基于ISODATA和K-means聚类的SAGA GIS植被制图对Landsat TM土地覆盖类型的评价

Polina Lemenkova
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引用次数: 2

摘要

利用SAGA GIS的两种无监督分类方法:ISODATA和K-means聚类,对Landsat TM影像进行制图处理。在土地覆盖类型制图中对这些方法进行了测试和比较。在冰岛西南部研究区对植被区进行了检测,并与其他土地覆盖类型进行了分离。集群的数量设置为10个类。利用SAGA GIS Geoprocessing菜单中的图像分类工具,实现了SAGA GIS卫星图像的处理。利用GIS中的机器学习,对未标记的土地覆盖类型像素进行了有效的无监督分类。采用迭代聚类方法,在算法的每一步对像素进行分组,并将聚类重新分配为质心。本文通过展示SAGA GIS在遥感数据处理中应用于植被和环境制图的有效性,为机器学习在地图学中应用的技术发展做出了贡献。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Evaluating land cover types from Landsat TM using SAGA GIS for vegetation mapping based on ISODATA and K-means clustering
The paper presents the cartographic processing of the Landsat TM image by the two unsupervised classification methods of SAGA GIS: ISODATA and K-means clustering. The approaches were tested and compared for land cover type mapping. Vegetation areas were detected and separated from other land cover types in the study area of southwestern Iceland. The number of clusters was set to ten classes. The processing of the satellite image by SAGA GIS was achieved using Imagery Classification tools in the Geoprocessing menu of SAGA GIS. Unsupervised classification performed effectively in the unlabeled pixels for the land cover types using machine learning in GIS. Following an iterative approach of clustering, the pixels were grouped in each step of the algorithm and the clusters were reassigned as centroids. The paper contributes to the technical development of the application of machine learning in cartography by demonstrating the effectiveness of SAGA GIS in remote sensing data processing applied for vegetation and environmental mapping.
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