Affiliation:
1. College of Mathematics and Computer, Jilin Normal University, Siping 136000, China
Abstract
In the field of object detection, the adversarial attack method based on generative adversarial network efficiently generates adversarial examples, thereby significantly reducing time costs. However, this approach overlooks the imperceptibility of perturbations in adversarial examples, resulting in poor visual performance and insufficient invisibility of the generated adversarial examples. To further enhance the imperceptibility of perturbations in adversarial examples, a method utilizing median filtering is proposed to address these generated perturbations. Experimental evaluations were conducted on the Pascal VOC dataset. The results demonstrate that, compared to the original image, there is an increase of at least 17.2% in the structural similarity index (SSIM) for generated adversarial examples. Additionally, the peak signal-to-noise ratio (PSNR) increases by at least 27.5%, while learned perceptual image patch similarity (LPIPS) decreases by at least 84.6%. These findings indicate that the perturbations in generated adversarial examples are more difficult to detect, with significantly improved imperceptibility and closer resemblance to the original image without compromising their high aggressiveness.
Funder
Jilin Province Science and Technology Development Plan Project—Youth Growth Science and Technology Plan Project
New Generation Information Technology Innovation Project of China University Industry, University and Research Innovation Fund
Jilin Province Innovation and Entrepreneurship Talent Project
Natural Science Foundation of Jilin Province
Innovation Project of Jilin Provincial Development and Reform Commission
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