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Fortify the Guardian, Not the Treasure: Resilient Adversarial Detectors
by
Sipper, Moshe
, Dubin, Almog
, Lapid, Raz
in
Accuracy
/ adaptive adversarial attacks
/ adversarial attacks
/ Artificial intelligence
/ Datasets
/ Decision making
/ Deep learning
/ Deepfake
/ Defense mechanisms
/ Detectors
/ Machine learning
/ Radar detection
/ Radar systems
/ robustness
/ Sensors
2024
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Fortify the Guardian, Not the Treasure: Resilient Adversarial Detectors
by
Sipper, Moshe
, Dubin, Almog
, Lapid, Raz
in
Accuracy
/ adaptive adversarial attacks
/ adversarial attacks
/ Artificial intelligence
/ Datasets
/ Decision making
/ Deep learning
/ Deepfake
/ Defense mechanisms
/ Detectors
/ Machine learning
/ Radar detection
/ Radar systems
/ robustness
/ Sensors
2024
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Do you wish to request the book?
Fortify the Guardian, Not the Treasure: Resilient Adversarial Detectors
by
Sipper, Moshe
, Dubin, Almog
, Lapid, Raz
in
Accuracy
/ adaptive adversarial attacks
/ adversarial attacks
/ Artificial intelligence
/ Datasets
/ Decision making
/ Deep learning
/ Deepfake
/ Defense mechanisms
/ Detectors
/ Machine learning
/ Radar detection
/ Radar systems
/ robustness
/ Sensors
2024
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Fortify the Guardian, Not the Treasure: Resilient Adversarial Detectors
Journal Article
Fortify the Guardian, Not the Treasure: Resilient Adversarial Detectors
2024
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Overview
Adaptive adversarial attacks, where adversaries tailor their strategies with full knowledge of defense mechanisms, pose significant challenges to the robustness of adversarial detectors. In this paper, we introduce RADAR (Robust Adversarial Detection via Adversarial Retraining), an approach designed to fortify adversarial detectors against such adaptive attacks while preserving the classifier’s accuracy. RADAR employs adversarial training by incorporating adversarial examples—crafted to deceive both the classifier and the detector—into the training process. This dual optimization enables the detector to learn and adapt to sophisticated attack scenarios. Comprehensive experiments on CIFAR-10, SVHN, and ImageNet datasets demonstrate that RADAR substantially enhances the detector’s ability to accurately identify adaptive adversarial attacks without degrading classifier performance.
Publisher
MDPI AG
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