Literature DB >> 34146938

Young and older adult pedestrians' behavior when crossing a street in front of conventional and self-driving cars.

Aurélie Dommes1, Gaëtan Merlhiot2, Régis Lobjois2, Nguyen-Thong Dang2, Fabrice Vienne2, Joris Boulo3, Anne-Hélène Oliver3, Armel Crétual3, Viola Cavallo2.   

Abstract

Self-driving vehicles are gradually becoming a reality. But the consequences of introducing such automated vehicles (AVs) into current road traffic cannot be clearly foreseen yet, especially for pedestrian safety. The present study used virtual reality to examine the pedestrians' crossing behavior in front of AVs as compared to conventional cars (CVs). Thirty young (ages 21-39) and 30 older (ages 68-81) adults participated in a simulated street-crossing experiment allowing for a real walk across an experimental two-way street. Participants had to cross (or not cross) in mixed traffic conditions where highly perceptible AVs always stopped to let them cross, while CVs did not brake to give them the right of way. Available time gap (from 1 to 5 s), approach speed (30 or 50 km/h), and the lane in which the cars were approaching (near and/or far lane of the two-way street) were varied. The results revealed a significantly higher propensity to cross the street, at shorter gaps, when AVs gave way to participants in the near lane while CVs were approaching in the far lane, leading to more collisions in this condition than in the others. These risky decisions were observed for both young and older participants, but much more so for the older ones. The results also indicated hesitation to cross in front of an AV in both lanes of the two-way street, with later initiations and longer crossing times, especially for the young participants and when the AVs were approaching at a short distance and braked suddenly. This study highlights the potential risks for pedestrians of introducing AVs into current road traffic, complicating the street-crossing task for young and older people alike. Future studies should look further into the role of repeated practice and trust in AVs. The design of these vehicles must also be addressed. Some practical recommendations are provided.
Copyright © 2021 Elsevier Ltd. All rights reserved.

Entities:  

Keywords:  Automated cars; Pedestrians; Self-driving cars; Street-crossing; Virtual reality

Year:  2021        PMID: 34146938     DOI: 10.1016/j.aap.2021.106256

Source DB:  PubMed          Journal:  Accid Anal Prev        ISSN: 0001-4575


  2 in total

1.  Delicar: A Smart Deep Learning Based Self Driving Product Delivery Car in Perspective of Bangladesh.

Authors:  Md Kalim Amzad Chy; Abdul Kadar Muhammad Masum; Kazi Abdullah Mohammad Sayeed; Md Zia Uddin
Journal:  Sensors (Basel)       Date:  2021-12-25       Impact factor: 3.576

2.  Deviant Behavior of Pedestrians: A Risk Gamble or Just Against Automated Vehicles? How About Social Control?

Authors:  Hatice Şahin; Sebastian Hemesath; Susanne Boll
Journal:  Front Robot AI       Date:  2022-07-08
  2 in total

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