Direction finding and array calibration based on sparse reconstruction in partly calibrated arrays

Sensor Array and Multichannel Signal Processing Workshop(2014)

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摘要
A novel convex optimization problem formulation for source localization using partly calibrated arrays composed of subarrays with unknown displacements is introduced. The proposed formulation is based on sparse reconstruction using a mixed trace- and ℓ1-norm minimization and exploits joint sparsity and special structure in the signal model. The new technique is applicable to subarrays of arbitrary topologies and allows the joint estimation of the directions of arrival (DoAs) and the array calibration. As shown by simulations, our new DoA estimation technique outperforms the state of the art method RARE, especially in low number of snapshot and low signal-to-noise ratio regime.
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关键词
array signal processing,calibration,convex programming,direction-of-arrival estimation,minimisation,signal reconstruction,ℓ1-norm minimization,DoA estimation technique,RARE method,arbitrary topology subarrays,array calibration,convex optimization problem formulation,direction finding,directions of arrival estimation,low signal-to-noise ratio regime,mixed trace-minimization,partly calibrated arrays,signal model,source localization,sparse reconstruction,unknown displacements,Direction Finding,Partly Calibrated Array,Sparse Reconstruction,Trace-Norm Minimization
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