Author/Authors :
Combettes، نويسنده , , P.L.، نويسنده ,
Abstract :
Solving a convex set theoretic image recovery problem
amounts to finding a point in the intersection of closed and
convex sets in a Hilbert space. The projection onto convex sets
(POCS) algorithm, in which an initial estimate is sequentially
projected onto the individual sets according to a periodic schedule,
has been the most prevalent tool to solve such problems.
Nonetheless, POCS has several shortcomings: It converges slowly,
it is ill suited for implementation on parallel processors, and it
requires the computation of exact projections at each iteration.
In this paper, we propose a general parallel projection method
(EMOPSP) that overcomes these shortcomings. At each iteration
of EMOPSP, a convex combination of subgradient projections
onto some of the sets is formed and the update is obtained via
relaxation. The relaxation parameter may vary over an iterationdependent,
extrapolated range that extends beyond the interval
]0,2] used in conventional projection methods. EMOPSP not
only generalizes existing projection-based schemes, but it also
converges very efficiently thanks to its extrapolated relaxations.
Theoretical convergence results are presented as well as numerical
simulations.