Evaluating Effects of Cognitive Load, Takeover Request Lead Time, and Traffic Density on Drivers’ Takeover Performance in Conditionally Automated Driving
Du, Na; Kim, Jinyong; Zhou, Feng; Pulver, Elizabeth; Tilbury, Dawn; Robert, Lionel + "Jr"; Pradhan, Anuj; Yang, X. Jessie
2020-07-20
Citation
Du, N., Kim, J., Zhou, F., Pulver, E., Tilbury, D., Robert, L. P., Pradhan, A., & Yang, X. J. (2020). Evaluating Effects of Cognitive Load, Takeover Request Lead Time, and Traffic Density on Drivers’ Takeover Performance in Conditionally Automated Driving, Proceedings of 12th International ACM Conference on Automotive User Interfaces and Interactive Vehicular Applications, September 21-22, 2020, Washington, DC, USA.
Abstract
In conditionally automated driving, drivers engaged in non-driving related tasks (NDRTs) have difficulty taking over control of the vehicle when requested. This study aimed to examine the relationships between takeover performance and drivers’ cognitive load, takeover request (TOR) lead time, and traffic density. We conducted a driving simulation experiment with 80 participants, where they experienced 8 takeover events. For each takeover event, drivers’ subjective ratings of takeover readiness, objective measures of takeover timing and quality, and NDRT performance were collected. Results showed that drivers had lower takeover readiness and worse performance when they were in high cognitive load, short TOR lead time, and heavy oncoming traffic density conditions. Interestingly, if drivers had low cognitive load, they paid more attention to driving environments and responded more quickly to takeover requests in high oncoming traffic conditions. The results have implications for the design of in-vehicle alert systems to help improve takeover performance.Publisher
AutomotiveUI ’20)
Other DOIs
Subjects
conditionally automated driving takeover transition cognitive load traffic density takeover lead time automated driving automated vehicles vehicles cars self driving cars human factors takeover request in-vehicle alert systems advance driving systems driving systems traffic drivers’ cognitive load vehicle drivers Automotive User Interfaces Interactive Vehicular Applications AutomotiveUI ’20 driving automation
Description
The views expressed are those of the authors and do not reflect the official policy or position of State Farm®.
Types
Conference Paper
Metadata
Show full item recordShowing items related by title, author, creator and subject.
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Du, Na; Yang, X. Jessie; Zhou, Feng (2020-09-23)
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