In this paper, we propose novel algorithms for inferring the Maximum a Posteriori (MAP) solution of discrete pairwise random field models under multiple constraints. We show how this constrained discrete optimization problem can be formulated as a multi-dimensional parametric mincut problem via its La-grangian dual, and prove that our algorithm isolates all constraint instances for which the problem can be solved exactly. These multiple solutions enable us to even deal with ‘soft constraints ’ (higher order penalty functions). Moreover, we propose two practical variants of our algorithm to solve problems with hard constraints. We also show how our method can be applied to solve various constrained discrete optimization problems such as subm...
The problem of obtaining the maximum a posteriori estimate of a general discrete random field (i.e. ...
International audienceContinuous relaxations are central to map inference in discrete Markov random ...
International audienceContinuous relaxations are central to map inference in discrete Markov random ...
Energy minimization algorithms, such as graph cuts, enable the computation of the MAP solution under...
We consider the energy minimization problem for undirected graphical models, also known as MAP-infer...
Solving constrained combinatorial optimisation problems via MAP inference is often achieved by intro...
We propose a cutting-plane style algorithm for finding the maximum a posteriori (MAP) state and appr...
Solving constrained combinatorial optimization problems via MAP inference is often achieved by intro...
We consider the energy minimization problem for undi-rected graphical models, also known as MAP-infe...
We consider the energy minimization problem for undi-rected graphical models, also known as MAP-infe...
Abstract—In this work we present a unified view on Markov random fields and recently proposed contin...
In this thesis, we give a new class of outer bounds on the marginal polytope, and propose a cutting-...
We consider energy minimization for undirected graphical models, also known as the MAP-inference pro...
We consider energy minimization for undirected graphical models, also known as the MAP-inference pro...
International audienceContinuous relaxations are central to map inference in discrete Markov random ...
The problem of obtaining the maximum a posteriori estimate of a general discrete random field (i.e. ...
International audienceContinuous relaxations are central to map inference in discrete Markov random ...
International audienceContinuous relaxations are central to map inference in discrete Markov random ...
Energy minimization algorithms, such as graph cuts, enable the computation of the MAP solution under...
We consider the energy minimization problem for undirected graphical models, also known as MAP-infer...
Solving constrained combinatorial optimisation problems via MAP inference is often achieved by intro...
We propose a cutting-plane style algorithm for finding the maximum a posteriori (MAP) state and appr...
Solving constrained combinatorial optimization problems via MAP inference is often achieved by intro...
We consider the energy minimization problem for undi-rected graphical models, also known as MAP-infe...
We consider the energy minimization problem for undi-rected graphical models, also known as MAP-infe...
Abstract—In this work we present a unified view on Markov random fields and recently proposed contin...
In this thesis, we give a new class of outer bounds on the marginal polytope, and propose a cutting-...
We consider energy minimization for undirected graphical models, also known as the MAP-inference pro...
We consider energy minimization for undirected graphical models, also known as the MAP-inference pro...
International audienceContinuous relaxations are central to map inference in discrete Markov random ...
The problem of obtaining the maximum a posteriori estimate of a general discrete random field (i.e. ...
International audienceContinuous relaxations are central to map inference in discrete Markov random ...
International audienceContinuous relaxations are central to map inference in discrete Markov random ...