基于自组织映射的图像聚类方法:SOM衍生密度图及其在Landsat专题制图器图像中的应用

K. Arai
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引用次数: 7

摘要

提出了一种基于自组织映射(SOM)的密度图的图像聚类方法,并对聚类构建过程中的学习过程进行了说明。利用遥感卫星衍生图像数据进行了仿真研究和实验。结果表明,本文提出的基于SOM的图像聚类方法对仿真和真实卫星图像数据均具有较好的聚类效果。研究还发现,该方法的聚类可分离性比现有的k-均值聚类长16%。研究还发现,该方法的聚类可分离性比现有的k-均值聚类长16%。根据Landsat-5 TM图像的实验结果,SOM学习过程的收敛需要超过20000次迭代。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Image Clustering Method Based on Self Organization Mapping: SOM Derived Density Maps and Its Application for Landsat Thematic Mapper Image
A new method for image clustering with density maps derived from Self-Organizing Maps (SOM) is proposed together with a clarification of learning processes during a construction of clusters. Simulation studies and the experiments with remote sensing satellite derived imagery data are conducted. It is found that the proposed SOM based image clustering method shows much better clustered result for both simulation and real satellite imagery data. It is also found that the separability among clusters of the proposed method is 16% longer than the existing k-mean clustering. It is also found that the separability among clusters of the proposed method is 16% longer than the existing k-mean clustering. In accordance with the experimental results with Landsat-5 TM image, it takes more than 20000 of iteration for convergence of the SOM learning processes.
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