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Killing it with Zero-Shot: Adversarially Robust Novelty Detection

About

Novelty Detection (ND) plays a crucial role in machine learning by identifying new or unseen data during model inference. This capability is especially important for the safe and reliable operation of automated systems. Despite advances in this field, existing techniques often fail to maintain their performance when subject to adversarial attacks. Our research addresses this gap by marrying the merits of nearest-neighbor algorithms with robust features obtained from models pretrained on ImageNet. We focus on enhancing the robustness and performance of ND algorithms. Experimental results demonstrate that our approach significantly outperforms current state-of-the-art methods across various benchmarks, particularly under adversarial conditions. By incorporating robust pretrained features into the k-NN algorithm, we establish a new standard for performance and robustness in the field of robust ND. This work opens up new avenues for research aimed at fortifying machine learning systems against adversarial vulnerabilities. Our implementation is publicly available at https://github.com/rohban-lab/ZARND.

Hossein Mirzaei, Mohammad Jafari, Hamid Reza Dehbashi, Zeinab Sadat Taghavi, Mohammad Sabokrou, Mohammad Hossein Rohban• 2025

Related benchmarks

TaskDatasetResultRank
Anomaly DetectionVisA--
199
Anomaly DetectionMPDD
Clean AUROC0.657
62
Anomaly DetectionHead-CT--
58
Anomaly DetectionBraTS 2021
Clean AUROC66.7
50
Anomaly DetectionMVTec AD--
35
Anomaly DetectionBTAD
Clean AUROC69.7
22
Anomaly DetectionWFDD
Clean AUROC0.761
22
Anomaly DetectionDTD Synthetic
AUROC (Clean)70.3
22
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