Sparse image reconstruction is of interest in the fields of radioastronomy and molecular imaging. The observation is assumed to be a linear transformation of the image, and corrupted by additive white Gaussian noise. We study the usage of sparse priors in the empirical Bayes framework: it permits the selection of the hyperparameters of the prior in a data-driven fashion. Three sparse image reconstruction methods are proposed. A simulation study was performed using a binary-valued image and a Gaussian point spread function. In the range of signal to noise ratios considered, the proposed methods had better performance than sparse Bayesian learning (SBL).
Xuemei DongXiyuan HuSilong PengDuo-Chao Wang
Tai‐Jiang MuHaoxiang ChenJun-Xiong CaiNing Guo
Kevin RajChristopher WewerRaza YunusEddy IlgJan Eric Lenssen
Umamahesh SrinivasYuanming SuoMinh N. DaoVishal MongaTrac D. Tran
Umamahesh SrinivasYuanming SuoMinh N. DaoVishal MongaTrac D. Tran