Improving Transferability of Physical Adversarial Attacks on Object Detectors Through Multi-Model Optimization
Adonisz Dimitriu,
Tamás Vilmos Michaletzky,
Viktor Remeli
Abstract:Physical adversarial attacks face significant challenges in achieving transferability across different object detection models, especially in real-world conditions. This is primarily due to variations in model architectures, training data, and detection strategies, which can make adversarial examples highly model-specific. This study introduces a multi-model adversarial training approach to improve the transferability of adversarial textures across diverse detection models, including one-stage, two-stage, and … Show more
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