2021
DOI: 10.3389/fhumd.2021.669030
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Improving Passenger Experience and Trust in Automated Vehicles Through User-Adaptive HMIs: “The More the Better” Does Not Apply to Everyone

Abstract: Automated vehicles promise transformational benefits for future mobility systems, but only if they will be used regularly. However, due to the associated loss of control and fundamental change of in-vehicle user experience (shifting from active driver to passive passenger experience), many humans have reservations toward driving automation, which question their sufficient usage and market penetration. These reservations vary based on individual characteristics such as initial attitudes. User-adaptive in-vehicl… Show more

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Cited by 24 publications
(17 citation statements)
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“…We mimic the driver's interaction with the vehicle's interface while driving through the auditory n-back task and the visual search task, which are equivalent to a speech-based and a touch-based interaction respectively. While our work focuses on this general dual task approach of manipulating an interface while driving, it is also applicable to more specific applications such as transfer-of-control scenarios for automated and semi-automated vehicles [79]; simplified interfaces, or personalized warnings for mentally exhausting situations [88]; and increasing the user's trust through system awareness and transparency [44]. Thus, an adaptive personalized interface observant of the driver's mental capacities can be implemented.…”
Section: Discussion and Limitations 51 User-centered Design Implicationsmentioning
confidence: 99%
“…We mimic the driver's interaction with the vehicle's interface while driving through the auditory n-back task and the visual search task, which are equivalent to a speech-based and a touch-based interaction respectively. While our work focuses on this general dual task approach of manipulating an interface while driving, it is also applicable to more specific applications such as transfer-of-control scenarios for automated and semi-automated vehicles [79]; simplified interfaces, or personalized warnings for mentally exhausting situations [88]; and increasing the user's trust through system awareness and transparency [44]. Thus, an adaptive personalized interface observant of the driver's mental capacities can be implemented.…”
Section: Discussion and Limitations 51 User-centered Design Implicationsmentioning
confidence: 99%
“…One method of cultivating trust for self-driving cars is to improve on human-machine interaction, by designing self-driving cars in a way that communicates to passengers and have them play a more active role in the experience one can deliver a more trustful system for users. This is supported by research conducted by Hartwich et al where evidence suggests that even given a SAE Level 4-5 system where no human interaction is required, the introduction of monitoring tools significantly improves passenger trust 6 . Further research conducted by Hartwich et al shows that the significance of the first experience with self-driving cars greatly impacts the trust one associates with the technology 7 .…”
Section: Introductionmentioning
confidence: 73%
“…To reduce such subjective uncertainties in the use of AVs or automated systems in general, these systems must focus on the users and their needs. For instance, recent studies point to the relevance of considering the information needs of users of AVs (Hartwich et al, 2021). To relate the needs of users and the design of AVs, we developed the approach of user-focused automation.…”
Section: User-focused Automationmentioning
confidence: 99%
“…Group-specific effects of iHMIs with differing information availability on passenger experience and trust (Hartwich et al, 2021;Hollander et al, 2021).…”
Section: Uc2: Robotaximentioning
confidence: 99%