Autonomous cars are indispensable when humans go further down the hands-free route. Although existing literature highlights that the acceptance of the autonomous car will increase if it drives in a human-like manner, sparse research offers the naturalistic experience from a passenger's seat perspective to examine the human likeness of current autonomous cars. The present study tested whether the AI driver could create a human-like ride experience for passengers based on 69 participants' feedback in a real-road scenario. We designed a ride experience-based version of the non-verbal Turing test for automated driving. Participants rode in autonomous cars (driven by either human or AI drivers) as a passenger and judged whether the driver was human or AI. The AI driver failed to pass our test because passengers detected the AI driver above chance. In contrast, when the human driver drove the car, the passengers' judgement was around chance. We further investigated how human passengers ascribe humanness in our test. Based on Lewin's field theory, we advanced a computational model combining signal detection theory with pre-trained language models to predict passengers' humanness rating behaviour. We employed affective transition between pre-study baseline emotions and corresponding post-stage emotions as the signal strength of our model. Results showed that the passengers' ascription of humanness would increase with the greater affective transition. Our study suggested an important role of affective transition in passengers' ascription of humanness, which might become a future direction for autonomous driving.
翻译:无人驾驶汽车在人们要走向无需手动操作的路线时是不可或缺的。虽然现有文献强调了如果自动驾驶车辆的驾驶方式类似于人类,则自动驾驶的接受度将会增加,但很少有研究提供从乘客座位角度检验当前自动驾驶车辆人性化驾驶体验的自然体验。本研究测试了人工智能驾驶员是否能为乘客创造出类似于人类的驾驶体验,基于69名参与者在实际道路情境下的反馈。我们设计了一个基于驾驶体验的自动驾驶非语言图灵测试版本。参与者作为乘客乘坐自动驾驶汽车(由人类或人工智能驾驶员驾驶),并判断驾驶员是人类还是人工智能。人工智能驾驶员没有通过我们的测试,因为乘客发现超出了随机的偶然率。相反,当人类驾驶员驾驶汽车时,乘客的判断接近于随机。我们进一步研究了人类乘客如何在我们的测试中归因人类的特征。基于Lewin的场理论,我们提出了一个计算模型,将信号检测理论与经过预训练的语言模型相结合,以预测乘客的人性化评分行为。我们采用了基线情绪和相应后阶段情绪之间的情感转换作为我们模型的信号强度。结果表明,乘客对人性化的归因随着情感转换的增加而增加。本研究指出了情感转换在乘客对人性化归因中的重要作用,这可能成为自动驾驶的未来发展方向。