Familiarity-Based Open-Set Recognition Under Adversarial Attacks

Publikation: Bidrag til bog/antologi/rapportKonferencebidrag i proceedingsForskningpeer review

Abstract

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 study 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. Furthermore, we explore how novel and familiar samples react to adversarial attacks and formulate the adversarial reaction score as an alternative OSR scoring rule, which shows a high correlation with the MLS familiarity score.
OriginalsprogEngelsk
TitelProceedings of the 6th Northern Lights Deep Learning Conference (NLDL)
Antal sider8
Vol/bind265
ForlagPMLR
Publikationsdato2025
Sider58-65
StatusUdgivet - 2025
Begivenhed6th Northern Lights Deep Learning Conference, NLDL 2025 - Tromso, Norge
Varighed: 7 jan. 20259 jan. 2025

Konference

Konference6th Northern Lights Deep Learning Conference, NLDL 2025
Land/OmrådeNorge
ByTromso
Periode07/01/202509/01/2025
NavnProceedings of Machine Learning Research
Vol/bind265

Citationsformater