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AN APPROACH OF DOA ESTIMATION USING NOISE SUBSPACE WEIGHTED l_(1) MINIMIZATION

机译:使用噪声子空间加权L_(1)最小化DOA估计的方法

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Using multiple measurement vectors (MMV), we propose an algorithm based on weighted l_(1) minimization for direction- of-arrival (DOA) estimation, in which the weights are obtained by exploiting the orthogonality between the noise subspace and the array manifold matrix. The proposed algorithm penalizes the nonzero entries whose indices correspond to the row support of the jointly sparse signals by smaller weights and the other entries whose indices are more likely to be outside of the row support of the jointly sparse signals by larger weights, and therefore it can encourage sparsity at the true source locations. Numerical examples prove that the proposed algorithm has better performance than existing algorithms based on regular l_(1) minimization.
机译:使用多个测量向量(MMV),我们提出了一种基于加权L_(1)最小化的算法,用于到达方向(DOA)估计,其中通过利用噪声子空间和阵列歧管矩阵之间的正交来获得权重 。 该算法惩罚非零条目,其索引对应于较小权重的共同稀疏信号的行支持,其指数更有可能在较大的权重的共同稀疏信号的行支持之外,因此 可以鼓励真正的源地点的稀疏性。 数值示例证明了所提出的算法与基于常规L_(1)最小化的现有算法具有更好的性能。

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