Satellite Image Processing Using Fuzzy Logic and Modified K-Means Clustering Algorithm for Image Segmentation

Geerisha Jain
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Abstract

Satellite images are useful in providing a real time dynamic picture of the earth and its environment. The large assemblage of remote sensing satellites orbiting the earth provide an extensive and periodic coverage of the planet through the capture of live images round the clock, in turn enabling numerous uses for the benefit of mankind. In the field of satellite image processing, image segmentation is one of the vital steps for extracting and gathering huge amount of information from the satellite images. The basic k-means clustering algorithm is simple and fast in terms of dealing with the required segmentation, but the limitation associated with this clustering is its inability to produce the same result for every run, as the resulting clusters depends on the initial random assignments. In this paper, an enhanced modified k-means clustering algorithm is proposed for the effective segmentation of the satellite images with an objective to overcome the demerits of the traditional k-means by combining fuzzy logic with the membership function. The proposed methodology continuously produces the same result for each run. As an outcome, the experimental results proved that the enhanced k-means algorithm is an effective and more efficient process for the precise and accurate segmentation of satellite images. Index Terms : Image Segmentation, Satellite Imagery, Fuzzy logic, K-Means, Clustering.
基于模糊逻辑和改进k均值聚类算法的卫星图像分割
卫星图像在提供地球及其环境的实时动态图像方面是有用的。环绕地球运行的大量遥感卫星通过全天候捕捉实时图像,对地球进行广泛和定期的覆盖,从而为人类的利益提供了许多用途。在卫星图像处理领域中,图像分割是从卫星图像中提取和收集海量信息的关键步骤之一。基本的k-means聚类算法在处理所需的分割方面简单而快速,但与这种聚类相关的限制是它无法每次运行都产生相同的结果,因为最终的聚类取决于初始的随机分配。本文将模糊逻辑与隶属函数相结合,提出了一种改进的k-means聚类算法,以克服传统k-means算法的不足,对卫星图像进行有效分割。所提出的方法每次运行都连续产生相同的结果。实验结果表明,增强的k-means算法对于卫星图像的精确分割是一种有效且高效的方法。检索术语:图像分割,卫星图像,模糊逻辑,k -均值,聚类。
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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