An Implementation of K-Means Clustering for Efficient Image Segmentation

K. Venkatachalam, V. P. Reddy, M. Amudhan, A. Raguraman, E. Mohan
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引用次数: 7

Abstract

This article narrate an adaptive K-means image segmentation technique, which provoke meticulous results with ease process and evade the bilateral input of K value. The image segmentation is the technique of identifying and categorizing the corresponding pixels in the appropriate image. There are enormous types are applicable to identify the corresponding pixels in the image. Here, the K-Means method is proposed for segmentation to examine the distinct image objects. Initially, the samples are transformed into Gray scale images. The Gray images are refined by K-Means clustering to get segmented image output. The K-Means based on the categorization of identical pixels and the appropriation of the mid pixels. By repetitious the identical action many times, then the output segmented image will have exceptional object prejudice. The K-Means clustering will provide good results. The prejudice objects is solely established on the interrelation of pixels feasible in the image. After refining, the image reshaping also done for better stimulation of the segmented image.
一种基于k均值聚类的高效图像分割方法
本文叙述了一种自适应K均值图像分割技术,该技术可以避免K值的双边输入,且过程简单,结果细致。图像分割是在适当的图像中识别和分类相应像素的技术。有许多类型可用于识别图像中相应的像素。在这里,我们提出了K-Means方法进行分割,以检查不同的图像对象。首先,将样本转换成灰度图像。通过k均值聚类对灰度图像进行细化,得到分割后的图像输出。基于相同像素的分类和中间像素的占用的K-Means。通过多次重复相同的动作,输出的分割图像会产生异常的对象偏见。K-Means聚类会提供很好的结果。偏见对象完全建立在图像中可行像素的相互关系上。在细化之后,还对图像进行了整形,以便对分割后的图像进行更好的刺激。
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