DocumentCode :
3802362
Title :
A Linear Programming Approach to Max-Sum Problem: A Review
Author :
Tomas Werner
Author_Institution :
IEEE Computer Society
Volume :
29
Issue :
7
fYear :
2007
Abstract :
The max-sum labeling problem, defined as maximizing a sum of binary (i.e., pairwise) functions of discrete variables, is a general NP-hard optimization problem with many applications, such as computing the MAP configuration of a Markov random field. We review a not widely known approach to the problem, developed by Ukrainian researchers Schlesinger et al. in 1976, and show how it contributes to recent results, most importantly, those on the convex combination of trees and tree-reweighted max-product. In particular, we review Schlesinger et al.´s upper bound on the max-sum criterion, its minimization by equivalent transformations, its relation to the constraint satisfaction problem, the fact that this minimization is dual to a linear programming relaxation of the original problem, and the three kinds of consistency necessary for optimality of the upper bound. We revisit problems with Boolean variables and supermodular problems. We describe two algorithms for decreasing the upper bound. We present an example application for structural image analysis.
Keywords :
"Linear programming","Upper bound","Image analysis","Labeling","Markov random fields","Pattern recognition","Noise generators","Testing","Books","Computer Society"
Journal_Title :
IEEE Transactions on Pattern Analysis and Machine Intelligence
Publisher :
ieee
ISSN :
0162-8828
Type :
jour
DOI :
10.1109/TPAMI.2007.1036
Filename :
4204160
Link To Document :
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