English

A Machine Learning Perspective on Automated Driving Corner Cases

Computer Vision and Pattern Recognition 2025-10-14 v1

Abstract

For high-stakes applications, like autonomous driving, a safe operation is necessary to prevent harm, accidents, and failures. Traditionally, difficult scenarios have been categorized into corner cases and addressed individually. However, this example-based categorization is not scalable and lacks a data coverage perspective, neglecting the generalization to training data of machine learning models. In our work, we propose a novel machine learning approach that takes the underlying data distribution into account. Based on our novel perspective, we present a framework for effective corner case recognition for perception on individual samples. In our evaluation, we show that our approach (i) unifies existing scenario-based corner case taxonomies under a distributional perspective, (ii) achieves strong performance on corner case detection tasks across standard benchmarks for which we extend established out-of-distribution detection benchmarks, and (iii) enables analysis of combined corner cases via a newly introduced fog-augmented Lost & Found dataset. These results provide a principled basis for corner case recognition, underlining our manual specification-free definition.

Keywords

Cite

@article{arxiv.2510.10653,
  title  = {A Machine Learning Perspective on Automated Driving Corner Cases},
  author = {Sebastian Schmidt and Julius Körner and Stephan Günnemann},
  journal= {arXiv preprint arXiv:2510.10653},
  year   = {2025}
}
R2 v1 2026-07-01T06:32:23.873Z