STTMC: A Few-Shot Spatial Temporal Transductive Modulation Classifier

Yunhao Shi;Hua Xu;Zisen Qi;Yue Zhang;Dan Wang;Lei Jiang
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Abstract

The advancement of deep learning (DL) techniques has led to significant progress in Automatic Modulation Classification (AMC). However, most existing DL-based AMC methods require massive training samples, which are difficult to obtain in non-cooperative scenarios. The identification of modulation types under small sample conditions has become an increasingly urgent problem. In this paper, we present a novel few-shot AMC model named the Spatial Temporal Transductive Modulation Classifier (STTMC), which comprises two modules: a feature extraction module and a graph network module. The former is responsible for extracting diverse features through a spatiotemporal parallel network, while the latter facilitates transductive decision-making through a graph network that uses a closed-form solution. Notably, STTMC classifies a group of test signals simultaneously to increase stability of few-shot model with an episode training strategy. Experimental results on the RadioML.2018.01A and RadioML.2016.10A datasets demonstrate that the proposed method perform well in 3way-Kshot, 5way-Kshot and 10way-Kshot configurations. In particular, STTMC outperforms other existing AMC methods by a large margin.
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STTMC: 少量时空传导调制分类器
随着深度学习(DL)技术的发展,自动调制分类(AMC)取得了重大进展。然而,大多数现有的基于深度学习的自动调制分类方法都需要大量的训练样本,而这些样本在非合作场景下很难获得。在小样本条件下识别调制类型已成为一个日益紧迫的问题。在本文中,我们提出了一种名为空间时空传导调制分类器(STTMC)的新型少镜头 AMC 模型,它由两个模块组成:特征提取模块和图网络模块。前者负责通过时空并行网络提取各种特征,后者则通过使用闭式解的图网络促进归纳决策。值得注意的是,STTMC 可同时对一组测试信号进行分类,以提高采用插集训练策略的少拍模型的稳定性。在 RadioML.2018.01A 和 RadioML.2016.10A 数据集上的实验结果表明,所提出的方法在 3way-Kshot、5way-Kshot 和 10way-Kshot 配置中表现良好。特别是,STTMC 在很大程度上优于其他现有的 AMC 方法。
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