Radar Signal Modulation Recognition Based on Bispectrum Features and Deep learning

Zeyu Dong, Fengrong Lv, T. Wan, Kaili Jiang, Xueli Fang, Lei Zhang
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引用次数: 3

Abstract

Signal bispectral transformation can not only suppress the influence of Gaussian white noise on signal modulation recognition, but also retain the signal amplitude and phase information. It is also used to extract the non-linear characteristics. Compared with other high-order spectra, bispectrum has a simple processing flow. However, the direct use of all bispectrum as signal features will lead to two-dimensional template matching, causing lots of calculations. Converting two-dimensional bispectrum into one-dimensional sequence, for example, extracting slice information of bispectrum, or using integral bispectrum apparently reduce the amount of data to be processed while retaining part of the bispectrum information. We input the extracted bispectral transformation of radar signals into the neural network to realize modulation recognition. The simulations validate our conclusions that our proposed methods still have a high recognition probability while SNR is low.
基于双谱特征和深度学习的雷达信号调制识别
信号双谱变换既能抑制高斯白噪声对信号调制识别的影响,又能保留信号的幅值和相位信息。它还用于提取非线性特征。与其他高阶谱相比,双谱处理流程简单。然而,直接使用所有双谱作为信号特征会导致二维模板匹配,造成大量的计算。将二维双谱转换为一维序列,例如提取双谱的切片信息,或者使用积分双谱,在保留部分双谱信息的同时,明显减少了需要处理的数据量。我们将提取的雷达信号的双谱变换输入到神经网络中实现调制识别。仿真结果验证了我们的结论,即在低信噪比的情况下,我们提出的方法仍然具有较高的识别概率。
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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