Familiarity-Based Open-Set Recognition Under Adversarial Attacks.

Philip Enevoldsen, Christian Gundersen, Nico Lang,Serge J. Belongie,Christian Igel

CoRR(2023)

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摘要
Open-set recognition (OSR), the identification of novel categories, can be a critical component when deploying classification models in real-world applications. Recent work has shown that familiarity-based scoring rules such as the Maximum Softmax Probability (MSP) or the Maximum Logit Score (MLS) are strong baselines when the closed-set accuracy is high. However, one of the potential weaknesses of familiarity-based OSR are adversarial attacks. Here, we present gradient-based adversarial attacks on familiarity scores for both types of attacks, False Familiarity and False Novelty attacks, and evaluate their effectiveness in informed and uninformed settings on TinyImageNet.
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关键词
recognition,attacks,familiarity-based,open-set
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