Application of Adversarial Sample Attack in Aerial Photo Identification of Transport Vehicle

Mingjiang Zhang, Weihu Zhao, Hongwei Li, Chengyuan Wang
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Abstract

The adversarial samples can cause the convolutional neural network model to output incorrect results. It is proposed to paste the generated adversarial sample patch on the roof of the transport vehicle to prevent aerial identification of the drone and achieve the attack on the target detection system. By producing aerial transport vehicle datasets, a YOLOv2-based target detection model is trained in the Pytorch deep learning framework, and the adversarial patch is trained by the GAN (Generative Adversarial Networks) called adversarial-yolo that can make the target detection failed. After simulation and comparison, the transport vehicle with a small adversarial patch can successfully and stably attack the target detection model, making it unable to detect the target, and the operation is flexible. The research can provide a certain reference value for the defense and camouflage methods of important ground targets against unmanned aerial intelligent detection devices.
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对抗性样本攻击在运输车辆航拍图像识别中的应用
对抗性样本会导致卷积神经网络模型输出错误的结果。提出将生成的对抗样本贴片粘贴在运输车辆的车顶上,防止无人机被空中识别,实现对目标探测系统的攻击。通过生成航空运输车辆数据集,在Pytorch深度学习框架中训练基于yolov2的目标检测模型,而对抗补丁则由称为adversarial-yolo的GAN(生成式对抗网络)训练,可以使目标检测失败。经过仿真对比,具有较小对抗性补丁的运输车辆能够成功稳定地攻击目标检测模型,使其无法检测到目标,操作灵活。该研究可为重要地面目标对抗无人机智能探测装置的防御和伪装方法提供一定的参考价值。
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