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Improving the Convergence Rate of Ray Search Optimization for Query-Efficient Hard-Label Attacks

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In hard-label black-box adversarial attacks, where only the top-1 predicted label is accessible, the prohibitive query complexity poses a major obstacle to practical deployment. In this paper, we focus on optimizing a representative class of attacks that search for the optimal ray direction yielding the minimum $\ell_2$-norm perturbation required to move a benign image into the adversarial region. Inspired by Nesterov's Accelerated Gradient (NAG), we propose a momentum-based algorithm, ARS-OPT, which proactively estimates the gradient with respect to a future ray direction inferred from accumulated momentum. We provide a theoretical analysis of its convergence behavior, showing that ARS-OPT enables more accurate directional updates and achieves faster, more stable optimization. To further accelerate convergence, we incorporate surrogate-model priors into ARS-OPT's gradient estimation, resulting in PARS-OPT with enhanced performance. The superiority of our approach is supported by theoretical guarantees under standard assumptions. Extensive experiments on ImageNet and CIFAR-10 demonstrate that our method surpasses 13 state-of-the-art approaches in query efficiency.

Xinjie Xu, Shuyu Cheng, Dongwei Xu, Qi Xuan, Chen Ma• 2025

Related benchmarks

TaskDatasetResultRank
Adversarial AttackImageNet
Attack Success Rate78.8
178
Untargeted AttackImageNet (test)
Mean L2 Distortion (2K Budget)9.91
42
Targeted AttackImageNet (test)
Mean L2 Distortion (2K Budget)34.77
38
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