Generative AI and Attentive User Interfaces: Five Strategies to Enhance Take-Over Quality in Automated Driving
Patrick Ebel

TL;DR
This paper discusses how generative AI-powered Attentive User Interfaces can subtly enhance driver Situation Awareness in Level 3 automated driving, aiming to improve takeover quality and road safety.
Contribution
It introduces five innovative strategies leveraging generative AI to improve takeover quality in automated driving through subtle, unconscious user interface enhancements.
Findings
Proposes five strategies for AI-driven AUIs in driving
Highlights potential of large language and diffusion models
Aims to improve safety without increasing driver workload
Abstract
As the automotive world moves toward higher levels of driving automation, Level 3 automated driving represents a critical juncture. In Level 3 driving, vehicles can drive alone under limited conditions, but drivers are expected to be ready to take over when the system requests. Assisting the driver to maintain an appropriate level of Situation Awareness (SA) in such contexts becomes a critical task. This position paper explores the potential of Attentive User Interfaces (AUIs) powered by generative Artificial Intelligence (AI) to address this need. Rather than relying on overt notifications, we argue that AUIs based on novel AI technologies such as large language models or diffusion models can be used to improve SA in an unconscious and subtle way without negative effects on drivers overall workload. Accordingly, we propose 5 strategies how generative AI s can be used to improve the…
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Taxonomy
TopicsHuman-Automation Interaction and Safety
