基于自组织地图和集成分类器的卫星图像分类

N. Sowri Raja Pillai, R. Ranihemamalini, G. Agila, N. Pavithra
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引用次数: 5

摘要

卫星图像请求过程将采集图像像素方面分为重要的几类。一些卫星图像特征的战略和系统是可访问的。现有的卫星数据聚类采用k-媒质聚类技术,这种方法不能准确聚类所有的类。该方法采用自组织映射作为聚类技术。自组织映射基于相似性、拓扑和为每个类指定相同值的首选项对数据进行聚类。自组织映射聚类用于降低数据的维数并对数据进行聚类。这些都是由脊椎动物大脑中的触觉和引擎映射驱动的,它们似乎也因此以拓扑方式组织了数据。我们提出了一种基于子空间判别算法的集成聚类技术,将卫星数据分类为水、农业、荒地、绿地。与已有的方法相比,本文提出的自组织映射聚类和子空间判别集成分类器方法得到了最好的结果。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Satellite Image Classification Using Self Organizing Map And Ensemble Classifiers
Satellite picture request process incorporates gathering the image pixel regards into significant classes. A few satellite picture characterized strategies and systems are accessible. In existing k-medoid clustering technique is used for clustering the satellite data, with this method not able to cluster accurately all the classes. In our proposed method self-organizing map as a clustering technique is used. Self-organizing maps clustering the data based on similarity, topologies, with a preferences of appointing the same value to each classes. Self-organizing map clustering are used to reduces a dimensionality of data and to cluster the data. These are motivated by the tactile and engine mappings in the vertebrate cerebrum, which additionally appears to consequently organizing out data topologically. Our propose technique is Ensemble clustering with subspace discriminant algorithm for classification of satellite data into water, Agriculture, Barren land, Green Land. The proposed method of self-organising map clustering and ensemble classifier with subspace discriminant is given best result compared to existing ones.
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