Hybrid methods of particle swarm optimization and spatial credibilistic clustering with a clustering factor for image segmentation

P. Wen, D. Zhou, M. Wu, S. Yi
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引用次数: 4

Abstract

Hybrid methods of fuzzy clustering and particle swarm optimization (PSO) are important techniques for image segmentation. The spatial credibilistic clustering (SCC) shows better performance than traditional fuzzy clustering, because of the “typicality” represented by credibility memberships degree is much more accurate than the “sharing” represented by probability membership degree to characterize the relationships between pixels and classes of images. Current integrated patterns of fuzzy clustering and PSO haven't made full use of both advantages. Therefore, main integrated forms were investigated and uniformly modeled by taking SCC as example, then a new kind of integrated pattern and algorithm was put forth, which integrates evaluation functions and update equations by introducing a clustering factor. Segmentation experiments validate that the method has better performance on running time and segmentation quality. The presented integrated pattern can be generalized to other hybrid methods of fuzzy clustering and PSO.
基于聚类因子的粒子群优化与空间可信聚类的混合图像分割方法
模糊聚类和粒子群优化(PSO)混合方法是图像分割的重要方法。空间可信度聚类(SCC)比传统的模糊聚类表现出更好的性能,因为以可信度隶属度为代表的“典型性”比以概率隶属度为代表的“共享性”更准确地表征图像像素与类别之间的关系。现有的模糊聚类和粒子群算法的集成模式没有充分发挥两者的优势。为此,以SCC为例,对主要集成形式进行了研究,并进行了统一建模,提出了一种新的集成模式和算法,通过引入聚类因子将评价函数和更新方程集成在一起。分割实验表明,该方法在运行时间和分割质量上都有较好的性能。所提出的综合模式可以推广到其他模糊聚类和粒子群算法的混合模式中。
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