Comparison of a genetic algorithm and simulated annealing in an application to statistical image reconstruction

被引:0
作者
LUISA FRANCONI
CHRISTOPHER JENNISON
机构
[1] Istat,School of Mathematical Sciences
[2] Servizio Studi Metodologici,undefined
[3] University of Bath,undefined
来源
Statistics and Computing | 1997年 / 7卷
关键词
Genetic algorithms; simulated annealing; MAP image estimation; crossover; hybrid algorithms;
D O I
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中图分类号
学科分类号
摘要
Genetic algorithms (GAs) are adaptive search techniques designed to find near-optimal solutions of large scale optimization problems with multiple local maxima. Standard versions of the GA are defined for objective functions which depend on a vector of binary variables. The problem of finding the maximum a posteriori (MAP) estimate of a binary image in Bayesian image analysis appears to be well suited to a GA as images have a natural binary representation and the posterior image probability is a multi-modal objective function. We use the numerical optimization problem posed in MAP image estimation as a test-bed on which to compare GAs with simulated annealing (SA), another all-purpose global optimization method. Our conclusions are that the GAs we have applied perform poorly, even after adaptation to this problem. This is somewhat unexpected, given the widespread claims of GAs' effectiveness, but it is in keeping with work by Jennison and Sheehan (1995) which suggests that GAs are not adept at handling problems involving a great many variables of roughly equal influence.
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页码:193 / 207
页数:14
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