Abstract
In the field of compressed sensing,
$\ell_{1-2}$-minimization model can recover the
sparse signal well. In dealing with the
$\ell_{1-2}$-minimization problem, most of the
existing literatures use the DCA algorithm to solve the unrestricted
$\ell_{1-2}$-minimization model, i.e. model
$(\ref{my1})$. Although experiments have proved that
the unrestricted $\ell_{1-2}$-minimization model can
recover the original sparse signal, the theoretical proof has not been
established yet. This paper mainly proves theoretically that the
unrestricted $\ell_{1-2}$-minimization model can
recover the sparse signal well, and makes an experimental study on the
parameter $\lambda$ in the unrestricted minimization
model. The experimental results show that increasing the size of
parameter $\lambda$ in model
$(\ref{my1})$ appropriately can improve the recovery
success rate. However, when $\lambda$ is sufficiently
large, increasing $\lambda$ will not increase the
recovery success rate.