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Diffusion based Semantic Outlier Generation via Nuisance Awareness for Out-of-Distribution Detection

Authors :
Yoon, Suhee
Yoon, Sanghyu
Lee, Hankook
Sim, Ye Seul
Choi, Sungik
Lee, Kyungeun
Cho, Hye-Seung
Lim, Woohyung
Publication Year :
2024

Abstract

Out-of-distribution (OOD) detection, which determines whether a given sample is part of the in-distribution (ID), has recently shown promising results through training with synthetic OOD datasets. Nonetheless, existing methods often produce outliers that are considerably distant from the ID, showing limited efficacy for capturing subtle distinctions between ID and OOD. To address these issues, we propose a novel framework, Semantic Outlier generation via Nuisance Awareness (SONA), which notably produces challenging outliers by directly leveraging pixel-space ID samples through diffusion models. Our approach incorporates SONA guidance, providing separate control over semantic and nuisance regions of ID samples. Thereby, the generated outliers achieve two crucial properties: (i) they present explicit semantic-discrepant information, while (ii) maintaining various levels of nuisance resemblance with ID. Furthermore, the improved OOD detector training with SONA outliers facilitates learning with a focus on semantic distinctions. Extensive experiments demonstrate the effectiveness of our framework, achieving an impressive AUROC of 88% on near-OOD datasets, which surpasses the performance of baseline methods by a significant margin of approximately 6%.

Details

Database :
arXiv
Publication Type :
Report
Accession number :
edsarx.2408.14841
Document Type :
Working Paper