Time-Frequency Image Enhancement of Frequency Modulation Signals by Using Fully Convolutional Networks

X. Xia, Fengqi Yu, Chuanqi Liu, Jiankang Zhao, Tianzhun Wu
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Abstract

The uncertainty principle and cross-term can lead to blur, fake signal components and energy oscillation in time-frequency distribution, deteriorate the results of signal tracking, radar/sonar imaging and parameter estimation. Hence in this paper, we propose a time-frequency image enhancement method based on convolutional neural networks for clearer instantaneous frequency curve. The training data are generated by a frequency modulation signal generator, and then an end-to-end training is performed between Wigner-Ville distributions and time-frequency images. Our networks not only extract underlying features of Wigner-Ville distribution, but also understand the semantic of instantaneous frequency curve and use the priori knowledge of the modulation mode. Therefore, it can correctly recognize and eliminate the cross-terms, and transform the Wigner-Ville distribution to an image that can accurate represent the instantaneous frequency curve. The method is tested by three kinds of frequency modulation signals randomly with Gaussian noise. The results show that it can work properly in most cases and has the generalization ability of multi-component signals.
基于全卷积网络的调频信号时频图像增强
不确定性原理和交叉项会导致信号分量模糊、虚假和时频分布能量振荡,影响信号跟踪、雷达/声纳成像和参数估计的效果。因此,本文提出了一种基于卷积神经网络的时频图像增强方法,以获得更清晰的瞬时频率曲线。训练数据由调频信号发生器产生,然后在Wigner-Ville分布和时频图像之间进行端到端的训练。我们的网络不仅提取了Wigner-Ville分布的底层特征,还理解了瞬时频率曲线的语义,并利用了调制方式的先验知识。因此,它可以正确地识别和消除交叉项,并将Wigner-Ville分布转化为能够准确表示瞬时频率曲线的图像。对三种随机带高斯噪声的调频信号进行了测试。结果表明,该方法在大多数情况下都能正常工作,并具有对多分量信号的泛化能力。
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