A Sufficient Condition for Restoring Block Sparse Vectors from
Unrestricted $\ell_1-\ell_2$
minimization
Abstract
In the field of compressed sensing, the restricted block
$\ell_1-\ell_2$ minimization model can
recover the block sparse vector well. When solving the restricted block
$\ell_1-\ell_2$ minimization model, it
is often transformed into a unrestricted
$\ell_1-\ell_2$ minimization model,
and then the convex algorithm is used to solve the new model.
Experiments have shown that this method is effective, but the
theoretical results of the unrestricted
$\ell_1-\ell_2$ minimization model
being able to recover block sparse vectors have not yet been
established. The main task of this paper is to establish sufficient
conditions for the unrestricted
$\ell_1-\ell_2$ minimization model to
recover block sparse vectors based on the RIP condition, and to
demonstrate the influence of parameter $\lambda$ in the
unrestricted $\ell_1-\ell_2$
minimization model on the recovery of block sparse vectors through
experimental methods.\\