Distributed MIMO radar using compressive sampling

A. Petropulu, Yaojiang Yu, H. Poor
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引用次数: 35

Abstract

A distributed MIMO radar is considered, in which the transmit and receive antennas belong to nodes of a small scale wireless network. The transmit waveforms could be uncorrelated, or correlated in order to achieve a desirable beampattern. The concept of compressive sampling is employed at the receive nodes in order to perform direction of arrival (DOA) estimation. According to the theory of compressive sampling, a signal that is sparse in some domain can be recovered based on far fewer samples than required by the Nyquist sampling theorem. The DOAs of targets form a sparse vector in the angle space, and therefore, compressive sampling can be applied for DOA estimation. The proposed approach achieves the superior resolution of MIMO radar with far fewer samples than other approaches. This is particularly useful in a distributed scenario, in which the results at each receive node need to be transmitted to a fusion center.
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采用压缩采样的分布式MIMO雷达
研究了一种分布式MIMO雷达,该雷达的发射天线和接收天线都属于一个小型无线网络的节点。发射波形可以是不相关的,也可以是相关的,以获得理想的波束方向图。在接收节点采用压缩采样的概念进行到达方向(DOA)估计。根据压缩采样理论,一个在某些域中是稀疏的信号可以用比Nyquist采样定理所需的更少的样本来恢复。目标的DOA在角度空间中形成一个稀疏向量,因此可以采用压缩采样进行DOA估计。该方法以远少于其他方法的采样量,获得了更高的MIMO雷达分辨率。这在分布式场景中特别有用,因为每个接收节点的结果都需要传输到融合中心。
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