吉林大学学报(工学版) ›› 2025, Vol. 55 ›› Issue (12): 4052-4062.doi: 10.13229/j.cnki.jdxbgxb.20240555
• 计算机科学与技术 • 上一篇
Hong ZHAO(
),Yu-xuan MA,Fu-rong SONG
摘要:
针对基于生成对抗网络的对抗样本生成方法(AdvGAN)所存在的扰动偏离关键区域且可控性不强,导致对抗样本攻击效果欠佳、真实性较低的问题,提出了Diff-AdvGAN对抗样本生成方法。首先,利用自适应空间特征融合模块(ASFF)融合图像的不同尺度特征图。其次,将融合后的特征图输入生成器生成扰动,并使用随机微分引导模块(SDGM)增强扰动的可控性,生成对抗样本。最后,将对抗样本输入判别器和目标模型,迭代计算损失值并反馈至生成器,以生成攻击性能较强的扰动。实验结果表明,Diff-AdvGAN方法在MNIST数据集上对LeNet C、VGG11和C&Wmodel模型的攻击成功率均大于99%,在CIFAR-10数据集上对ResNet18和ResNet32模型的攻击成功率分别为96.17%和95.82%;同时生成的扰动处于图像关键区域,稀疏性高、幅度小,均优于对比方法。
中图分类号:
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