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Analysis of sparse recovery in MIMO radar

机译:MIMO雷达的稀疏恢复分析

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We study a multiple-input multiple-output (MIMO) model for radar and provide recovery guarantees for a compressive sensing approach. Several transmit antennas send random pulses over some time-period and the echo is recorded by several receive antennas. The radar scene is resolved on an azimuth-range-Doppler grid. Sparsity is a natural assumption in this context and we study recovery of the radar scene via l-minimization. On the one hand we provide an estimate for the well-known restricted isometry property (RIP) ensuring stable and robust recovery. Compared to standard estimates available for Gaussian random measurements we require more measurements in order to resolve a scene of certain sparsity. Nevertheless, we show that our RIP estimate is optimal up to possibly logarithmic factors. By turning to a nonuniform analysis for a fixed radar scene, we reveal that the fine-structure of the support set (not only its size) influences the recovery performance. By introducing a parameter measuring the well-behavedness of the support we derive a bound for the number of measurements sufficient for recovery that resembles the minimal one for Gaussian random measurements if this parameter is close to optimal, i.e., if the support set is not pathological. Our analysis complements earlier work due to Friedlander and Strohmer where the support set was assumed to be random.
机译:我们研究了雷达的多输入多输出(MIMO)模型,并为压缩感测方法提供了恢复保证。多个发射天线在某个时间段内发送随机脉冲,并且回波被多个接收天线记录。雷达场景在方位范围多普勒网格上解析。在这种情况下,稀疏性是一个自然的假设,我们通过l最小化研究雷达场景的恢复。一方面,我们提供了众所周知的受限等轴测特性(RIP)的估计值,可确保稳定而稳定的恢复。与可用于高斯随机测量的标准估计相比,我们需要更多的测量才能解决某些稀疏情况。但是,我们表明,在可能对数因素的前提下,我们的RIP估计值是最佳的。通过转向固定雷达场景的非均匀分析,我们发现支撑集的精细结构(不仅是其大小)会影响恢复性能。通过引入一个测量支撑物行为的参数,我们得出了足以恢复的测量次数的界限,如果该参数接近最佳值(即,如果支撑物不是病理性的),则该界限类似于高斯随机测量的最小值。 。由于Friedlander和Strohmer假设支持集是随机的,因此我们的分析对先前的工作进行了补充。

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