Performance of fuzzy based clustering algorithms for the segmentation of satellite images — A comparative study

Ganesan P, K. Palanivel, B. Sathish, V. Kalist, K. Basha, Shaik
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引用次数: 14

Abstract

Segmentation is the process of partitioning or classifying an image into some meaningful classes or clusters or segments. The segmentation process based on any one characteristics of the image such as texture, color or intensity. The images received from the satellite contains huge amount of information to process and analyze. It is possible to extract the or identify the object or regions of interest in the image from the segmentation results. The segmentation process is very useful to the subsequent image analysis. Many approaches have been proposed for the segmentation of satellite images, but fuzzy based approaches are most popular and widely used because they have a good performance in a large class of images. In this paper, the fuzzy based clustering approaches Fuzzy-C-Means (FCM) Clustering, Possibilistic C Means (PCM) and Possibilistic Fuzzy C Means (PFCM) are compared and the performance of these algorithms were tested with number of satellite images.
基于模糊聚类算法的卫星图像分割性能比较研究
分割是将图像划分或分类成一些有意义的类或簇或段的过程。基于图像的任何一种特征(如纹理、颜色或强度)的分割过程。从卫星接收到的图像包含大量需要处理和分析的信息。从分割结果中提取或识别图像中感兴趣的对象或区域是可能的。该分割过程对后续的图像分析非常有用。对于卫星图像的分割,已经提出了许多方法,但基于模糊的方法是最受欢迎和广泛使用的方法,因为它在大类别的图像中具有良好的性能。本文比较了基于模糊的聚类方法fuzzy -C-Means (FCM)聚类、possibility C Means (PCM)聚类和possibility fuzzy C Means (PFCM)聚类,并用大量卫星图像对这些算法的性能进行了测试。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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