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Elitist Reconstruction Genetic Algorithm Based on Markov Random Field for Magnetic Resonance Image Segmentation
Authors:Xin-Yu Du  Yong-Jie Li  Cheng Luo  De-Zhong Yao
Institution:The School of Life Science and Technology,University of Electronic Science and Technology of China,Chengdu 610054,China
Abstract:In this paper,elitist reconstruction genetic algorithm(ERGA) based on Markov random field(MRF) is introduced for image segmentation.In this algorithm,a population of possible solutions is maintained at every generation,and for each solution a fitness value is calculated according to a fitness function,which is constructed based on the MRF potential function according to Metropolis function and Bayesian framework.After the improved selection,crossover and mutation,an elitist individual is restructured based on the strategy of restructuring elitist.This procedure is processed to select the location that denotes the largest MRF potential function value in the same location of all individuals.The algorithm is stopped when the change of fitness functions between two sequent generations is less than a specified value.Experiments show that the performance of the hybrid algorithm is better than that of some traditional algorithms.
Keywords:Elitist reconstruction  geneticalgorithm  image segmentation  Markov random field
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