Conference Proceedings

Exploiting Inter-Sample Information for Long-Tailed Out-of-Distribution Detection

N Udayangani, HM Dolatabadi, S Erfani, C Leckie

Proceedings 2025 IEEE Winter Conference on Applications of Computer Vision Wacv 2025 | IEEE | Published : 2025

Abstract

Detecting out-of-distribution (OOD) data is essential for safe deployment of deep neural networks (DNNs). This problem becomes particularly challenging in the presence of long-tailed in-distribution (ID) datasets, often leading to high false positive rates (FPR) and low tail-class ID classification accuracy. In this paper, we demonstrate that exploiting inter-sample relationships using a graph-based representation can significantly improve OOD detection in long-tailed recognition of vision datasets. To this end, we use the feature space of a pre-trained model to initialize our graph structure. We account for the differences between the activation layer distribution of the pre-training vs. tr..

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