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Aliasing-free micro-Doppler analysis based on short-time compressed sensing

机译:基于短时压缩感测的无混叠微多普勒分析

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摘要

Time-frequency distribution (TFD) has been widely used for micro-Doppler analysis in radar signal processing. However, the spectrogram will suffer from aliasing if the maximum Doppler frequency exceeds half of the pulse repetition frequency, which may lead to false estimation of the targets' kinematic properties. In this study, by transmitting a series of random pulse repetition interval (RPRI) pulses, a concise TFD approach named short-time compressed sensing (STCS) is proposed for aliasing-free micro-Doppler analysis. In STCS, precise analysis and synthesis of the random sampling time series can be achieved by exploiting the signal's sparsity in the frequency domain. Furthermore, adaptive to the data, the widths of the particular rectangle windows are determined by sequential processing with a proper optimisation rule. To speed up the STCS procedure, the smoothed L0 algorithm is chosen for sparse recovery, where the pseudoinverse of the dictionaries can be calculated iteratively. The simulation results indicate that the proposed STCS approach can achieve both preferable TFD and acceptable computational cost. The effectiveness of the STCS is finally verified by the application for micro-Doppler estimating in RPRI radar.
机译:时频分布(TFD)已广泛用于雷达信号处理中的微多普勒分析。但是,如果最大多普勒频率超过脉冲重复频率的一半,则频谱图将出现混叠现象,这可能导致对目标运动学特性的错误估计。在这项研究中,通过发送一系列随机脉冲重复间隔(RPRI)脉冲,提出了一种称为短时压缩感测(STCS)的简明TFD方法,用于无混叠微多普勒分析。在STCS中,可以通过利用信号在频域中的稀疏性来实现随机采样时间序列的精确分析和综合。此外,根据数据,通过适当的优化规则通过顺序处理来确定特定矩形窗口的宽度。为了加快STCS程序,选择了平滑的L0算法进行稀疏恢复,其中字典的伪逆可迭代计算。仿真结果表明,所提出的STCS方法可以同时实现较好的TFD和可接受的计算成本。 STCS的有效性最终通过RPRI雷达中的微多普勒估计应用得到验证。

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  • 来源
    《Signal Processing, IET》 |2014年第2期|176-187|共12页
  • 作者

    Zhen Liu; Xizhang Wei; Xiang Li;

  • 作者单位

    Sch. of Electron. Sci. & Eng., Nat. Univ. of Defense Technol., Changsha, China;

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  • 正文语种 eng
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