论文标题

可视化深度学习的无线电调制分类器

Visualizing Deep Learning-based Radio Modulation Classifier

论文作者

Huang, Liang, Zhang, You, Pan, Weijian, Chen, Jinyin, Qian, Li Ping, Wu, Yuan

论文摘要

最近,通过以端到端的方式提取和分类无线电功能,已成功地应用于自动调制分类中。但是,基于深度学习的无线电调制分类器缺乏解释性,并且对提取和选择哪些无线电特征进行分类几乎没有解释或可见性。在本文中,我们通过引入类激活向量来可视化不同的基于深度学习的无线电调制分类器。具体而言,分别研究了基于卷积的神经网络(CNN)的分类器和长期短期记忆(LSTM)分类器,并且可视化其提取的无线电特征。广泛的数值结果表明,基于CNN的分类器和基于LSTM的分类器提取器提取物相似的无线电特征与调制参考点有关。特别是,对于基于LSTM的分类器,其获得的无线电功能类似于人类专家的知识。我们的数值结果表明,基于深度学习的分类器提取的无线电特征在很大程度上取决于无线电信号所携带的内容,并且简短的无线电样本可能导致错误分类。

Deep learning has recently been successfully applied in automatic modulation classification by extracting and classifying radio features in an end-to-end way. However, deep learning-based radio modulation classifiers are lack of interpretability, and there is little explanation or visibility into what kinds of radio features are extracted and chosen for classification. In this paper, we visualize different deep learning-based radio modulation classifiers by introducing a class activation vector. Specifically, both convolutional neural networks (CNN) based classifier and long short-term memory (LSTM) based classifier are separately studied, and their extracted radio features are visualized. Extensive numerical results show both the CNN-based classifier and LSTM-based classifier extract similar radio features relating to modulation reference points. In particular, for the LSTM-based classifier, its obtained radio features are similar to the knowledge of human experts. Our numerical results indicate the radio features extracted by deep learning-based classifiers greatly depend on the contents carried by radio signals, and a short radio sample may lead to misclassification.

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