This paper proposes a randomized optimization framework for constrained
signal reconstruction, where the word "constrained" implies that data-fidelity
is imposed as a hard constraint instead of adding a data-fidelity term to an
objective function to be minimized. Such formulation facilitates the selection
of regularization terms and hyperparameters, but due to the non-separability of
the data-fidelity constraint, it does not suit block-coordinate-wise
randomization as is. To resolve this, we give another expression of the
data-fidelity constraint via epigraphs, which enables to design a randomized
solver based on a stochastic proximal algorithm with randomized epigraphical
projection. Our method is very efficient especially when the problem involves
non-structured large matrices. We apply our method to CT image reconstruction,
where the advantage of our method over the deterministic counterpart is
demonstrated.Comment: To be presented at ICASSP 201