一种基于模糊评价函数的遗传图像分割算法

Xiaoying Jin, C. Davis
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引用次数: 17

摘要

本文提出了一种基于遗传算法的图像分割方法,该方法对模糊集评价函数进行了优化。采用k均值聚类方法生成初始的精细分割图像,减小图像分割的搜索空间。然后采用遗传算法控制区域分割和合并,优化评价函数。遗传算法设计中评价函数的选择是影响分割效果的一个关键因素。这里定义了一个包含边缘和区域信息的评估函数。针对图像中边缘的模糊性,定义了一种新的基于模糊集的边缘-边界重合测度,并结合区域异质性测度指导遗传算法对分割进行调整。测试图像的实验结果表明,基于模糊集评价函数的遗传分割算法具有很好的分割效果。
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A genetic image segmentation algorithm with a fuzzy-based evaluation function
In this paper, a genetic-based image segmentation method is proposed which optimizes a fuzzy-set-based evaluation function. A K-Means clustering method is used to generate the initial finely segmented image and to reduce the search space of the image segmentation. A genetic algorithm is then employed to control region splitting and merging to optimize the evaluation function. A critical factor affecting the performance of the segmentation is the choice of the evaluation function in the design of genetic algorithm. Here an evaluation function is defined that incorporates both edge and region information. Considering the edge ambiguity in the image, a novel fuzzy-set-based edge-boundary-coincidence measure is defined and combined with a region heterogeneity measure to guide the genetic algorithm to tune the segmentation. Experimental results on test images show that the genetic segmentation algorithm with the fuzzy-set-based evaluation function performs very well.
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