首页> 外文期刊>Remote Sensing of Environment: An Interdisciplinary Journal >Mapping vegetation in a heterogeneous mountain rangeland using landsat data: an alternative method to define and classify land-cover units
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Mapping vegetation in a heterogeneous mountain rangeland using landsat data: an alternative method to define and classify land-cover units

机译:使用Landsat数据绘制异质山脉草原上的植被图:定义和分类土地覆盖单位的另一种方法

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Three major problems are faced when mapping natural vegetation with mid-resolution satellite images using conventional supervised classification techniques: defining the adequate hierarchical level for mapping; defining discrete land cover units discernible by the satellite; and selecting representative training sites. In order to solve these problems, we developed an approach based on the: (1) definition of ecologically meaningful units as mosaics or repetitive combinations of structural types, (2) utilization of spectral information (indirectly) to define the units, (3) exploration of two alternative methods to classify the units once they are defined: the traditional, Maximum Likelihood method, which was enhanced by analyzing objective ways of selecting the best training sites, and an alternative method using Discriminant Functions directly obtained from the statistical analysis of signatures. The study was carried out in a heterogeneous mountain rangeland in central Argentina using Landsat data and 251 field sampling sites. On the basis of our analysis combining terrain information (a matrix of 251 stands x 14 land cover attributes) and satellite data (a matrix of 251 stands x 8 bands), we defined 8 land cover units (mosaics of structural types) for mapping, emphasizing the structural types which had stronger effects on reflectance. The comparison through field validation of both methods for mapping units showed that classification based on Discriminant Functions produced better results than the traditional Maximum Likelihood method (accuracy of 86% vs. 78%).
机译:使用常规的监督分类技术在中分辨率卫星图像上绘制自然植被时面临三个主要问题。定义卫星可识别的离散土地覆盖单位;并选择有代表性的培训地点。为了解决这些问题,我们基于以下方法开发了一种方法:(1)将具有生态意义的单位定义为镶嵌或结构类型的重复组合;(2)利用光谱信息(间接)定义单位;(3)探索定义单位后对它们进行分类的两种替代方法:传统的最大似然方法,该方法通过分析选择最佳训练地点的客观方法得到了增强;以及一种直接使用特征统计分析获得的判别函数的替代方法。这项研究是使用Landsat数据和251个野外采样地点在阿根廷中部的一个异质山脉牧场上进行的。在我们结合地形信息(251个林分的矩阵x 14个土地覆盖属性的矩阵)和卫星数据(251个林分的矩阵x 8个波段的矩阵)进行分析的基础上,我们定义了8个土地覆被单位(结构类型的镶嵌图)进行制图,强调对反射率影响更大的结构类型。两种制图方法的现场验证比较表明,基于判别函数的分类比传统的最大似然法产生了更好的结果(准确性为86%对78%)。

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