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EvoBA: An Evolution Strategy as a Strong Baseline forBlack-Box Adversarial Attacks

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 نشر من قبل Andrei Ilie
 تاريخ النشر 2021
  مجال البحث الهندسة المعلوماتية
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Recent work has shown how easily white-box adversarial attacks can be applied to state-of-the-art image classifiers. However, real-life scenarios resemble more the black-box adversarial conditions, lacking transparency and usually imposing natural, hard constraints on the query budget. We propose $textbf{EvoBA}$, a black-box adversarial attack based on a surprisingly simple evolutionary search strategy. $textbf{EvoBA}$ is query-efficient, minimizes $L_0$ adversarial perturbations, and does not require any form of training. $textbf{EvoBA}$ shows efficiency and efficacy through results that are in line with much more complex state-of-the-art black-box attacks such as $textbf{AutoZOOM}$. It is more query-efficient than $textbf{SimBA}$, a simple and powerful baseline black-box attack, and has a similar level of complexity. Therefore, we propose it both as a new strong baseline for black-box adversarial attacks and as a fast and general tool for gaining empirical insight into how robust image classifiers are with respect to $L_0$ adversarial perturbations. There exist fast and reliable $L_2$ black-box attacks, such as $textbf{SimBA}$, and $L_{infty}$ black-box attacks, such as $textbf{DeepSearch}$. We propose $textbf{EvoBA}$ as a query-efficient $L_0$ black-box adversarial attack which, together with the aforementioned methods, can serve as a generic tool to assess the empirical robustness of image classifiers. The main advantages of such methods are that they run fast, are query-efficient, and can easily be integrated in image classifiers development pipelines. While our attack minimises the $L_0$ adversarial perturbation, we also report $L_2$, and notice that we compare favorably to the state-of-the-art $L_2$ black-box attack, $textbf{AutoZOOM}$, and of the $L_2$ strong baseline, $textbf{SimBA}$.



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