How to improve pedestrians' trust in automated vehicles: new road infrastructure, external human-machine interface with anthropomorphism, or conventional road signaling?

Flavie Bonneviot, Stéphanie Coeugnet, Eric Brangier
Author Information
  1. Flavie Bonneviot: Perseus Laboratory, University of Lorraine, Metz, France.
  2. Stéphanie Coeugnet: Perseus Laboratory, University of Lorraine, Metz, France.
  3. Eric Brangier: VEDECOM Institute, Versailles, France.

Abstract

Introduction: Automated vehicles need to gain the trust of all road users in order to be accepted. To make technology trustworthy, automated vehicles must transmit crucial information to pedestrians through a human-machine interface, allowing pedestrians to accurately predict and act on their next behavior. However, the unsolved core issue in the field of vehicle automation is to know how to successfully communicate with pedestrians in a way that is efficient, comfortable, and easy to understand. This study investigated the impact of three human-machine interfaces specifically designed for pedestrians' trust during the street crossing in front of an automated vehicle. The interfaces used different communication channels to interact with pedestrians, i.e., through a new road infrastructure, an external human-machine interface with anthropomorphism, or with conventional road signaling.
Methods: Mentally projected in standard and non-standard use cases of human-machine interfaces, 731 participants reported their feelings and behavior through an online survey.
Results: Results showed that human-machine interfaces were efficient to improve trust and willingness to cross the street in front of automated vehicles. Among external human-machine interfaces, anthropomorphic features showed significant advantages in comparison with conventional road signals to induce pedestrians' trust and safer crossing behaviors. More than the external human-machine interfaces, findings highlighted the efficiency of the trust-based road infrastructure on the global street crossing experience of pedestrians with automated vehicles.
Discussion: All of these findings support trust-centered design to anticipate and build safe and satisfying human-machine interactions.

Keywords

References

  1. Hum Factors. 2004 Spring;46(1):50-80 [PMID: 15151155]
  2. Hum Factors. 2022 Sep;64(6):1070-1085 [PMID: 33242999]
  3. Hum Factors. 2015 Aug;57(5):895-909 [PMID: 25921302]
  4. Front Psychol. 2022 Jul 28;13:882394 [PMID: 35967627]
  5. Accid Anal Prev. 2003 Sep;35(5):771-6 [PMID: 12850078]
  6. Appl Ergon. 2021 Oct;96:103478 [PMID: 34116413]
  7. Accid Anal Prev. 2007 Sep;39(5):914-21 [PMID: 17291438]
  8. Hum Factors. 2015 May;57(3):407-34 [PMID: 25875432]
  9. Hum Factors. 2019 Dec;61(8):1353-1370 [PMID: 30912985]
  10. Hum Factors. 2013 Jun;55(3):520-34 [PMID: 23829027]
  11. Appl Ergon. 2019 Feb;75:272-282 [PMID: 30509537]
  12. Accid Anal Prev. 2013 Jan;50:554-65 [PMID: 22749319]
  13. Front Robot AI. 2019 Nov 28;6:117 [PMID: 33501132]
  14. Front Psychol. 2018 Aug 07;9:1336 [PMID: 30131737]
  15. Accid Anal Prev. 2021 Sep;159:106256 [PMID: 34146938]
  16. Ergonomics. 1996 Mar;39(3):429-60 [PMID: 8849495]
  17. Front Psychol. 2019 Dec 10;10:2757 [PMID: 31920810]

Word Cloud

Created with Highcharts 10.0.0human-machineroadtrustautomatedinterfacespedestriansexternalvehiclesinterfaceinfrastructurevehiclepedestrians'streetcrossingconventionalbehaviorefficientfrontnewanthropomorphismshowedimprovefindingsIntroduction:AutomatedneedgainusersorderacceptedmaketechnologytrustworthymusttransmitcrucialinformationallowingaccuratelypredictactnextHoweverunsolvedcoreissuefieldautomationknowsuccessfullycommunicatewaycomfortableeasyunderstandstudyinvestigatedimpactthreespecificallydesigneduseddifferentcommunicationchannelsinteractiesignalingMethods:Mentallyprojectedstandardnon-standardusecases731participantsreportedfeelingsonlinesurveyResults:ResultswillingnesscrossAmonganthropomorphicfeaturessignificantadvantagescomparisonsignalsinducesaferbehaviorshighlightedefficiencytrust-basedglobalexperienceDiscussion:supporttrust-centereddesignanticipatebuildsafesatisfyinginteractionsvehicles:signaling?anthropomorphismeHMIpedestrian

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