首页> 外文期刊>Remote Sensing of Environment: An Interdisciplinary Journal >Cover- and density-based vegetation classifications of the Sonoran Desert using Landsat TM and ERS-1 SAR imagery
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Cover- and density-based vegetation classifications of the Sonoran Desert using Landsat TM and ERS-1 SAR imagery

机译:利用Landsat TM和ERS-1 SAR影像对索诺兰沙漠基于覆盖度和密度的植被分类

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Arid lands are distinctive ecological zones that require vegetation maps for management and monitoring. The use of remote sensing for mapping desert vegetation is made difficult by the mixing of reflectance spectra of bright desert soils with the relatively weak spectral response of sparse vegetation. To investigate ways to improve desert vegetation mapping, a comparison of the effect of supervised classification using two contrasting measures of field vegetation data as reference data was performed. We took cover- and density-based field vegetation data that had been collected by the US Army on the US Yuma Proving Ground (US YPG) in southwest Arizona, converted them into cover- and density-based reference classification schemes and used them to train both maximum likelihood (ML) and artificial neural net (ANN) classifiers. The impact on the accuracy of cover- and density-based vegetation maps were further analyzed using different combinations of input data (i.e., Landsat Thematic Mapper (TM) imagery, ERS-1 C-band synthetic aperture radar (SAR) imagery, and elevation data). In spite of the fact that a cover-based plot classification is the logical training data for remote sensing classification, both cover- and density-based classified maps had similar accuracies for each data combination. The use of all data combinations gave the highest map classification accuracies, with the radar data improving the accuracy the most where the vegetation is dense. Classification accuracies of maps using the ML classifier were generally higher than those using the ANN classifier. ANN map classification accuracies improved significantly when the sigmoid transfer function was replaced with the hyperbolic tangent transfer function. Using the two contrasting measures for mapping proved complementary: the cover-based map located areas of significant tree presence that were not mapped on the density-based map and the density-based map located areas of significant cacti presence that were not mapped on the cover-based map. Creating both cover- and density-based vegetation maps may therefore better assist and land management than creating only a cover-based vegetation map.
机译:干旱地区是独特的生态区,需要植被图进行管理和监测。由于明亮的沙漠土壤的反射光谱与稀疏植被的光谱响应相对较弱,因此难以使用遥感技术绘制沙漠植被图。为了研究改善沙漠植被测绘的方法,使用两种不同的野外植被数据作为参考数据对监督分类的效果进行了比较。我们采用了美国陆军在亚利桑那州西南部的美国尤马试验场(US YPG)上收集的基于覆盖度和密度的野外植被数据,将其转换为基于覆盖度和密度的参考分类方案,并用于训练最大似然(ML)和人工神经网络(ANN)分类器。使用输入数据的不同组合(即Landsat Thematic Mapper(TM)影像,ERS-1 C波段合成孔径雷达(SAR)影像和高程),进一步分析了对基于覆盖图和密度的植被图准确性的影响数据)。尽管基于封面的地块分类是用于遥感分类的逻辑训练数据,但是基于封面和密度的分类图对每种数据组合都具有相似的精度。所有数据组合的使用都提供了最高的地图分类精度,而雷达数据在植被茂密的地方最大程度地提高了准确性。使用ML分类器的地图分类精度通常高于使用ANN分类器的地图。当用双曲正切传递函数代替S形传递函数时,神经网络图分类的准确性显着提高。使用两种对比方法进行制图被证明是互补的:基于覆盖物的地图位于重要树存在的区域,而该区域未映射在基于密度的地图上;基于密度的地图位于重要的仙人掌存在区域,其未在覆盖率上进行映射基于地图。因此,与仅创建基于覆盖的植被图相比,创建基于覆盖和密度的植被图可能会更好地辅助土地管理。

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