Abstract
The beamforming algorithm obtains the azimuth estimation of the target
by extracting the information from the data covariance matrix. Many
studies have shown muchunextracted information in the covariance matrix.
This paper proposes the Estimate Parameter via Projecting a Subspace
onto a Dictionary(EPPSD) algorithm that may further extract information
from the covariance matrix. Through the regularization constraint, we
limit the spatial power distribution to the signal subspace to ensure
the correctness of the target estimation. In addition, we use the
weighted 1-norm to constrain the spatial power distribution vector to
ensure that the targets in the space remain sparse. In the case of the
above two constraints, the beamforming results are fitted by a
dictionary, and the azimuth estimation of the target is obtained by
quadratic programming. The experimental results show that the algorithm
can estimate the target azimuth despite the inaccurate sparse
constraint.