One of the key factors for the success of recent energy
minimization methods is that they seek to compute global
solutions. Even for non-convex energy functionals, optimization
methods such as graph cuts have proven to produce
high-quality solutions by iterative minimization based on
large neighborhoods, making them less vulnerable to local
minima. Our approach takes this a step further by enlarging
the search neighborhood with one dimension.
In this paper we consider binary total variation problems
that depend on an additional set of parameters. Examples
include:
(i) the Chan-Vese model that we solve globally
(ii) ratio and constrained minimization which can be formulated
as parametric problems, and
(iii) variants of the Mumford-Shah functional.
Our approach is based on a recent theorem of Chambolle
which states that solving a one-parameter family of binary
problems amounts to solving a single convex variational
problem. We prove a generalization of this result and s...
Petter Strandmark, Fredrik Kahl, Niels Chr. Overga