Conference Proceedings

SupLID: Geometrical Guidance for Out-of-Distribution Detection in Semantic Segmentation

N Udayangani, S Erfani, C Leckie

Cikm 2025 Proceedings of the 34th ACM International Conference on Information and Knowledge Management | ACM | Published : 2025

Abstract

Out-of-Distribution (OOD) detection in semantic segmentation aims to localize anomalous regions at the pixel level, advancing beyond traditional image-level OOD techniques to better suit real-world applications such as autonomous driving. Recent literature has successfully explored the adaptation of commonly used image-level OOD methods-primarily based on classifier-derived confidence scores (e.g., energy or entropy)-for this pixel-precise task. However, these methods inherit a set of limitations, including vulnerability to overconfidence. In this work, we introduce SupLID, a novel framework that effectively guides classifier-derived OOD scores by exploiting the geometrical structure of the ..

View full abstract