Minimisation of discrete energies defined over factors is an important problem in computer vision, and a vast number of MAP inference algorithms have been proposed. Different inference algorithms perform better on factor graph models (GMs) from different underlying problem classes, and in general it is difficult to know which algorithm will yield the lowest energy for a given GM. To mitigate this difficulty, survey papers [1–3] advise the practitioner on what algorithms perform well on what classes of models. We take the next step forward, and present a technique to automatically select the best inference algorithm for an input GM. We validate our method experimentally on an extended version of the OpenGM2 benchmark [3], containing a divers...
International audienceComputational visual perception seeks to reproduce human visionthrough the com...
Energy minimization algorithms, such as graph cuts, enable the computation of the MAP solution under...
Discrete graphical models (also known as discrete Mar-kov random fields) are a major conceptual tool...
International audienceEven years ago, Szeliski et al. published an influential study on energy minim...
International audienceSzeliski et al. published an influential study in 2006 on energy minimization ...
Szeliski et al. published an influential study in 2006 on energy minimization methods for Markov Ran...
We propose a general and versatile framework that significantly speeds-up graph-ical model optimizat...
Many problems in computer vision can be modeled using conditional Markov random fields (CRF). Since ...
Among the most exciting advances in early vision has been the development of efficient energy minimi...
Among the most exciting advances in early vision has been the development of efficient energy minimi...
Computational visual perception seeks to reproduce human vision through the combination of visual se...
We consider the problem of inference in a graphical model with binary variables. While in theory it ...
Many computer vision problems can be formulated as graph partition problems that minimize energy fun...
We consider energy minimization for undirected graphical models, also known as the MAP-inference pro...
International audienceComputational visual perception seeks to reproduce human visionthrough the com...
Energy minimization algorithms, such as graph cuts, enable the computation of the MAP solution under...
Discrete graphical models (also known as discrete Mar-kov random fields) are a major conceptual tool...
International audienceEven years ago, Szeliski et al. published an influential study on energy minim...
International audienceSzeliski et al. published an influential study in 2006 on energy minimization ...
Szeliski et al. published an influential study in 2006 on energy minimization methods for Markov Ran...
We propose a general and versatile framework that significantly speeds-up graph-ical model optimizat...
Many problems in computer vision can be modeled using conditional Markov random fields (CRF). Since ...
Among the most exciting advances in early vision has been the development of efficient energy minimi...
Among the most exciting advances in early vision has been the development of efficient energy minimi...
Computational visual perception seeks to reproduce human vision through the combination of visual se...
We consider the problem of inference in a graphical model with binary variables. While in theory it ...
Many computer vision problems can be formulated as graph partition problems that minimize energy fun...
We consider energy minimization for undirected graphical models, also known as the MAP-inference pro...
International audienceComputational visual perception seeks to reproduce human visionthrough the com...
Energy minimization algorithms, such as graph cuts, enable the computation of the MAP solution under...
Discrete graphical models (also known as discrete Mar-kov random fields) are a major conceptual tool...