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An un-supervised image segmentation technique based on multi-objective Gravitational search algorithm (MOGSA)

机译:基于多目标引力搜索算法(MOGSA)的无监督图像分割技术

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摘要

Image segmentation is most important and crucial task in high level image processing. Image segmentation is essentially a multi-objective optimization problem. In this paper an unsupervised image segmentation method is proposed that is based on a nature inspired clustering approach, Multi-objective Gravitational Search algorithm (MOGSA). A variable agent representation is used to encode the cluster centers with different number of clusters. A new fitness function based on multi-objective optimization is proposed to make the search more efficient and faster. Total number of clusters and cluster centers evolves automatically in proposed algorithm. The proposed algorithm considers two objectives, minimize intra-cluster distance, and maximize inter-cluster distance. The proposed method has been applied on standard images and compares the results with K-means clustering, Fuzzy C-Means (FCM) clustering and single objective Gravitational Search Algorithm (GSA). Experimental results showed that Multi-objective Gravitational Search algorithm (MOGSA) perform better than K-means, fuzzy c-means and single objective Gravitational Search Algorithm (GSA).
机译:图像分割是高级图像处理中最重要和至关重要的任务。图像分割本质上是一个多目标优化问题。本文提出了一种基于自然启发聚类方法的无监督图像分割方法,即多目标引力搜索算法(MOGSA)。可变代理表示用于编码具有不同数量集群的集群中心。提出了一种基于多目标优化的新适应度函数,以使搜索更加高效,快捷。聚类和聚类中心的总数在提出的算法中自动变化。所提出的算法考虑了两个目标,即最小化集群内距离和最大化集群间距离。该方法已应用于标准图像,并与K-均值聚类,模糊C-均值(FCM)聚类和单目标引力搜索算法(GSA)进行了比较。实验结果表明,多目标引力搜索算法(MOGSA)的性能优于K均值,模糊c均值和单目标引力搜索算法(GSA)。

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