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首页> 外文期刊>International journal of electronics >Range-spread target detection using the time-frequency feature based on sparse representation
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Range-spread target detection using the time-frequency feature based on sparse representation

机译:基于稀疏表示的时频特征测距目标检测

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摘要

The wideband radar transmitting the linear frequency modulation signal often processes its echoes by the stretched processing. This paper deals with the range-spread target detection in white complex Gaussian noise. Here, we propose a new detection method for the range-spread target based on sparse representation, which selects the time-frequency feature to realise the target detection. It can be simply described as follows: first, the sketched signal is reconstructed from its noisy measurements by basis pursuit de-noising (BPDN); scatterers on the target are determined by its reconstruction and used to calculate the Wigner distribution; for the target embedded in noise, the time-frequency feature in its power-density spectrum is compared with the decision threshold. Meanwhile, the median absolute deviation (MAD) is adopted to estimate the noise variance. The mainly novelties can be concluded as follows: the Fourier matrix is selected to sparsely represent the sketched signal; the sparsity is used to improve the SNR of the received echoes; the Wigner transform is utilised to acquire the time-frequency feature of the range-spread target. Both the optimisation theory and time-frequency representation are introduced to solve the target detection problem. Experimental results on the raw data show that the proposed detector outperforms the conventional methods.
机译:传输线性调频信号的宽带雷达通常通过扩展处理来处理其回波。本文讨论了白色复高斯噪声中的距离扩展目标检测。在此,我们提出了一种基于稀疏表示的测距目标检测新方法,该方法选择时频特征以实现目标检测。它可以简单地描述如下:首先,通过基本追踪去噪(BPDN)从其噪声测量结果中重建草绘的信号;目标的散射由其重构确定,并用于计算维格纳分布;对于嵌入噪声中的目标,将其功率密度谱中的时频特征与决策阈值进行比较。同时,采用中值绝对偏差(MAD)来估计噪声方差。主要的新颖性可以归纳如下:选择傅立叶矩阵来稀疏表示草绘的信号;稀疏度用于提高接收到的回波的信噪比; Wigner变换用于获取距离扩展目标的时频特征。引入优化理论和时频表示法来解决目标检测问题。在原始数据上的实验结果表明,所提出的探测器优于传统方法。

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