Difference between revisions of "Song&zhegong2024"

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|Author(s)=Le Song; Zhegong Shangguan;
 
|Author(s)=Le Song; Zhegong Shangguan;
 
|Title=The Moment That The Driver Takes Over: Examining Trust in Full Self-Driving in A Naturalistic and Sequential Approach
 
|Title=The Moment That The Driver Takes Over: Examining Trust in Full Self-Driving in A Naturalistic and Sequential Approach
|Tag(s)=EMCA; full self-driving; YouTube Videos
+
|Tag(s)=EMCA; full self-driving; YouTube Videos; video analysis
 
|Key=Song&zhegong2024
 
|Key=Song&zhegong2024
 
|Publisher=Proceedings of the 22nd European Conference on Computer-Supported Cooperative Work
 
|Publisher=Proceedings of the 22nd European Conference on Computer-Supported Cooperative Work
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|Language=English
 
|Language=English
 
|Month=June
 
|Month=June
|URL=https://dl.eusset.eu/items/14ddec10-b801-40ba-9e9f-e9748f9fe08d
+
|URL=https://www.researchgate.net/publication/381545482_The_Moment_That_The_Driver_Takes_Over_Examining_Trust_in_Full_Self-Driving_in_A_Naturalistic_and_Sequential_Approach
 
|DOI=10.48340/ecscw2024_ep04
 
|DOI=10.48340/ecscw2024_ep04
 
|Abstract=In this paper, we have documented the challenges that drivers with autopilots experience on real-world roads, by focusing on the practices of humans taking over. We analyze data of full self-driving cars selected from third-party YouTube videos in a conversation analytic approach. We have shown how drivers treat the car’s moment-by-moment motion as actions that are projectable for potentially relevant risky outcomes, and how they take over the full self-driving system in situ and in vivo, with continuous situated monitoring. We have demonstrated four typical situations in which drivers take over in the unfolding course of driving action, that is, going too close to the front car, inappropriate speed in the local context, wrong recognition of lanes, and pedestrian priority. We argue that the achievement of human takeovers is inextricably connected to the situated organization and accountability of the course of action.
 
|Abstract=In this paper, we have documented the challenges that drivers with autopilots experience on real-world roads, by focusing on the practices of humans taking over. We analyze data of full self-driving cars selected from third-party YouTube videos in a conversation analytic approach. We have shown how drivers treat the car’s moment-by-moment motion as actions that are projectable for potentially relevant risky outcomes, and how they take over the full self-driving system in situ and in vivo, with continuous situated monitoring. We have demonstrated four typical situations in which drivers take over in the unfolding course of driving action, that is, going too close to the front car, inappropriate speed in the local context, wrong recognition of lanes, and pedestrian priority. We argue that the achievement of human takeovers is inextricably connected to the situated organization and accountability of the course of action.
 
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Latest revision as of 07:55, 20 June 2024

Song&zhegong2024
BibType INPROCEEDINGS
Key Song&zhegong2024
Author(s) Le Song, Zhegong Shangguan
Title The Moment That The Driver Takes Over: Examining Trust in Full Self-Driving in A Naturalistic and Sequential Approach
Editor(s)
Tag(s) EMCA, full self-driving, YouTube Videos, video analysis
Publisher Proceedings of the 22nd European Conference on Computer-Supported Cooperative Work
Year 2024
Language English
City
Month June
Journal
Volume
Number
Pages
URL Link
DOI 10.48340/ecscw2024_ep04
ISBN
Organization
Institution
School
Type
Edition
Series
Howpublished
Book title
Chapter

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Abstract

In this paper, we have documented the challenges that drivers with autopilots experience on real-world roads, by focusing on the practices of humans taking over. We analyze data of full self-driving cars selected from third-party YouTube videos in a conversation analytic approach. We have shown how drivers treat the car’s moment-by-moment motion as actions that are projectable for potentially relevant risky outcomes, and how they take over the full self-driving system in situ and in vivo, with continuous situated monitoring. We have demonstrated four typical situations in which drivers take over in the unfolding course of driving action, that is, going too close to the front car, inappropriate speed in the local context, wrong recognition of lanes, and pedestrian priority. We argue that the achievement of human takeovers is inextricably connected to the situated organization and accountability of the course of action.

Notes