期刊文献+

基于尺度MMSE波束的超宽带穿墙成像方法 被引量:2

Ultrawideband through-the-wall imaging method based on scaled MMSE beamforming
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摘要 与最大化信干噪比波束相比,最小均方误差(minimum mean squared error,MMSE)波束能够获得更好的信号波形估计,因此非常适合超宽带穿墙雷达目标成像。通过分析MMSE最优权矢量中标量因子和用于旁瓣抑制的相干因子(coherence fac-tor,CF)之间的关系,建立MMSE算法与CF加权最小方差无失真响应(minimum variance distortionless response,MVDR)算法之间的统一形式,提出尺度MMSE算法。考虑到墙体介质的非均匀性、天线定位误差等的影响,给出了最优权矢量中未知参数的稳健估计方法。最后,利用时域有限差分(finite difference time domain,FDTD)数值仿真和实验数据分析了不同尺度的成像性能。结果表明尺度越大,成像质量越好,目标杂波比(target-clutter-ratio,TCR)提高约25 dB。 Compared with maximizing the signal-to-interference-pulse-noise ratio beamforming,minimum mean squared error(MMSE) beamforming could result in better signal estimation;therefore,it is suitable for ultrawideband through-the-wall imaging.Through analyzing the relation between the scalar factor of MMSE beamformer weights and the coherence factor(CF) used for sidelobe suppression,the connection between the minimum variance distortionless response(MVDR) beamforming algorithm combined with CF and MMSE beamfoming algorithm is found,and a scaled MMSE beamforming algorithm is proposed.Considering the effect of the wall medium inhomogeneity,antenna position error and etc,the robust estimation methods of unknown parameters are presented.FDTD numerical simulation data and experimentally measured data are used to demonstrate the effectiveness of the proposed beamformer in though-the-wall imaging.The results show that the larger the scale coefficient,the better the image quality;and this algorithm improves the target-clutter-ratio(TCR) by about 25dB.
出处 《仪器仪表学报》 EI CAS CSCD 北大核心 2012年第3期537-542,共6页 Chinese Journal of Scientific Instrument
基金 国家自然科学基金(61162007) 广西无线宽带通信与信号处理重点实验室2011年度主任基金项目(11104 11106)资助
关键词 穿墙成像 尺度MMSE波束算法 尺度因子 分辨率 对比度 through-wall imaging scaled MMSE beamforming scaling factor resolution contrast
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参考文献15

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共引文献28

同被引文献20

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