Wireless Signal Denoising Using Conditional Generative Adversarial Networks

H. Tang, Yanxiao Zhao, Guodong Wang, Changqing Luo, Wei Wang
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Abstract

Wireless signal strength plays a critical role in wireless security. For example, we can intentionally reduce transmission power at a transmitter to prevent eavesdropping. Later the receiver will employ signal denoising techniques to enhance the signal-to-noise ratio. Also, signals are deteriorated by noise and interference during transmission. Therefore, wireless signal enhancement or denoising is a critical challenge. This paper tackles this challenge and investigates an adversarial learning-based approach for wireless signal denoising, which will correspondingly enhance signal strength. Specifically, we design a conditional generative adversarial network at the receiver to establish an adversarial game between a generator and a discriminator. The generator receives the noisy signal and aims to generate the denoised signal, while the discriminator aims to force the denoised signal to match the noisy signal exactly. Unlike traditional signal denoising methods that estimate the noise or interference in the noisy signals, our proposed method estimates and learns the features of real noise-free signals, which is more adaptive to dynamic wireless communication environments. We conduct simulations on signals with four different modulations to evaluate the performance. The results demonstrate that our method can generate denoised signals effectively and outperforms other traditional methods.
基于条件生成对抗网络的无线信号去噪
无线信号强度对无线安全起着至关重要的作用。例如,我们可以故意降低发射机的传输功率以防止窃听。随后,接收机将采用信号去噪技术来提高信噪比。此外,信号在传输过程中会受到噪声和干扰的影响。因此,无线信号的增强或去噪是一个关键的挑战。本文解决了这一挑战,并研究了一种基于对抗性学习的无线信号去噪方法,该方法将相应地增强信号强度。具体来说,我们在接收端设计了一个条件生成对抗网络,在生成器和鉴别器之间建立了一个对抗博弈。发生器接收噪声信号,目的是产生去噪信号,鉴别器的目的是强制去噪信号与噪声信号精确匹配。与传统的信号去噪方法估计噪声信号中的噪声或干扰不同,我们提出的方法估计和学习真实无噪声信号的特征,更适应动态的无线通信环境。我们对四种不同调制方式的信号进行了仿真,以评估其性能。结果表明,该方法能有效地生成去噪信号,优于其他传统方法。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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