AUTHOREA
Log in
Sign Up
Browse Preprints
LOG IN
SIGN UP
Essential Site Maintenance
: Authorea-powered sites will be updated circa 15:00-17:00 Eastern on Tuesday 5 November.
There should be no interruption to normal services, but please contact us at help@authorea.com in case you face any issues.
Hongyan Shi
Public Documents
2
Block Sparse Vector Recovery for Compressive Sensing via $\ell_1-\alpha\ell_q$-minimi...
Hongyan Shi
and 2 more
November 02, 2023
This paper solves the problem of block sparse vector recovery using the block $\ell_1-\alpha\ell_q$- minimization model. Based on the block restricted isometry property (B-RIP) condition, we obtain exact block sparse vector recovery result. We also obtain the theoretical bound for the block $\ell_1-\alpha\ell_q$- minimization model when measurements are depraved by the noises.
A Sufficient Condition for Restoring Block Sparse Vectors from Unrestricted $\ell_1-\...
Hongyan Shi
and 1 more
July 21, 2023
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.\\