DocumentCode :
639444
Title :
Fast Energy Minimization Using Learned State Filters
Author :
Guillaumin, Matthieu ; Van Gool, Luc ; Ferrari, V.
fYear :
2013
fDate :
23-28 June 2013
Firstpage :
1682
Lastpage :
1689
Abstract :
Pairwise discrete energies defined over graphs are ubiquitous in computer vision. Many algorithms have been proposed to minimize such energies, often concentrating on sparse graph topologies or specialized classes of pairwise potentials. However, when the graph is fully connected and the pairwise potentials are arbitrary, the complexity of even approximate minimization algorithms such as TRW-S grows quadratically both in the number of nodes and in the number of states a node can take. Moreover, recent applications are using more and more computationally expensive pairwise potentials. These factors make it very hard to employ fully connected models. In this paper we propose a novel, generic algorithm to approximately minimize any discrete pairwise energy function. Our method exploits tractable sub-energies to filter the domain of the function. The parameters of the filter are learnt from instances of the same class of energies with good candidate solutions. Compared to existing methods, it efficiently handles fully connected graphs, with many states per node, and arbitrary pairwise potentials, which might be expensive to compute. We demonstrate experimentally on two applications that our algorithm is much more efficient than other generic minimization algorithms such as TRW-S, while returning essentially identical solutions.
Keywords :
approximation theory; computer vision; filtering theory; graph theory; minimisation; TRW-S; approximate minimization algorithms; arbitrary pairwise potentials; computer vision; discrete pairwise energy function; fast energy minimization; generic algorithm; graphs; learned state filters; pairwise discrete energies; sparse graph topologies; tractable subenergies; Approximation algorithms; Computational modeling; Inference algorithms; Labeling; Minimization; Semantics; Training;
fLanguage :
English
Publisher :
ieee
Conference_Titel :
Computer Vision and Pattern Recognition (CVPR), 2013 IEEE Conference on
Conference_Location :
Portland, OR
ISSN :
1063-6919
Type :
conf
DOI :
10.1109/CVPR.2013.220
Filename :
6619064
Link To Document :
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