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首页> 外文期刊>IEEE communications letters >MCNet: An Efficient CNN Architecture for Robust Automatic Modulation Classification
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MCNet: An Efficient CNN Architecture for Robust Automatic Modulation Classification

机译:MCNET:用于强大自动调制分类的高效CNN架构

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This letter proposes a cost-efficient convolutional neural network (CNN) for robust automatic modulation classification (AMC) deployed for cognitive radio services of modern communication systems. The network architecture is designed with several specific convolutional blocks to concurrently learn the spatiotemporal signal correlations via different asymmetric convolution kernels. Additionally, these blocks are associated with skip connections to preserve more initially residual information at multi-scale feature maps and prevent the vanishing gradient problem. In the experiments, MCNet reaches the overall 24-modulation classification rate of 93.59% at 20 dB SNR on the well-known DeepSig dataset.
机译:这封信提出了一种成本高效的卷积神经网络(CNN),用于部署用于现代通信系统的认知无线电服务的鲁棒自动调制分类(AMC)。网络架构设计有多个特定的卷积块,通过不同的不对称卷积核同时学习时空信号相关性。另外,这些块与跳过连接相关联,以在多尺度特征映射下保留更多最初的剩余信息并防止消失梯度问题。在实验中,MCNET在众所周知的DeepSig数据集上以20 dB SNR达到93.59%的总体24调制分类率。

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