基于多特征融合和Sig53数据集的自动调制识别研究

      Automatic modulation recognition based on multi-feature fusion and Sig53 dataset

      • 摘要: 目前自动调制识别(automatic modulation recognition, AMR)已成为无线通信和无线电管理领域中的主要研究热点之一,但现有的研究成果数据集规模过小、信号类型和信道损伤缺乏多样性,无法充分评估模型在实际应用场景中的性能。为了弥补这些不足,本文提出了一种基于多特征融合的信号AMR方法,并构建了基于卷积网络与注意力机制相结合的多通道注意力网络(multi-channel transformer, MCTrans)模型。在Sig53大规模数据集上的实验表明,IQ信号、AP信号和时频信号的多特征融合构造了更完整的信号特征表示;与EfficientNet-B4模型和XCiT-Tiny12模型相比,精度分别提升了5.26%和3.83%。综上所述,所提出的基于多特征融合的自动调制识别方法具有更强的特征表达能力和更高的识别精度。

         

        Abstract: Automatic modulation recognition (AMR) has become a prominent research focus in wireless communications and radio spectrum management. However, most existing studies are limited by small-scale datasets, insufficient diversity in signal types, and inadequate modeling of channel impairments, making it difficult to thoroughly evaluate model performance in realistic scenarios. To address these limitations, we propose a novel AMR method based on multi-feature fusion and introduce a Multi-Channel Transformer (MCTrans) model that integrates convolutional neural networks with attention mechanisms. Experiments on the large-scale Sig53 dataset demonstrate that fusing IQ, amplitude-phase (AP), and time-frequency features leads to a more comprehensive signal representation. Compared with EfficientNet-B4 and XCiT-Tiny12 models, MCTrans achieves accuracy improvements of 5.26% and 3.83%, respectively. These findings underscore the enhanced feature expressiveness and recognition accuracy of the proposed multi-feature fusion-based AMR approach.

         

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