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首页> 外文期刊>Geocarto international >Land-use and vegetation-cover mapping of an indigenous land area in the state of Mato Grosso (Brazil) based on spectral linear mixing model, segmentation and region classification
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Land-use and vegetation-cover mapping of an indigenous land area in the state of Mato Grosso (Brazil) based on spectral linear mixing model, segmentation and region classification

机译:基于光谱线性混合模型,分割和区域分类的马托格罗索州(巴西)的一个土著土地区的土地利用和植被覆盖图

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摘要

A spectral linear-mixing model using Landsat ETM+ imagery was undertaken to estimate fraction images of green vegetation, soil and shade in an indigenous land area in the state of Mato Grosso in the central-western region of Brazil. The fraction images were used to classify different types of land use and vegetation cover. The fraction images were classified by the following two methods: (a) application of a segmentation based on the region-growing technique; and (b) grouping of the regions segmented using the per-region unsupervised classifier named ISOSEG. Adopting a 75% threshold, ISOSEG generated 44 clusters that were grouped into eight land-use and vegetation-cover classes. The mapping achieved an average accuracy of 83%, showing that the methodology is efficient in mapping areas of great land-use and vegetation-cover diversity, such as that found in the Brazilian cerrado (savanna).
机译:进行了使用Landsat ETM +图像的光谱线性混合模型,以估计巴西中西部马托格罗索州土著土地上绿色植被,土壤和阴影的分数图像。分数图像用于分类不同类型的土地利用和植被覆盖。分数图像通过以下两种方法进行分类:(a)基于区域增长技术的分割应用; (b)使用名为ISOSEG的按区域无监督分类器对分割的区域进行分组。通过采用75%的阈值,ISOSEG生成了44个集群,分为八个土地利用和植被覆盖类别。该制图的平均准确度达到83%,这表明该方法可有效绘制土地用途广泛和植被覆盖多样的区域,例如在巴西的cerrado(savanna)中发现的区域。

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