simulator, where a group of people is asked to undergo manual and autonomous driving on a highway, facing some unexpected events meant to generate stress. The results of our experiment show that the subjects generally appear more stressed during manual driving, indicating that the autonomous drive can possibly be well received by the public. During autonomous driving, however, significant peaks of the SPR signal are evident during unexpected events. By examining the electrocardiogram signal, the average heart rate is generally higher in the manual case compared to the autonomous case. This further supports our previous findings, even if it may be due, in part, to the physical activity involved in manual driving.

摘要

随着自动驾驶系统 (ADS) 的研究不断深入,驾驶员压力状况的评估越来越受到关注。压力反应的分析可用于评估 ADS 的可接受性,并比较不同自主驾驶算法的驾驶风格。在本研究中,我们提出了一种基于皮肤电反应(SPR)信号分析的系统,旨在揭示不同驾驶情况下驾驶员的压力。我们通过处理来自受试者手部的两个 SPR 信号来减少运动伪影,并输出单个干净的 SPR 信号。信号块的统计特征被发送到监督学习算法,该算法对压力和正常驾驶(非压力)条件进行分类。我们展示了在使用专业驾驶模拟器进行的实验中获得的结果,其中一组人被要求在高速公路上进行手动和自动驾驶,并面对一些意外事件以产生压力。我们的实验结果表明,在手动驾驶时,受试者通常显得压力更大,这表明公众可能会很好地接受自动驾驶。然而,在自动驾驶过程中,在意外事件期间,SPR 信号的显著峰值很明显。通过检查心电图信号,手动驾驶时的平均心率普遍高于自动驾驶时的平均心率。这进一步支持了我们之前的发现,即使这可能部分归因于手动驾驶所涉及的身体活动。

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