Bilinear compressed sensing for array self-calibration

Pacific Grove, CA(2014)

引用 19|浏览6
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摘要
We consider array self-calibration algorithms for direction finding in the presence of unknown complex sensor gains. By exploiting the sparsity in the azimuth domain, we can utilize methods developed in the context of compressive sensing. A self-calibration algorithm is proposed that alternates between solving a joint-sparse optimization problem and estimating the unknown array gains. Furthermore, for the case of fully correlated signals we introduce a convex programming algorithm based on bilinear compressive sensing.
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关键词
array signal processing,compressed sensing,convex programming,radio direction-finding,array self-calibration algorithm,azimuth domain sparsity,bilinear compressed sensing,convex programming algorithm,direction finding,fully-correlated signals,joint-sparse optimization problem,unknown array gain estimation,unknown complex sensor gains
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