PSO-based procedure to find number of clusters and better initial centroids for K-means algorithm: Image segmentation as case study

M. Zarei, A. Nickfarjam
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Abstract

In this paper, we propose a combination of K-means algorithm and Particle Swarm Optimization (PSO) method. The K-means algorithm is utilized for data clustering. On one hand, the number of clusters (K) should be determined by expert or found by try-and-error procedure in the K-means algorithm. On the other hand, initial centroids and number of clusters (K) are influenced on the quality of resulted grouping. Therefore, the aim of the proposed procedure is using PSO and the Structural Similarity Index (SSIM) criterion as a fitness function in order to find the best value for K parameter and better initial clusters' center. Due to different value of K parameter, the number of initial centroids which should be produced is variant. Thus, length of particles in PSO method may be different in each iteration. Experimental results show the superiority of this approach in comparison with standard K-means algorithm and both of them are evaluated on image segmentation problem.
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基于pso的K-means算法聚类数量和初始质心的确定方法:以图像分割为例
本文提出了一种结合K-means算法和粒子群优化(Particle Swarm Optimization, PSO)的算法。采用K-means算法进行数据聚类。一方面,聚类的数量(K)应由专家确定或通过K-means算法中的试错过程找到。另一方面,初始质心和簇数(K)会影响结果分组的质量。因此,该方法的目的是使用PSO和结构相似指数(SSIM)准则作为适应度函数,以找到K参数的最佳值和更好的初始聚类中心。由于K参数的取值不同,需要产生的初始质心个数也不同。因此,粒子群算法的粒子长度在每次迭代中可能是不同的。实验结果表明,该方法与标准K-means算法相比具有优越性,并对两种方法在图像分割问题上进行了评价。
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