LOAICYNov 18, 2025

Context-aware, Ante-hoc Explanations of Driving Behaviour

arXiv:2511.14428v1FMAS@iFM
Originality Synthesis-oriented
AI Analysis

This addresses the problem of trust and safety in autonomous vehicles for the public, but it appears incremental as it builds on existing explainability engineering methods.

The paper tackles the challenge of explaining autonomous vehicle behavior by proposing a context-aware, ante-hoc explanation approach using Traffic Sequence Charts and runtime monitoring, demonstrated in a simulated overtaking scenario.

Autonomous vehicles (AVs) must be both safe and trustworthy to gain social acceptance and become a viable option for everyday public transportation. Explanations about the system behaviour can increase safety and trust in AVs. Unfortunately, explaining the system behaviour of AI-based driving functions is particularly challenging, as decision-making processes are often opaque. The field of Explainability Engineering tackles this challenge by developing explanation models at design time. These models are designed from system design artefacts and stakeholder needs to develop correct and good explanations. To support this field, we propose an approach that enables context-aware, ante-hoc explanations of (un)expectable driving manoeuvres at runtime. The visual yet formal language Traffic Sequence Charts is used to formalise explanation contexts, as well as corresponding (un)expectable driving manoeuvres. A dedicated runtime monitoring enables context-recognition and ante-hoc presentation of explanations at runtime. In combination, we aim to support the bridging of correct and good explanations. Our method is demonstrated in a simulated overtaking.

Foundations

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