基于自编码器和CNN的傅立叶同步压缩变换的多径衰落波形识别

G. Kong, Minchae Jung, V. Koivunen
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引用次数: 9

摘要

本文研究了多径衰落信道下雷达波形的识别问题。频谱共享、雷达通信共存、认知雷达、频谱监测和信号智能等领域都需要波形分类。不同的雷达波形表现出不同的时频特性。我们提出了一种用于波形分类的深度学习方法。首先使用去噪自编码器(DAE)对接收到的信号进行均衡,以减轻多径衰落信道的影响。然后,用傅立叶同步压缩变换对均衡后的信号进行处理,该变换在揭示信号中振荡分量的时变行为、频率、强度和数量方面具有优异的性能。所得到的时频描述被表示为一个二元图像,该图像被送入卷积神经网络。即使在低信噪比条件下,该方法也比广泛使用的Choi-Williams分布(CWD)方法具有更好的区分不同雷达波形的性能。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Waveform Recognition in Multipath Fading using Autoencoder and CNN with Fourier Synchrosqueezing Transform
In this paper the problem of recognizing radar waveforms is addressed for multipath fading channels. Waveform classification is needed in spectrum sharing, radar-communications coexistence, cognitive radars, spectrum monitoring and signal intelligence. Different radar waveforms exhibit different properties in time-frequency domain. We propose a deep learning method for waveform classification. The received signal is first equalized to mitigate the effect of multipath fading channels by using a denoising auto-encoder (DAE). Then, the equalized signal is processed with Fourier synchrosqueezing transform that has excellent properties in revealing time-varying behavior, rate of, strength and number of oscillatory components in signals. The resulting time-frequency description is represented as a bivariate image that is fed into a convolutional neural network. The proposed method has superior performance over the widely used the Choi-Williams distribution (CWD) method in distinguishing among different radar waveforms even at low signal-to-noise ratio regime.
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