论文标题
低接口波形:防止通过对抗示例识别光谱波形调制
Low-Interception Waveform: To Prevent the Recognition of Spectrum Waveform Modulation via Adversarial Examples
论文作者
论文摘要
深度学习应用于无线通信领域的许多复杂任务,例如对光谱波形的调制识别,因为它的便利性和效率。这导致了使用深度学习模型恶意第三方的问题,以轻松识别传输波形的调制格式。一些现有作品使用图像域中的对抗示例的概念直接解决了此问题,而无需完全考虑物理世界中波形传输的特征。因此,我们提出了一种低截距波形〜(liw)生成方法,可以减少第三方识别调制的可能性而不会影响友好方的可靠交流。即使在物理硬件实验中,我们的LIW也表现出明显的低际感觉绩效,从而将最先进的模型的准确性降低到小扰动的$ 15 \%$。
Deep learning is applied to many complex tasks in the field of wireless communication, such as modulation recognition of spectrum waveforms, because of its convenience and efficiency. This leads to the problem of a malicious third party using a deep learning model to easily recognize the modulation format of the transmitted waveform. Some existing works address this problem directly using the concept of adversarial examples in the image domain without fully considering the characteristics of the waveform transmission in the physical world. Therefore, we propose a low-intercept waveform~(LIW) generation method that can reduce the probability of the modulation being recognized by a third party without affecting the reliable communication of the friendly party. Our LIW exhibits significant low-interception performance even in the physical hardware experiment, decreasing the accuracy of the state of the art model to approximately $15\%$ with small perturbations.