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A segmentation approach for tissue images using non-dominated sorting GA

机译:使用非主导分类GA的组织图像的分割方法

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Medical images are usually used for assisting the doctors to make decisions or diagnoses, the segments are commonly corresponded to different tissue classes, pathologies, and other biologically relevant structures, thus it is very important in the medical diagnose. This paper uses adipose tissue images for example to show the feasibility of the proposed non-dominated sorting Genetic Algorithm (NSGA) model for segmentation. NSGA-based segmentation approach is capable of find the best solution which is close to the Pareto frontier based on the hierarchical structure of population. The experiments show the outperformance of the proposed model over NSGA and sorting Genetic Algorithm (SGA) approaches. The outperformance of the proposed model may attributed to the adaptive determination of the parameters for working out the sharing function which gives the positive impacts on the algorithms.
机译:医学图像通常用于协助医生做出决策或诊断,段通常对应于不同的组织类,病理和其他生物相关结构,因此在医学诊断中非常重要。本文使用脂肪组织图像,例如显示用于分割的提出的非主导分类遗传算法(NSGA)模型的可行性。基于NSGA的分割方法能够找到基于群体分层结构的靠近帕累托前沿的最佳解决方案。该实验表明,所提出的模型对NSGA和分类遗传算法(SGA)方法的表现。所提出的模型的优惠可以归因于用于解决分享功能的分配参数的自适应确定,这给出了对算法的积极影响。

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