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首页> 外文期刊>Radar, Sonar & Navigation, IET >Multiple-input–multiple-output radar super-resolution three-dimensional imaging based on a dimension-reduction compressive sensing
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Multiple-input–multiple-output radar super-resolution three-dimensional imaging based on a dimension-reduction compressive sensing

机译:基于降维压缩感知的多输入多输出雷达超分辨率三维成像

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摘要

A super-resolution method for three-dimensional (3D) imaging by combining a narrowband multiple-input–multiple-output (MIMO) radar and compressive sensing (CS) theory is presented. First, a narrowband bistatic MIMO radar with uniform linear transmit array and uniform rectangular receive array is proposed. After analysing the 3D echo signal, Kronecker CS (KCS) is introduced to solve the problem of low resolution in 3D image, which is caused by the limited transmit and receive array. Considering the great complexity of KCS in improving the 3D resolution jointly, a dimension-reduction CS approach is presented to reduce its storage and computation burden. Furthermore, the restricted property of the dimension-reduction dictionary is analysed to insure the accurate recovery. Finally, the effectiveness of the method is validated by the results of comparative simulations.
机译:提出了一种结合窄带多输入多输出(MIMO)雷达和压缩感测(CS)理论的三维(3D)成像超分辨率方法。首先,提出了一种具有均匀线性发射阵列和均匀矩形接收阵列的窄带双基地MIMO雷达。在分析了3D回波信号之后,引入了Kronecker CS(KCS)解决了3D图像分辨率低的问题,该问题是由有限的发射和接收阵列引起的。考虑到KCS在共同提高3D分辨率方面的巨大复杂性,提出了一种降维CS方法以减少其存储和计算负担。此外,分析了降维字典的受限属性,以确保准确的恢复。最后,通过比较仿真的结果验证了该方法的有效性。

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