Fig. 1.
The proposed joint model based deep learning (J-MoDL) architecture and the training process. Each iteration consists of a CNN block and a data-consistency block . This architecture facilitates the decoupling of the image priors and the sampling pattern, thus allowing efficient optimization of the parameters Φ and Θ.