Advanced Image Segmentation Technique using Improved K Means Clustering Algorithm with Pixel Potential

Pranab Sharma
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Abstract

Image segmentation is the method of partitioning, or segmenting, different parts of the image in such a way that all segments are disjoint and each has similar elements. This process has wide applications in the field of medicine and photography industry. There are many ways in which image segmentation can be performed, from which K-Means clustering algorithm is well renowned due to its simplicity and effectiveness to perform the task. In this paper, an improved variant of K-Means Clustering algorithm is presented. The algorithm rests on applying partial contrast stretching, eliminating randomness in choosing the initial cluster centres for K-means algorithm, and removing the unwanted noise from median filters to obtain a high-quality image output.
基于像素势的改进K均值聚类算法的图像分割技术
图像分割是对图像的不同部分进行分割或分割的方法,所有的部分都是不相交的,每个部分都有相似的元素。该工艺在医药、摄影等行业有着广泛的应用。有许多方法可以执行图像分割,其中K-Means聚类算法因其执行任务的简单和有效而闻名。本文提出了一种改进的k -均值聚类算法。该算法依赖于应用部分对比度拉伸,消除K-means算法选择初始聚类中心时的随机性,并从中值滤波器中去除不必要的噪声以获得高质量的图像输出。
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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