Ma Zhao, Fang Shengliang, Fan Youchen, Hou Shunhu, Xu Zhaojing
Graduate School, Space Engineering University, Beijing 101416, China.
School of Aerospace Information, Space Engineering University, Beijing 101400, China.
Sensors (Basel). 2024 Jul 8;24(13):4421. doi: 10.3390/s24134421.
Automatic Modulation Recognition (AMR) is a key technology in the field of cognitive communication, playing a core role in many applications, especially in wireless security issues. Currently, deep learning (DL)-based AMR technology has achieved many research results, greatly promoting the development of AMR technology. However, the few-shot dilemma faced by DL-based AMR methods greatly limits their application in practical scenarios. Therefore, this paper endeavored to address the challenge of AMR with limited data and proposed a novel meta-learning method, the Multi-Level Comparison Relation Network with Class Reconstruction (MCRN-CR). Firstly, the method designs a structure of a multi-level comparison relation network, which involves embedding functions to output their feature maps hierarchically, comprehensively calculating the relation scores between query samples and support samples to determine the modulation category. Secondly, the embedding function integrates a reconstruction module, leveraging an autoencoder for support sample reconstruction, wherein the encoder serves dual purposes as the embedding mechanism. The training regimen incorporates a meta-learning paradigm, harmoniously combining classification and reconstruction losses to refine the model's performance. The experimental results on the RadioML2018 dataset show that our designed method can greatly alleviate the small sample problem in AMR and is superior to existing methods.
自动调制识别(AMR)是认知通信领域的一项关键技术,在许多应用中发挥着核心作用,尤其是在无线安全问题方面。目前,基于深度学习(DL)的AMR技术已取得诸多研究成果,极大地推动了AMR技术的发展。然而,基于DL的AMR方法面临的少样本困境极大地限制了它们在实际场景中的应用。因此,本文致力于解决有限数据下的AMR挑战,并提出了一种新颖的元学习方法,即具有类别重构的多级比较关系网络(MCRN-CR)。首先,该方法设计了一种多级比较关系网络结构,其中包括嵌入函数以分层输出其特征图,全面计算查询样本与支持样本之间的关系分数以确定调制类别。其次,嵌入函数集成了一个重构模块,利用自动编码器对支持样本进行重构,其中编码器兼具嵌入机制的双重作用。训练方案采用元学习范式,将分类损失和重构损失和谐地结合起来以优化模型性能。在RadioML2018数据集上的实验结果表明,我们设计的方法能够极大地缓解AMR中的小样本问题,并且优于现有方法。