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An Improved Joint Sparse Representation of Array Covariance Matrices Approach in Multi-source Direct Position

机译:多源直接定位中数组协方差矩阵方法的改进联合稀疏表示

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The joint sparse representation of array covariance matrices (JSRACM) approach in direct position transforms the source position estimation problem into a spatial sparse signal representation (SSSR) optimization problem. With a novel binary sparse indicative vector (SIV) representing the support of joint SSSR of array covariance matrices, this SIVR-JSRACM algorithm presents high resolution, low computing complexity without knowing the number of sources and initial source positions estimates in advance. However, its performance degrades significantly along with the number of sources increases. To overcome this shortcoming, we proposed an improved joint sparse representation of array covariance matrices (IJSRACM) algorithm. The main contribution of this paper is that we estimate the elements in K-sparse covariance matrix of the potential sources. Thus we could get a new dictionary for SIV. The simulation results demonstrate that the SIVR-IJRSACM algorithm has superior localization accuracy and strong robust to noise under different numbers of sources and also remains the advantages of the SIVR-JSRACM algorithm listed above.
机译:直接位置中的数组协方差矩阵的联合稀疏表示(JSRACM)方法将源位置估计问题转换为空间稀疏信号表示(SSSR)优化问题。通过使用新颖的二进制稀疏指示向量(SIV)来表示对数组协方差矩阵的联合SSSR的支持,此SIVR-JSRACM算法可提供高分辨率,低计算复杂度,而无需事先知道源数量和初始源位置估计。但是,其性能会随着源数量的增加而显着降低。为克服此缺点,我们提出了一种改进的数组协方差矩阵联合稀疏表示(IJSRACM)算法。本文的主要贡献是我们估计了潜在来源的K稀疏协方差矩阵中的元素。这样我们就可以得到一个新的SIV词典。仿真结果表明,SIVR-IJRSACM算法在不同数量的信号源下具有较高的定位精度和较强的抗噪声能力,并且仍然具有上述SIVR-JSRACM算法的优势。

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