Remote Sensing (Oct 2022)

Energy-Based Adversarial Example Detection for SAR Images

  • Zhiwei Zhang,
  • Xunzhang Gao,
  • Shuowei Liu,
  • Bowen Peng,
  • Yufei Wang

DOI
https://doi.org/10.3390/rs14205168
Journal volume & issue
Vol. 14, no. 20
p. 5168

Abstract

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Adversarial examples (AEs) bring increasing concern on the security of deep-learning-based synthetic aperture radar (SAR) target recognition systems. SAR AEs with perturbation constrained to the vicinity of the target have been recently in the spotlight due to the physical realization prospects. However, current adversarial detection methods generally suffer severe performance degradation against SAR AEs with region-constrained perturbation. To solve this problem, we treated SAR AEs as low-probability samples incompatible with the clean dataset. With the help of energy-based models, we captured an inherent energy gap between SAR AEs and clean samples that is robust to the changes of the perturbation region. Inspired by this discovery, we propose an energy-based adversarial detector, which requires no modification to a pretrained model. To better distinguish the clean samples and AEs, energy regularization was adopted to fine-tune the pretrained model. Experiments demonstrated that the proposed method significantly boosts the detection performance against SAR AEs with region-constrained perturbation.

Keywords