Clipped BagNet: Defending Against Sticker Attacks with Clipped Bag-of-features
Zhanyuan Zhang, Benson Yuan, Michael McCoyd, David Wagner
Abstract
Many works have demonstrated that neural networks are vulnerable to adversarial examples. We examine the adversarial sticker attack, where the attacker places a sticker somewhere on an image to induce it to be misclassified. We take a first step towards defending against such attacks using clipped BagNet, which bounds the influence that any limited-size sticker can have on the final classification. We evaluate our scheme on ImageNet and show that it provides strong security against targeted PGD attacks and gradient-free attacks, and yields certified security for a 95% of images against a targeted 20 × 20 pixel attack.
Topics & Concepts
Adversarial systemComputer scienceScheme (mathematics)PixelComputer securityImage (mathematics)CertificationArtificial neural networkArtificial intelligenceCryptographyMathematicsPolitical scienceLawMathematical analysisAdversarial Robustness in Machine LearningAnomaly Detection Techniques and ApplicationsDomain Adaptation and Few-Shot Learning