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Research on image technology with application of k-Means based on genetic simulated annealing algorithm in CT image segmentation

机译:基于遗传模拟退火算法在CT图像分割中的k型k型k-meric的应用技术研究

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Aiming at the characteristic of medical images, this paper presents the improved genetic simulated annealing algorithm with K-means clustering analysis and applies in medical CT image segmentation. This improved genetic simulated annealing algorithm can be used to globally optimize k-means image segmentation functions to solve the locality and the sensitiveness of the initial condition. It can automatically adjust the parameters of genetic algorithm according to the fitness values of individuals and the decentralizing degree of individuals of the population and keep the variety of population for rapidly converging, and it can effectively avoid appearing precocity and plunging into local optimum. The example shows that the method is feasible, and better segmentation results have got to satisfy the request for 3D reconstruction, compared with k-means image segmentation and genetic algorithm based image segmentation.
机译:针对医学图像的特征,本文介绍了具有K-Means聚类分析的改进的遗传模拟退火算法,应用于医疗CT图像分割。这种改进的遗传模拟退火算法可用于全局优化K-Mease图像分割功能以解决初始条件的局部性和敏感性。它可以根据个人的健身值和分散程度自动调整遗传算法的参数,并使各种人口保持迅速融合,并且可以有效地避免出现精英和急剧进入局部最佳。该示例表明该方法是可行的,与基于K-Meader图像分割和基于遗传算法的图像分割相比,该方法必须满足3D重建的请求。

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