基于有源干扰机的SAR智能识别对抗方法OA
An Active Jammer-based Adversarial Attack Method Against SAR Automatic Target Recognition
合理利用SAR对抗样本可以使得特定目标在智能探测技术下实现遥感隐身,从而避免被敌方探测或识别.数字域的SAR对抗方法仅在图像域进行攻击,缺乏物理可实现性,现有物理域对抗方法通过在目标周围布置角反射器、超表面,借助电磁计算模拟对抗样本,但由于散射估计精度低,实际保护效能受限.为解决上述问题,该文将SAR有源干扰技术与对抗攻击方法相结合,提出了基于有源干扰机的SAR智能识别对抗方法,在信号域扰动目标回波信号以生成对抗样本.首先,选择基于余弦幅度加权的多相位分段调制干扰技术,通过扰动分量的设计,实现对抗扰动信号的参数化控制;然后,基于SAR成像链路,将有源干扰机生成的对抗扰动信号与目标的回波信号融合,经成像处理得到具有物理意义的SAR对抗样本;最后,引入差分进化算法,动态调整多相位分段调制干扰的能量分布与空间覆盖范围等参数,进而优化SAR对抗样本,在干扰强度较小的情况下取得最佳攻击成功率.实验结果表明,所提方法在MSTAR数据集上实现平均90.88%的攻击成功率,并对5种SAR ATR模型具有较强的可转移性,其中最高可达75.57%.该方法实现了更具物理可实现性的对抗样本生成,为遥感探测中特定目标的安全防护开辟新的解决思路,并为真实场景下有源干扰信号的应用提供智能化指导.
The effective utilization of Synthetic Aperture Radar(SAR)adversarial examples enables specific targets to achieve remote sensing stealth against intelligent detection systems,thereby evading detection and recognition by adversaries.Digital domain SAR adversarial methods,which operate exclusively in the image domain,produce adversarial images that are not physically realizable and therefore cannot generated by real SAR imaging systems.Existing physical domain approaches typically involve deploying corner reflectors or electromagnetic metasurfaces around targets and simulating adversarial examples using via computational electromagnetics.However,the limited accuracy of scattering estimation often constrains the practical protective efficacy of these methods.To overcome these limitations,this paper proposes an active jammer-based adversarial attack method that integrates SAR active jamming technology with adversarial attack methods to generate adversarial examples by perturbing the target's echo signals in the signal domain.First,a multiple-phase sectionalized modulation jamming method based on cosine amplitude weighting is selected,enabling parameterized control of the adversarial jamming signal through the design of perturbation components.Next,the adversarial jamming signal generated by the active jammer is fused with the target's echo signal according to the principles and actual processes of SAR imaging and is then subjected to imaging processing to produce physically realizable SAR adversarial examples.Finally,the differential evolution algorithm is employed to dynamically adjust parameters,such as the energy distribution and jamming range of the adversarial jamming signal,thereby optimizing the SAR adversarial examples to achieve optimal attack success rates even with minimal interference intensity.Experimental results on the MSTAR dataset,a widely used benchmark in the field of SAR Automatic Target Recognition(ATR),show that the proposed method achieves an average fooling rate of 90.88%and demonstrates superior transferability across five different SAR ATR models,with the highest transfer fooling rate reaching 75.57%.Overall,the proposed method generates more physically realizable adversarial examples compared with existing digital domain methods,effectively protecting specific targets in remote sensing detection and providing guidance for the practical application of active jamming signals in real-world scenarios.
周雅婷;周勇胜;薛清华;马飞;张帆
北京化工大学信息科学与工程学院 北京 100029北京化工大学信息科学与工程学院 北京 100029中国人民解放军93221部队 北京 100085北京化工大学信息科学与工程学院 北京 100029北京化工大学信息科学与工程学院 北京 100029
信息技术与安全科学
合成孔径雷达SAR自动目标识别有源干扰机物理域对抗攻击对抗样本
Synthetic Aperture Radar(SAR)Synthetic Aperture Radar Automatic Target Recognition(SAR ATR)Active jammerPhysical domain adversarial attackAdversarial example
《雷达学报》 2026 (2)
543-562,20
国家自然科学基金(62271034)The National Natural Science Foundation of China(62271034)
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