首页> 外文期刊>International Journal of Wavelets, Multiresolution and Information Processing >WEAK LFM SIGNAL DECTECTION BASED ON WAVELET TRANSFORM MODULUS MAXIMA DENOISING AND OTHER TECHNIQUES
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WEAK LFM SIGNAL DECTECTION BASED ON WAVELET TRANSFORM MODULUS MAXIMA DENOISING AND OTHER TECHNIQUES

机译:基于小波变换模极大值去噪和其他技术的弱FM信号检测

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摘要

A new method for detecting weak linear frequency modulated (LFM) pulse signals buried in additive white Gaussian noise (AWGN) is presented in this paper. The method is based on the features of wavelet transform modulus maxima (WTMM) denoising and auto-correlation filtering theory. Firstly, the frequency-domain information is extracted by auto-correlation matched filtering, and is used to deduce the optimal wavelet decomposition scales. Secondly, let the signal modulus dominate on the biggest scale after the optimal scales decomposition, then keeping the signal modulus and removing the noise modulus at each scale are performed by utilizing the different propagation properties of signal and noise wavelet modulus maxima across the scales. Finally, a reconstructed signal is obtained from the reserved signal modulus with an improved signal-to-noise ratio (SNR), and is used for time-domain information extraction. At the same time, wavelet denoising depends on selecting an optimum wavelet that matches well the shape of the signal. The cross correlation coefficients between signal and db wavelets are calculated and the optimal wavelet to analysis the LFM signal is selected. Simulations show that the method can extract time-frequency information of LFM signal when SNR≤-6dB.
机译:提出了一种新的方法,用于检测掩埋在加性高斯白噪声(AWGN)中的弱线性调频(LFM)脉冲信号。该方法基于小波变换模极大值(WTMM)去噪和自相关滤波理论的特征。首先,通过自相关匹配滤波提取频域信息,并推导最优的小波分解尺度。其次,让信号模数在最佳尺度分解后在最大尺度上占优势,然后通过利用信号和噪声小波模量最大值在整个尺度上的不同传播特性来执行信号模数的去除和每个尺度上的噪声模数的去除。最后,从保留的信号模量中获得具有改善的信噪比(SNR)的重构信号,并将其用于时域信息提取。同时,小波去噪取决于选择与信号形状良好匹配的最佳小波。计算信号和db小波之间的互相关系数,并选择分析LFM信号的最佳小波。仿真表明,该方法可以在信噪比≤-6dB时提取LFM信号的时频信息。

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