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Automatic Modulation Classification Based on Deep Residual Networks With Multimodal Information

机译:基于具有多模峰信息的深度剩余网络自动调制分类

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摘要

Automatic modulation classification (AMC) is becoming increasingly important for its fundamental role in dynamic spectrum access, which can support 5G wireless communications to refarm the spectrum resource with low utilization. In order to achieve a better classification performance, several AMC methods based on prototype and variant of convolutional neural networks (CNNs) have been proposed. However, most existing AMC methods based on CNNs only use monomodal information from either time domain or frequency domain. The complementary processing gain, which can be obatianed by fusing multimodal information from multiple transformation domain together, is neglected. To address the issue, we exploit a waveform-spectrum multimodal fusion (WSMF) method to realize AMC based on deep residual networks (Resnet). After extracting features from multimodal information using Resnet, we adopt a feature fusion strategy to merge multimodal features of signals to obtain more discriminating features. Simulation results demonstrate the superior performance of our proposed WSMF method compared with traditional CNNs based AMC method using single modality information. Our proposed method can distinguish among sixteen modulation signals, and it works well even for higher-order digital modulation types like 256QAM and 1024QAM.
机译:自动调制分类(AMC)对于其在动态频谱访问中的基本作用方面变得越来越重要,这可以支持5G无线通信,以便利用低利用率来汇总频谱资源。为了实现更好的分类性能,已经提出了基于卷积神经网络(CNNS)原型和变体的几种AMC方法。但是,基于CNNS的大多数现有的AMC方法仅使用来自任一时域或频域的单域信息。通过将来自多个转换域的多峰信息融合在一起,可以忽略互补处理增益,忽略了从多个转换域中融合。要解决此问题,我们利用波形频谱多峰融合(WSMF)方法来基于深度剩余网络(RESET)来实现AMC。在使用Reset中提取来自多模式信息的功能后,我们采用特征融合策略来合并信号的多峰特征以获得更多辨别特征。仿真结果证明了我们所提出的WSMF方法的卓越性能与使用单片机信息的传统CNNS的AMC方法相比。我们所提出的方法可以区分十六个调制信号,即使对于256QAM和1024QAM等高阶数字调制类型,它也很好地运行良好。

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