A Method for the Runtime Validation of AI-based Environment Perception in Automated Driving Systems
Paper in proceeding, 2024

Environment perception is a fundamental part of the dynamic driving task executed by Autonomous Driving Systems (ADS). Artificial Intelligence (AI)-based approaches have prevailed over classical techniques for realizing the environment perception. Current safety-relevant standards for automotive systems, ISO 26262 and ISO 21448, assume the existence of comprehensive requirements specifications. These specifications serve as the basis on which the functionality of an automotive system can be rigorously tested and checked for compliance with safety regulations. However, AI-based perception systems do not have complete requirements specification. Instead, large datasets are used to train AI-based perception systems. This paper presents a function monitor for the functional runtime monitoring of a two-folded AI-based environment perception for ADS, based respectively on camera and LiDAR sensors. To evaluate the applicability of the function monitor, we conduct a qualitative scenario-based evaluation in a controlled laboratory environment using a model car. The evaluation results then are discussed to provide insights into the monitor's performance and its suitability for real-world applications.

automated driving system

function monitor

dependable safety-critical system

runtime monitoring

perception system

Author

Iqra Aslam

Clausthal University of Technology

Abhishek Buragohain

Clausthal University of Technology

Daniel Bamal

Clausthal University of Technology

Adina Aniculaesei

Chalmers, Computer Science and Engineering (Chalmers), Formal methods

Meng Zhang

Clausthal University of Technology

Andreas Rausch

Clausthal University of Technology

ADAPTIVE 2024 The Sixteenth International Conference on Adaptive and Self-Adaptive Systems and Applications

2308-4146 (ISSN)

17-25
978-1-68558-153-4 (ISBN)

16th International Conference on Adaptive and Self-Adaptive Systems and Applications
Venice, Italy,

Subject Categories (SSIF 2025)

Software Engineering

Computer graphics and computer vision

Human Computer Interaction

Artificial Intelligence

DOI

10.48550/arXiv.2412.16762

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1/7/2026 9