Convergence of the Generalized Alternating Projection Algorithm for Compressive Sensing
Abstract
The convergence of the generalized alternating projection (GAP) algorithm is studied in this paper to solve the compressive sensing problem = + εv. By assuming that is invertible, we prove that GAP converges linearly within a certain range of step-size when the sensing matrix satisfies restricted isometry property (RIP) condition of δ2K, where K is the sparsity of . The theoretical analysis is extended to the adaptively iterative thresholding (AIT) algorithms, for which the convergence rate is also derived based on δ2K of the sensing matrix. We further prove that, under the same conditions, the convergence rate of GAP is faster than that of AIT. Extensive simulation results confirm the theoretical assertions.
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