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A direction-of-arrival(DOA)estimation algorithm is presented based on covariance differencing and sparse signal recovery,in which the desired signal is embedded in noise with unknown covariance.The key point of the algorithm is to eliminate the noise component by forming the difference of original and transformed covariance matrix,as well as cast the DOA estimation considered as a sparse signal recovery problem.Concerning accuracy and complexity of estimation,the authors take a vectorization operation on difference matrix,and further enforce sparsity by reweighted l1-norm penalty.We utilize data-validation to select the regularization parameter properly.Meanwhile,a kind of symmetric grid division and refinement strategy is introduced to make the proposed algorithm effective and also to mitigate the effects of limiting estimates to a grid of spatial locations.Compared with the covariance-differencing-based multiple signal classification(MUSIC)method,the proposed is of salient features,including increased resolution,improved robustness to colored noise,distinguishing the false peaks easily,but with no requiring of prior knowledge of the number of sources.
A direction-of-arrival (DOA) estimation algorithm is presented based on covariance differencing and sparse signal recovery, in which the desired signal is embedded in noise with unknown covariance. The key point of the algorithm is to eliminate the noise component by forming the difference of original and transformed covariance matrix, as well as cast the DOA estimation considered as a sparse signal recovery problem. Consensus accuracy and complexity of estimation, the authors take a vectorization operation on difference matrix, and further enforce sparsity by reweighted l1-norm penalty .We utilize data-validation to select the regularization parameter properly. Meanwhile, a kind of symmetric grid division and refinement strategy is introduced to make the proposed algorithm effective and also to mitigate the effects of limiting estimates to a grid of spatial locations. Compared with the covariance-differencing-based multiple signal classification (MUSIC) method, the proposed is salient features, i ncluding increased resolution, improved robustness to colored noise, distinguishing the false peaks easily, but with no requiring of prior knowledge of the number of sources.