Investigating Differences in Behavior and Brain in Human-Human and Human-Autonomous Vehicle Interactions in Time-Critical Situations

Anirudh Unni, Alexander Trende, Claire Pauley, Lars Weber, Bianca Biebl, Severin Kacianka, A. Lüdtke, K. Bengler, A. Pretschner, M. Fränzle, J. Rieger
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引用次数: 3

Abstract

Some studies provide evidence that humans could actively exploit the alleged technological advantages of autonomous vehicles (AVs). This implies that humans may tend to interact differently with AVs as compared to human driven vehicles (HVs) with the knowledge that AVs are programmed to be risk-averse. Hence, it is important to investigate how humans interact with AVs in complex traffic situations. Here, we investigated whether participants would value interactions with AVs differently compared to HVs, and if these differences can be characterized on the behavioral and brain-level. We presented participants with a cover story while recording whole-head brain activity using fNIRS that they were driving under time pressure through urban traffic in the presence of other HVs and AVs. Moreover, the AVs were programmed defensively to avoid collisions and had faster braking reaction times than HVs. Participants would receive a monetary reward if they managed to finish the driving block within a given time-limit without risky driving maneuvers. During the drive, participants were repeatedly confronted with left-lane turning situations at unsignalized intersections. They had to stop and find a gap to turn in front of an oncoming stream of vehicles consisting of HVs and AVs. While the behavioral results did not show any significant difference between the safety margin used during the turning maneuvers with respect to AVs or HVs, participants tended to be more certain in their decision-making process while turning in front of AVs as reflected by the smaller variance in the gap size acceptance as compared to HVs. Importantly, using a multivariate logistic regression approach, we were able to predict whether the participants decided to turn in front of HVs or AVs from whole-head fNIRS in the decision-making phase for every participant (mean accuracy = 67.2%, SD = 5%). Channel-wise univariate fNIRS analysis revealed increased brain activation differences for turning in front of AVs compared to HVs in brain areas that represent the valuation of actions taken during decision-making. The insights provided here may be useful for the development of control systems to assess interactions in future mixed traffic environments involving AVs and HVs.
在时间关键情况下研究人类和人类自动驾驶车辆交互中行为和大脑的差异
一些研究提供的证据表明,人类可以积极利用自动驾驶汽车(AVs)所谓的技术优势。这意味着,与人类驾驶的汽车(hv)相比,人类与自动驾驶汽车的互动方式可能会有所不同,因为人们知道自动驾驶汽车的编程是规避风险的。因此,研究人类如何在复杂的交通情况下与自动驾驶汽车互动是很重要的。在这里,我们调查了参与者是否对与av的互动有不同的评价,以及这些差异是否可以在行为和大脑层面上表征。我们向参与者展示了一个封面故事,同时使用近红外光谱记录了他们在时间压力下驾驶其他hv和AVs通过城市交通的全脑活动。此外,自动驾驶汽车被编程为防御性的,以避免碰撞,并且比hv有更快的制动反应时间。如果参与者在给定的时间内完成驾驶区域,并且没有危险的驾驶动作,他们将获得一笔金钱奖励。在驾驶过程中,参与者反复面对在没有信号的十字路口左转的情况。他们必须停下来,找到一个缺口,在迎面而来的由HVs和AVs组成的车辆前面转弯。虽然行为结果没有显示在自动驾驶汽车和hv转弯时使用的安全裕度之间有任何显著差异,但在自动驾驶汽车前面转弯时,参与者的决策过程更确定,这反映在间隙尺寸接受度的差异比hv小。重要的是,使用多元逻辑回归方法,我们能够通过全头部fNIRS预测每个参与者在决策阶段是否决定在HVs或av面前转弯(平均准确率= 67.2%,SD = 5%)。Channel-wise单变量fNIRS分析显示,在代表决策过程中所采取行动的评估的大脑区域中,与在av面前转弯相比,在HVs面前转弯的大脑激活差异增加。本文提供的见解可能对控制系统的开发有用,以评估未来涉及自动驾驶汽车和hv的混合交通环境中的相互作用。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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