In many numerical applications, for instance in image deconvolution, the nonnegativity of the computed solution is required. When a problem of deconvolution is formulated in a statistical frame, the recorded image is seen as the realization of a random process, where the nature of the noise is taken into account. This formulation leads to the maximization of a likelihood function which depends on the statistical property assumed for the noise. In this paper we revisit, under this unifying statistical approach, some iterative methods coupled with suitable strategies for enforcing nonnegativity and other ones which instead naturally embed nonnegativity. For all these methods we carry out a comparative study taking into account several performance indicators. The reconstruction efficiency, the computational cost, the consistency with the discrepancy principle (a common technique for guessing the best regularization parameter) and the sensitivity to this choice are compared in a simulated context, by means of an extensive experimentation on both 1D and 2D problems.
A A f fr ra am me ew wo or rk k f fo or r s st tu ud dy yi in ng g t th he e r re eg gu ul la ar ri iz zi in ng g p pr ro op pe er rt ti ie es s o of f K Kr ry yl lo ov v s su ub bs sp pa ac ce e m me et th ho od ds s P P.. B Br ri ia an nz zi i, , P P.. F Fa av va at ti i, , O O.. M Me en nc ch hi i, , F F.. R Ro om ma an ni i
scite is a Brooklyn-based organization that helps researchers better discover and understand research articles through Smart Citations–citations that display the context of the citation and describe whether the article provides supporting or contrasting evidence. scite is used by students and researchers from around the world and is funded in part by the National Science Foundation and the National Institute on Drug Abuse of the National Institutes of Health.