An Armijo-Type Hard Thresholding Algorithm for Joint Sparse Recovery
An Armijo-Type Hard Thresholding Algorithm for Joint Sparse Recovery
Blog Article
Joint sparse recovery (JSR) in compressed sensing simultaneously recovers sparse signals BNF with a common sparsity structure from their multiple measurement vectors obtained through a common sensing matrix.In this paper, we present an Armijo-type hard thresholding (AHT) algorithm for joint sparse recovery.Under the restricted isometry property (RIP), we show that the AHT can converge to a local minimizer of the optimization problem for JSR.
Furthermore, we compute the AHT convergence rate with the above Girls 4th of July Dress conditions.Numerical experiments show the good performance of the new algorithm for JSR.