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A Novel Attention Cooperative Framework for Automatic Modulation Recognition

机译:一种新的自动调制识别合作框架

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Modulation recognition plays an indispensable role in the field of wireless communications. In this paper, a novel attention cooperative framework based on deep learning is proposed to improve the accuracy of the automatic modulation recognition (AMR). Within this framework, a convolutional neural network (CNN), a recurrent neural network (RNN), and a generative adversarial network (GAN) are constructed to cooperate in AMR. A cyclic connected CNN (CCNN) is designed to extract spatial features of the received signal, and a bidirectional RNN (BRNN) is constructed for obtaining temporal features. To take full advantage of the complementarity and relevance between the spatial and temporal features, a fusion strategy based on global average and max pooling (GAMP) is proposed. To deal with different influence levels of the signal feature maps, we present the attention mechanism in this framework to realize recalibration. Besides, modulation recognition based on deep learning requires numerous data for training purposes, which is difficult to achieve in practical AMR applications. Therefore, an auxiliary classification GAN (ACGAN) is developed as a generator to expand the training set, and we modify the loss function of ACGAN to accommodate the processing of the actual in-phase and quadrature (I/Q) signal data. Considering the difference in distribution between generated data and real data, we propose a novel auxiliary weighing loss function to achieve higher recognition accuracy. Experimental results on the dataset RML2016.10a show that the proposed framework outperforms existing deep learning-based approaches and achieves 94 & x0025; accuracy at high signal to noise ratio (SNR).
机译:调制识别在无线通信领域中起着不可或缺的作用。本文提出了一种基于深度学习的新型关注合作框架,提高了自动调制识别(AMR)的准确性。在该框架内,构建卷积神经网络(CNN),经常性神经网络(RNN)和生成的对抗网络(GAN)以在AMR中配合。循环连接的CNN(CCNN)被设计成提取所接收信号的空间特征,并且构造双向RNN(BRNN)以获得时间特征。为了充分利用空间和时间特征之间的互补性和相关性,提出了一种基于全局平均水平和最大池(GAMP)的融合策略。要处理信号特征映射的不同影响水平,我们介绍了本框架中的注意机制来实现重新校准。此外,基于深度学习的调制识别需要众多数据进行培训目的,这很难在实际的AMR应用中实现。因此,开发了一种辅助分类GaN(acgaN)作为扩展训练集的发电机,并且我们修改acGaN的丢失功能,以适应实际的同相和正交(I / Q)信号数据的处理。考虑到生成数据和实际数据之间分配的差异,我们提出了一种新颖的辅助称重损失功能,以实现更高的识别精度。 DataSet RML2016.10A上的实验结果表明,该框架优于现有的基于深度学习的方法,实现94&X0025;高信号噪声比(SNR)处的精度。

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