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Improving Query Efficiency of Black-Box Adversarial Attack

机译:提高黑匣子对抗攻击的查询效率

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Deep neural networks (DNNs) have demonstrated excellent performance on various tasks, however they are under the risk of adversarial examples that can be easily generated when the target model is accessible to an attacker (white-box setting). As plenty of machine learning models have been deployed via online services that only provide query outputs from inaccessible models (e.g., Google Cloud Vision API2), black-box adversarial attacks (inaccessible target model) are of critical security concerns in practice rather than white-box ones. However, existing query-based black-box adversarial attacks often require excessive model queries to maintain a high attack success rate. Therefore, in order to improve query efficiency, we explore the distribution of adversarial examples around benign inputs with the help of image structure information characterized by a Neural Process, and propose a Neural Process based black-box adversarial attack (NP-Attack) in this paper. Extensive experiments show that NP-Attack could greatly decrease the query counts under the black-box setting.
机译:深层神经网络(DNNs)已经证明了在各种任务的出色表现,但它们是可以当目标模式是攻击者(白盒设置)访问很容易产生的对抗例子风险之下。作为大量的机器学习模型已经通过在线服务部署,只能从无法访问的型号(例如,Google云视觉API2),黑盒对抗攻击(无法访问的目标模型)在实践中而不是白色的关键安全问题盒子。然而,现有的基于查询的黑盒对抗性攻击通常需要过多的模型查询来维持高攻击成功率。因此,为了提高查询效率,我们探讨了良性输入周围的对手示例的分布,以及通过神经过程的图像结构信息,并提出了基于神经过程的黑盒敌对攻击(NP-Beart)纸。广泛的实验表明,NP攻击可能会大大降低黑盒设置下的查询计数。

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