AIOct 24, 2025

Out-of-Distribution Detection for Safety Assurance of AI and Autonomous Systems

arXiv:2510.21254v13 citationsh-index: 19
Originality Synthesis-oriented
AI Analysis

It tackles the critical problem of ensuring safety in autonomous systems for researchers and engineers, but is incremental as a review paper.

This paper reviews out-of-distribution detection techniques to address safety assurance challenges in AI-enabled autonomous systems, analyzing methods applicable throughout the machine learning development lifecycle.

The operational capabilities and application domains of AI-enabled autonomous systems have expanded significantly in recent years due to advances in robotics and machine learning (ML). Demonstrating the safety of autonomous systems rigorously is critical for their responsible adoption but it is challenging as it requires robust methodologies that can handle novel and uncertain situations throughout the system lifecycle, including detecting out-of-distribution (OoD) data. Thus, OOD detection is receiving increased attention from the research, development and safety engineering communities. This comprehensive review analyses OOD detection techniques within the context of safety assurance for autonomous systems, in particular in safety-critical domains. We begin by defining the relevant concepts, investigating what causes OOD and exploring the factors which make the safety assurance of autonomous systems and OOD detection challenging. Our review identifies a range of techniques which can be used throughout the ML development lifecycle and we suggest areas within the lifecycle in which they may be used to support safety assurance arguments. We discuss a number of caveats that system and safety engineers must be aware of when integrating OOD detection into system lifecycles. We conclude by outlining the challenges and future work necessary for the safe development and operation of autonomous systems across a range of domains and applications.

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