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A Review on Various Clustering Approaches for Image Segmentation

机译:图像分割的各种聚类方法综述

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In computer vision the image segmentation plays an important aspect. The main objective of segmentation is to obtain consequential objects in the image. Clustering is a prevailing technique that is used in the segmentation of images. In this work, a survey on image segmentation using different clustering methods is conferred. The cluster analysis involves partitioning the image data set to numeral disarticulate clusters. The clustering is a popular exploratory pattern grouping method for image analysis which subdivides the input space into regions. The methods of clustering include the FCM-fuzzy C-Mean, the IFCM-improved fuzzy C-mean algorithm, K mean, and the improved K-mean are some of the efficient techniques for image segmentation. Because of its ease and computational effectiveness, the solitary accepted method is the clustering. On the other hand, in the improved K means, the number of iterations will be compact when compared with conventional K means. Due to the unreliable degrees of membership, the fuzzy C mean algorithm has added extensibility meant for the pixels belonging to various classes. The time consumption is the intricacy with the predictable FCM which can prevail over by the improved FCM. In this survey, various clustering-based image segmentation methods are discussed based on various application areas.
机译:在计算机视觉中,图像分割起着重要的作用。分割的主要目的是获得图像中的相应对象。聚类是在图像分割中使用的流行技术。在这项工作中,对使用不同聚类方法的图像分割进行了调查。聚类分析涉及将图像数据集划分为数字不规则聚类。聚类是一种流行的用于图像分析的探索性模式分组方法,可将输入空间细分为多个区域。聚类的方法包括FCM模糊C均值,IFCM改进的模糊C均值算法,K均值和改进的K均值是一些有效的图像分割技术。由于其简便性和计算效率,孤立接受的方法是聚类。另一方面,在改进的K均值中,与常规的K均值相比,迭代次数将紧凑。由于隶属度不可靠,模糊C均值算法增加了可扩展性,适用于属于各种类别的像素。时间消耗是可预测的FCM的复杂性,可以通过改进的FCM来取代。在这项调查中,讨论了基于各种应用领域的各种基于聚类的图像分割方法。

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