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Direct Localization of Multiple Sources in Sensor Array Networks: A Joint Sparse Representation of Array Covariance Matrices Approach

机译:传感器阵列网络中多个源的直接定位:阵列协方差矩阵方法的联合稀疏表示

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A novel sparse representation based multi-source localization method is presented in this work. We envision a wireless network infrastructure containing multiple phase arrays of acoustic sensors. With multiple arrays, direct estimation of a set of source locations is achieved using a new joint sparse representation of array covariance matrices (JSRACM). This representation transforms the source location estimation problem into a spatial sparse signal representation (SSSR) optimization problem. To mitigate the high computation complexity of JSRACM, a novel binary sparse indicative vector (SIV) is introduced to represent the support of joint SSSR of array covariance matrices. As such, the multiple source locations may be estimated by solving an unconstrained optimization problem of the SIV vector using existing FOCUSS-like algorithms. The resulting SIVR-JSRACM algorithm does not require prior information of the number of sources nor initial source location estimates. It promises super-resolution, robustness to noise, and low computing complexity which is independent of the number of sensor phase arrays. Simulation results demonstrate superior performance of the proposed algorithm.
机译:提出了一种新颖的基于稀疏表示的多源定位方法。我们设想了一个无线网络基础设施,其中包含声传感器的多个相位阵列。使用多个数组,可以使用数组协方差矩阵(JSRACM)的新联合稀疏表示来直接估算一组源位置。此表示将源位置估计问题转换为空间稀疏信号表示(SSSR)优化问题。为了减轻JSRACM的高计算复杂度,引入了一种新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。这样,可以通过使用现有的类似于FOCUSS的算法解决SIV向量的无约束优化问题来估计多个源位置。生成的SIVR-JSRACM算法不需要源数量的先验信息,也不需要初始源位置估计。它保证了超分辨率,抗噪声能力强,计算复杂度低,这与传感器相阵列的数量无关。仿真结果证明了该算法的优越性能。

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