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Tensor-Based Match Pursuit Algorithm for MIMO Radar Imaging

机译:基于卷曲的MIMO雷达成像搭配追踪算法

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In MIMO radar, existing sparse imaging algorithms commonly vectorize the receiving data, which will destroy the multi-dimension structure of signal and cause the algorithm performance decline. In this paper, the sparsity characteristic and multi-dimension characteristic of signals are considered simultaneously and a new compressive sensing imaging algorithm named tensor-based match pursuit(TMP) is proposed. In the proposed method, MIMO radar tensor signal model is established to eliminate “dimension disaster” at first. Then, exploiting tensor decomposition to process tensor data sets, tensor-based match pursuit is formulated for multi-dimension sparse signal recovery, in which atom vectors orthogonality selection strategy and basis-signal reevaluation are used to eliminate the wrong indices and enhance resolution respectively. Simulation results validates that the proposed method can complete high-resolution imaging correctly compared with conventional greedy sparse recovery algorithms. Additionally, under fewer snapshots condition, RMSE of proposed method is far lower than other sparse recovery algorithms.
机译:在MIMO雷达中,现有的稀疏成像算法通常是矢量化接收数据,这将破坏信号的多维结构并导致算法性能下降。在本文中,提出了一种同时考虑信号的稀疏特性和多维特性,并且提出了一种名为基于Tensor的匹配追踪(TMP)的新的压缩感测成像算法。在所提出的方法中,建立MIMO雷达张量信号模型以首先消除“维度灾难”。然后,利用张量分解来处理张量数据集,配制了基于张量的匹配追踪,用于多维稀疏信号恢复,其中原子向量选择策略和基信号重新评估用于消除错误的指标并分别增强分辨率。仿真结果验证了与传统的贪婪稀疏恢复算法相比,该方法可以正确地完成高分辨率成像。另外,在较少的快照条件下,所提出的方法的RMSE远低于其他稀疏恢复算法。

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