Deep neural network architectures for modulation classification

Xiaoyu Liu, Diyu Yang, A. E. Gamal
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引用次数: 133

Abstract

In this work, we investigate the value of employing deep learning for the task of wireless signal modulation recognition. Recently in [1], a framework has been introduced by generating a dataset using GNU radio that mimics the imperfections in a real wireless channel, and uses 10 different modulation types. Further, a convolutional neural network (CNN) architecture was developed and shown to deliver performance that exceeds that of expert-based approaches. Here, we follow the framework of [1] and find deep neural network architectures that deliver higher accuracy than the state of the art. We tested the architecture of [1] and found it to achieve an accuracy of approximately 75% of correctly recognizing the modulation type. We first tune the CNN architecture of [1] and find a design with four convolutional layers and two dense layers that gives an accuracy of approximately 83.8% at high SNR. We then develop architectures based on the recently introduced ideas of Residual Networks (ResNet [2]) and Densely Connected Networks (DenseNet [3]) to achieve high SNR accuracies of approximately 83.5% and 86.6%, respectively. Finally, we introduce a Convolutional Long Short-term Deep Neural Network (CLDNN [4]) to achieve an accuracy of approximately 88.5% at high SNR.
调制分类的深度神经网络结构
在这项工作中,我们探讨了在无线信号调制识别任务中使用深度学习的价值。最近在[1]中,通过使用GNU无线电生成一个数据集来引入了一个框架,该数据集模仿了真实无线信道中的缺陷,并使用了10种不同的调制类型。此外,开发了卷积神经网络(CNN)架构,并证明其性能优于基于专家的方法。在这里,我们遵循[1]的框架,发现深度神经网络架构比目前的技术水平提供更高的准确性。我们测试了[1]的架构,发现它可以达到正确识别调制类型的准确率约为75%。我们首先调整[1]的CNN架构,并找到一个具有四个卷积层和两个密集层的设计,在高信噪比下精度约为83.8%。然后,我们基于最近引入的残差网络(ResNet[2])和密集连接网络(DenseNet[3])的思想开发架构,分别实现约83.5%和86.6%的高信噪比精度。最后,我们引入了一种卷积长短期深度神经网络(CLDNN[4]),在高信噪比下实现了大约88.5%的准确率。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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