ARES: Auxiliary Range Expansion for Outlier Synthesis
Eui-Soo Jung, Hae-Hun Seo, Hyun-Woo Jung, Je-Geon Oh, Yoon-Yeong Kim

TL;DR
The paper introduces ARES, a novel method for out-of-distribution detection that synthesizes high-quality virtual outliers by expanding beyond in-distribution regions, improving detection performance.
Contribution
ARES proposes a new outlier synthesis approach that escapes the in-distribution region, enhancing the quality of virtual outliers for better OOD detection.
Findings
Improved OOD detection performance in experiments.
Effective separation of in-distribution and outlier data.
Logical explanations of the synthesis mechanism.
Abstract
Recent successes of artificial intelligence and deep learning often depend on the well-collected training dataset which is assumed to have an identical distribution with the test dataset. However, this assumption, which is called closed-set learning, is hard to meet in realistic scenarios for deploying deep learning models. As one of the solutions to mitigate this assumption, research on out-of-distribution (OOD) detection has been actively explored in various domains. In OOD detection, we assume that we are given the data of a new class that was not seen in the training phase, i.e., outlier, at the evaluation phase. The ultimate goal of OOD detection is to detect and classify such unseen outlier data as a novel "unknown" class. Among various research branches for OOD detection, generating a virtual outlier during the training phase has been proposed. However, conventional…
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