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Localization of mixed near-field and far-field multi-band sources based on sparse representation

机译:基于稀疏表示的混合近场和远场多频源的定位

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In this paper, a novel source localization algorithm using a uniform linear array is proposed for scenarios where both the near-field (NF) and far-field multi-band sources may exist simultaneously. The proposed method is performed in two stages. In the first stage, we firstly exploit some spatial correlations of each frequency output component to construct a virtual array output and represent the virtual array output on a corresponding overcomplete basis or dictionary which is only related to the direction-of-arrivals (DOAs) of sources. And then we can establish a multiple-dictionary sparse representation model. Finally, we estimate DOAs of the incident sources by solving the weighted similar to 1-norm minimization problem. In the second stage, every frequency output component is firstly represented on a corresponding mixed overcomplete basis with the estimated DOAs, and then a multiple-dictionary sparse representation model is created. At last, the ranges of the NF sources are estimated using the weighted similar to 1-norm minimization, and the types of sources are also distinguished. The proposed algorithm avoids parameter pair-matching and two-dimensional search, and does not require a prior knowledge of source number. Simulation results indicate that the proposed algorithm can provide an improved localization accuracy and locate more sources than the existing techniques for the case of multi-band sources.
机译:在本文中,提出了一种新颖的使用均匀线性阵列的源定位算法,用于近场(NF)和远场多频带源可以同时存在。该方法以两个阶段进行。在第一阶段,我们首先利用每个频率输出分量的一些空间相关性来构建虚拟阵列输出,并表示相应的过度顺序基础或字典的虚拟阵列输出,其仅与到达方向(DOA)相关来源。然后我们可以建立一个多字典稀疏表示模型。最后,我们通过求解类似于1-NOM最小化问题的加权来估计入射来源的DOA。在第二阶段,每个频率输出分量首先在相应的混合过度符合估计的DOAS的基础上表示,然后创建多字典稀疏表示模型。最后,使用类似于1常数最小化的加权估计NF源的范围,并且还区分了源的类型。所提出的算法避免了参数对匹配和二维搜索,并且不需要先前的源号知识。仿真结果表明,所提出的算法可以提供改进的本地化精度,并定位比多频带源的情况的现有技术定位更多的源。

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