Adversarial Patch Attacks on Deep-Learning-Based Face Recognition Systems Using Generative Adversarial Networks.

Journal: Sensors (Basel, Switzerland)
Published Date:

Abstract

Deep learning technology has developed rapidly in recent years and has been successfully applied in many fields, including face recognition. Face recognition is used in many scenarios nowadays, including security control systems, access control management, health and safety management, employee attendance monitoring, automatic border control, and face scan payment. However, deep learning models are vulnerable to adversarial attacks conducted by perturbing probe images to generate adversarial examples, or using adversarial patches to generate well-designed perturbations in specific regions of the image. Most previous studies on adversarial attacks assume that the attacker hacks into the system and knows the architecture and parameters behind the deep learning model. In other words, the attacked model is a white box. However, this scenario is unrepresentative of most real-world adversarial attacks. Consequently, the present study assumes the face recognition system to be a black box, over which the attacker has no control. A Generative Adversarial Network method is proposed for generating adversarial patches to carry out dodging and impersonation attacks on the targeted face recognition system. The experimental results show that the proposed method yields a higher attack success rate than previous works.

Authors

  • Ren-Hung Hwang
    College of Artificial Intelligence, National Yang Ming Chiao Tung University, Tainan 71150, Taiwan.
  • Jia-You Lin
    Computer Science and Information Engineering Department, National Chung Cheng University, Chiayi 62102, Taiwan.
  • Sun-Ying Hsieh
    Computer Science and Information Engineering Department, National Chung Cheng University, Chiayi 62102, Taiwan.
  • Hsuan-Yu Lin
    Telecom Technology Center, Kao-Hsiung 82151, Taiwan.
  • Chia-Liang Lin
    Telecom Technology Center, Kao-Hsiung 82151, Taiwan.