Zhaoning Li | tʂɑu niŋ li | 李肇宁

PhD Student | Social Psychology | University of Macau

Towards human-compatible autonomous car: A study of non-verbal Turing test in automated driving with affective transition modelling


Journal article


Zhaoning Li, Qiaoli Jiang, Zhengming Wu, Anqi Liu, Haiyan Wu, Miner Huang, Kai Huang, Yixuan Ku
IEEE Transactions on Affective Computing, 2023, pp. 1-16


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APA   Click to copy
Li, Z., Jiang, Q., Wu, Z., Liu, A., Wu, H., Huang, M., … Ku, Y. (2023). Towards human-compatible autonomous car: A study of non-verbal Turing test in automated driving with affective transition modelling. IEEE Transactions on Affective Computing, 1–16. https://doi.org/10.1109/TAFFC.2023.3279311


Chicago/Turabian   Click to copy
Li, Zhaoning, Qiaoli Jiang, Zhengming Wu, Anqi Liu, Haiyan Wu, Miner Huang, Kai Huang, and Yixuan Ku. “Towards Human-Compatible Autonomous Car: A Study of Non-Verbal Turing Test in Automated Driving with Affective Transition Modelling.” IEEE Transactions on Affective Computing (2023): 1–16.


MLA   Click to copy
Li, Zhaoning, et al. “Towards Human-Compatible Autonomous Car: A Study of Non-Verbal Turing Test in Automated Driving with Affective Transition Modelling.” IEEE Transactions on Affective Computing, 2023, pp. 1–16, doi:10.1109/TAFFC.2023.3279311.


BibTeX   Click to copy

@article{li2023a,
  title = {Towards human-compatible autonomous car: A study of non-verbal Turing test in automated driving with affective transition modelling},
  year = {2023},
  journal = {IEEE Transactions on Affective Computing},
  pages = {1-16},
  doi = {10.1109/TAFFC.2023.3279311},
  author = {Li, Zhaoning and Jiang, Qiaoli and Wu, Zhengming and Liu, Anqi and Wu, Haiyan and Huang, Miner and Huang, Kai and Ku, Yixuan}
}

Citations: 2; JCR-Q1; 2022 JIF: 11.2; 2023中科院分区升级版 计算机科学2区

Abstract

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 humanness 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. 

Index Terms

Affective transition, Artificial social intelligence, Autonomous cars (ACs), Differential Emotions Scale (DES-IV), Field theory, Mentalising, Non-verbal variation of the Turing test, Pre-trained language models (PLMs), Signal detection theory (SDT)
The non-verbal variation of the Turing test for automated driving in detail
Results of the non-verbal variation of the Turing test
Schematic illustration of the computational modelling
Spearman's rank correlation scores between the humanness rating and the magnitude of affective transition