IEEE Access (Jan 2019)

A CMA-ES-Based Adversarial Attack on Black-Box Deep Neural Networks

  • Xiaohui Kuang,
  • Hongyi Liu,
  • Ye Wang,
  • Qikun Zhang,
  • Quanxin Zhang,
  • Jun Zheng

DOI
https://doi.org/10.1109/ACCESS.2019.2956553
Journal volume & issue
Vol. 7
pp. 172938 – 172947

Abstract

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Deep neural networks(DNNs) are widely used in AI-controlled Cyber-Physical Systems (CPS) to controll cars, robotics, water treatment plants and railways. However, DNNs have vulnerabilities to well-designed input samples that are called adversarial examples. Adversary attack is one of the important techniques for detecting and improving the security of neural networks. Existing attacks, including state-of-the-art black-box attack have a lower success rate and make invalid queries that are not beneficial to obtain the direction of generating adversarial examples. For these reasons, this paper proposed a CMA-ES-based adversarial attack on black-box DNNs. Firstly, an efficient method to reduce the number of invalid queries is introduced. Secondly, a black-box attack of generating adversarial examples to fit a high-dimensional independent Gaussian distribution of the local solution space is proposed. Finally, a new CMA-based perturbation compression method is applied to make the process of reducing perturbation smoother. Experimental results on ImageNet classifiers show that the proposed attack has a higher success-rate than the state-of-the-art black-box attack but reduce the number of queries by 30% equally.

Keywords