Robust Physical Adversarial Patches Using Dynamically Optimized Clusters
Harrison Bagley, Will Meakin, Simon Lucey, Yee Wei Law, Tat-Jun Chin

TL;DR
This paper introduces a superpixel-based regularization method using SLIC clustering to create physical adversarial patches that are resilient to scale variations and interpolation effects, improving robustness in real-world scenarios.
Contribution
The paper proposes a novel scale-resilient regularization technique employing SLIC superpixels and the Implicit Function Theorem for better physical adversarial patch robustness.
Findings
Enhanced digital attack performance
Improved physical robustness of patches
Effective handling of scale variability
Abstract
Physical adversarial attacks on deep learning systems is concerning due to the ease of deploying such attacks, usually by placing an adversarial patch in a scene to manipulate the outcomes of a deep learning model. Training such patches typically requires regularization that improves physical realizability (e.g., printability, smoothness) and/or robustness to real-world variability (e.g. deformations, viewing angle, noise). One type of variability that has received little attention is scale variability. When a patch is rescaled, either digitally through downsampling/upsampling or physically through changing imaging distances, interpolation-induced color mixing occurs. This smooths out pixel values, resulting in a loss of high-frequency patterns and degrading the adversarial signal. To address this, we present a novel superpixel-based regularization method that guides patch optimization…
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Taxonomy
TopicsAdversarial Robustness in Machine Learning · Generative Adversarial Networks and Image Synthesis · Physical Unclonable Functions (PUFs) and Hardware Security
