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Detection of Low-Flying Target under the Sea Clutter Background Based on Volterra Filter

机译:基于Volterra滤波器的海杂波背景下的低飞靶

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摘要

In order to detect low-flying small targets in complex sea condition effectively, we study the chaotic characteristic of sea clutter, use joint algorithm combined complete ensemble empirical mode decomposition (CEEMD) with wavelet transform to de-noise, and put forward a detection method for low-flying target under the sea clutter background based on Volterra filter. By CEEMD method, sea clutter signal which contains small target can be decomposed into a series of intrinsic mode function (IMF) components, pick out high-frequency components which contain more noise by autocorrelation function, and perform wavelet transform on them. The de-noised components and remaining components are used to reconstruct clear signal. In view of the chaotic characteristics of sea clutter, we use Volterra filter to establish adaptive prediction model, detect low-flying small target hiding in sea clutter background from the prediction error, and compare the root mean square error (RMSE) before and after de-noising to evaluate de-noising effect. Experimental results show that the joint algorithm can effectively remove noise and reduce the RMSE by 40% at least. Volterra prediction model can directly detect low-flying small target under sea clutter background from the prediction error in the cases of high signal-to-noise ratio (SNR). In the cases of low SNR, after de-noised by joint algorithm, Volterra prediction model can also detect the low-flying small target clearly.
机译:为了有效地检测复杂的海洋状况下的低飞行小目标,我们研究了海杂波的混沌特性,使用联合算法组合完整集合经验分解(CeeMD)与小波变换致噪声,提出了一种检测方法基于Volterra滤波器的海杂波背景下的低飞行目标。通过CeEMD方法,包含小目标的海杂波信号可以分解成一系列内在模式功能(IMF)组件,拾取通过自相关函数包含更多噪声的高频分量,并在它们上执行小波变换。去噪组件和剩余组件用于重建清除信号。鉴于海洋杂波的混沌特征,我们使用Volterra滤波器建立自适应预测模型,从预测误差检测海洋杂波背景的低飞行小目标,并比较DE之前和之后的根均线误差(RMSE) - 不良以评估去噪效果。实验结果表明,关节算法可以有效地去除噪声并至少将RMSE减少40%。 Volterra预测模型可以在高信噪比(SNR)的情况下,从预测误差中直接检测海洋杂波背景下的低飞行小目标。在低SNR的情况下,通过联合算法进行断开发出后,Volterra预测模型也可以清楚地检测低飞行的小目标。

著录项

  • 作者

    Hongyan Xing; Yan Yan;

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  • 年度 2018
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  • 原文格式 PDF
  • 正文语种 eng
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