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[JT14] Hybridation of genetic algorithms and tabu search for reconstructing convex binary images from discrete orthogonal projections

Revue Internationale avec comité de lecture : Journal International Journal of Metaheuristics, vol. 3(4), pp. 291-319, 2014

Mots clés: HV-convex discrete tomography; Convex binary image; Genetic algorithm; Tabu search algorithm; Network flow model.

Résumé: In this paper, we consider a variant of the NP-Complete problem of reconstructing hv-convex binary images from two orthogonal projections, noted by RCBI(H; V ). This variant is reformulated as a new integer programming problem. Since this problem is NP-complete, a new hybrid optimization algorithm combining the techniques of genetic algorithms and tabu search methods, noted by GATS is proposed to find an optimal or an approximate solution for RCBI(H; V ) problem. GATS starts from a set of solutions called 'population' initialized by using an extension of the network flow model, incorporating a cost function. Two operators, namely crossover and mutation are used to explore the search space, then the quality of each individual in the population is improved by using another local search method named Tabu Search operator. In this paper we describe the proposed algorithm, then we evaluate and compare its performance with other optimization techniques. The analysis of the experimental results shows the advantages of our GATS approach in terms of reconstruction quality and computational time.

Equipe: oc

BibTeX

@article {
JT14,
title="{Hybridation of genetic algorithms and tabu search for reconstructing convex binary images from discrete orthogonal projections}",
author="F. Jarray and G. Tlig",
journal="International Journal of Metaheuristics",
year=2014,
volume=3,
number=4,
pages="291-319",
}