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허성국

Heo, Seongkook
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Enjoy the Ride Consciously with CAWA: Context-Aware Advisory Warnings for Automated Driving

Author(s)
Pakdamanian, ErfanHu, ErzhenSheng, ShiliKraus, SaritHeo, SeongkookFeng, Lu
Issued Date
2022-09-17
DOI
10.1145/3543174.3546835
URI
https://scholarworks.unist.ac.kr/handle/201301/91153
Fulltext
https://dl.acm.org/doi/abs/10.1145/3543174.3546835
Citation
ACM Conference on Automotive User Interfaces and Interactive Vehicular Applications
Abstract
In conditionally automated driving, drivers decoupled from driving while immersed in non-driving-related tasks (NDRTs) could potentially either miss the system-initiated takeover request (TOR) or a sudden TOR may startle them. To better prepare drivers for a safer takeover in an emergency, we propose novel context-aware advisory warnings (CAWA) for automated driving to gently inform drivers. This will help them stay vigilant while engaging in NDRTs. The key innovation is that CAWA adapts warning modalities according to the context of NDRTs. We conducted a user study to investigate the effectiveness of CAWA. The study results show that CAWA has statistically significant effects on safer takeover behavior, improved driver situational awareness, less attention demand, and more positive user feedback, compared with uniformly distributed speech-based warnings across all NDRTs.
Publisher
ACM

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