Research Article

A Greedy Multistage Convex Relaxation Algorithm Applied to Structured Group Sparse Reconstruction Problems Based on Iterative Support Detection

Figure 2

Comparison results of different primal-based ADMs, dual-based ADMs, and the corresponding GM-ADMs (nonoverlapping group sparse Gaussian cases). Noise level . The -axe represents number of measurements, and the -axe represents relative error, respectively. The maximum number of stages of the top row: ; middle row: ; bottom row: , respectively.