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Self-Organizing Feature Map and K-Means Algorithm with Automatically Splitting and Merging Clusters based Image Segmentation

机译:基于图像分割的自动分类聚类自组织特征图和K-Means算法

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Image segmentation plays the significant roles in image processing, computer vision and as well as in pattern recognition. The Segmentation process subdivides an image into its constituent parts or objects, such that level of subdivision depends on the problem to be solved. The aim of image segmentation is partitioning an image within homogeneous regions that are significantly meaningful concerning some characteristics like intensity or texture. Based on clustering, a large number of researches have been done in the area of image segmentation. This paper presents an efficient image segmentation method in which the self organizing feature map (SOFM) is used for initial segmentation. After the initial segmentation, the segmented image is used by the K-means algorithm for further segmentation. Finally, the procedures for automatic splitting and merging the cluster are applied to obtain the appropriate number of segments in segmented image and as well as better segmented results. For analyzing the performance, we calculate the statistical measure named as Davies-Bouldin index (DB-index). The observation shows that, this method gives the better segmented results compared with K-Means algorithm, linear discriminant analysis (LDA) and K-Means based image segmentation method and also SOFM and K-Means based image segmentation approach.
机译:图像分割在图像处理,计算机视觉以及模式识别中起着重要作用。分割过程将图像细分为其组成部分或对象,以便细分级别取决于要解决的问题。图像分割的目的是在均匀的区域内分割图像,这些区域对于某些特性(例如强度或纹理)非常有意义。基于聚类,已经在图像分割领域进行了大量研究。本文提出了一种有效的图像分割方法,其中将自组织特征图(SOFM)用于初始分割。初始分割后,K-means算法将分割后的图像用于进一步的分割。最后,使用自动拆分和合并群集的过程来获取分割图像中适当数量的分割,以及更好的分割结果。为了分析性能,我们计算了称为Davies-Bouldin指数(DB-index)的统计量度。观察结果表明,与K-Means算法,线性判别分析(LDA)和基于K-Means的图像分割方法以及基于SOFM和K-Means的图像分割方法相比,该方法具有更好的分割效果。

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