Boosting Few-Pixel Robustness Verification via Covering Verification Designs
Yuval Shapira, Naor Wiesel, Shahar Shabelman, and Dana Drachsler-Cohen

TL;DR
This paper introduces CoVerD, a novel $L_0$ robustness verifier that efficiently reduces verification time by predicting and selecting optimal covering verification designs, enabling scalable and faster robustness analysis for neural networks.
Contribution
It proposes a new method, CoVerD, which predicts covering design parameters to improve $L_0$ robustness verification efficiency without constructing multiple coverings.
Findings
CoVerD reduces verification time by up to 5.1x.
It scales to larger $L_0$ $$-balls.
The method maintains minimal memory consumption.
Abstract
Proving local robustness is crucial to increase the reliability of neural networks. While many verifiers prove robustness in -balls, very little work deals with robustness verification in -balls, capturing robustness to few pixel attacks. This verification introduces a combinatorial challenge, because the space of pixels to perturb is discrete and of exponential size. A previous work relies on covering designs to identify sets for defining neighborhoods, which if proven robust imply that the -ball is robust. However, the number of neighborhoods to verify remains very high, leading to a high analysis time. We propose covering verification designs, a combinatorial design that tailors effective but analysis-incompatible coverings to robustness verification. The challenge is that computing a covering verification design…
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Taxonomy
TopicsAdvancements in Photolithography Techniques · Adversarial Robustness in Machine Learning · Medical Imaging Techniques and Applications
