A Multi-level Complex Feature Mining Method Based on Deep Learning for Automatic Modulation Recognition

Chenzhao Huang, Mingrui Ji, Hang Zhang, Ruisen Luo
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引用次数: 0

Abstract

The previous modulation recognition models based on deep learning ignore the signal's complex characteristics and only consider the information carried by the signal in a single dimension, resulting in poor performance. Aiming at the complex characteristics of in-phase/quadrature (I/Q) data, this paper adopts a combination of complex convolution and one-dimensional real convolution, emphasizing the feature interaction between I and Q and enriching the feature representation of the signal. Besides, a multi-level complex attention block is introduced to enhance the informative representation of the entire feature space. Experimental results indicate that the proposed method's recognition accuracy of MQAM is significantly improved. Furthermore, the proposed method also alleviates the poor performance under a low signal-to-noise ratio, which is overall better than other deep learning-based modulation recognition models.
一种基于深度学习的多层次复杂特征挖掘方法用于自动调制识别
以往基于深度学习的调制识别模型忽略了信号的复杂特性,只考虑信号在单一维度上携带的信息,导致性能不佳。针对同相/正交(I/Q)数据的复杂特性,本文采用复卷积与一维实卷积相结合的方法,强调I与Q之间的特征交互作用,丰富信号的特征表示。此外,还引入了多层次的复杂注意块来增强整个特征空间的信息表示。实验结果表明,该方法能显著提高MQAM的识别精度。此外,该方法还改善了低信噪比下的性能差,总体上优于其他基于深度学习的调制识别模型。
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