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Extending a field-based Sonoran desert vegetation classification to a regional scale using optical and microwave satellite imagery.

机译:利用光学和微波卫星图像,将基于野外的Sonoran沙漠植被分类扩展到区域范围。

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Vegetation mapping in and regions facilitates ecological studies, land management, and provides a record to which future land changes can be compared. Accurate and representative mapping of desert vegetation requires a sound field sampling program and a methodology to transform the data collected into a representative classification system. Time and cost constraints require that a remote sensing approach be used if such a classification system is to be applied on a regional scale. However, desert vegetation may be sparse and thus difficult to sense at typical satellite resolutions, especially given the problem of soil reflectance. This study was designed to address these concerns by conducting vegetation mapping research using field and satellite data from the US Army Yuma Proving Ground (USYPG) in Southwest Arizona. Line and belt transect data from the Army's Land Condition Trend Analysis (LCTA) Program were transformed into relative cover and relative density classification schemes using cluster analysis. Ordination analysis of the same data produced two and three-dimensional graphs on which the homogeneity of each vegetation class could be examined. It was found that the use of correspondence analysis (CA), detrended correspondence analysis (DCA), and non-metric multidimensional scaling (NMS) ordination methods was superior to the use of any single ordination method for helping to clarify between-class and within-class relationships in vegetation composition. Analysis of these between-class and within-class relationships were of key importance in examining how well relative cover and relative density schemes characterize the USYPG vegetation. Using these two classification schemes as reference data, maximum likelihood and artificial neural net classifications were then performed on a coregistered dataset consisting of a summer Landsat Thematic Mapper (TM) image, one spring and one summer ERS-1 microwave image, and elevation, slope, and aspect layers. Classifications using a combination of ERS-1 imagery and elevation, slope, and aspect data were superior to classifications carried out using Landsat TM data alone. In all classification iterations it was consistently found that the highest classification accuracy was obtained by using a combination of Landsat TM, ERS-1, and elevation, slope, and aspect data. Maximum likelihood classification accuracy was found to be higher than artificial neural net classification in all cases.
机译:区域内的植被图有助于生态学研究,土地管理,并提供可与未来土地变化进行比较的记录。准确而有代表性的沙漠植被测绘需要声场采样程序和一种将收集到的数据转换成有代表性的分类系统的方法。如果要在区域范围内应用这样的分类系统,则时间和成本限制要求使用遥感方法。但是,沙漠植被可能稀疏,因此在典型的卫星分辨率下很难感知,特别是考虑到土壤反射率的问题。本研究旨在通过使用来自亚利桑那西南部美国陆军尤马试验场(USYPG)的野外和卫星数据进行植被测绘研究来解决这些问题。使用聚类分析,将来自陆军土地状况趋势分析(LCTA)计划的线和带样面数据转换为相对覆盖率和相对密度分类方案。对相同数据的排序分析产生了二维和三维图形,可以在该图形上检查每个植被类别的均匀性。发现使用对应分析(CA),去趋势对应分析(DCA)和非度量多维标度(NMS)排序方法优于使用任何单个排序方法来帮助阐明类之间和内部植被组成方面的关系。这些类别之间和类别内部关系的分析对于检查相对覆盖度和相对密度方案对USYPG植被的特征具有至关重要的意义。使用这两种分类方案作为参考数据,然后对一个共同注册的数据集进行最大似然和人工神经网络分类,该数据集由一幅夏季Landsat专题测绘(TM)图像,一幅春季和一幅ERS-1微波图像,高程,坡度和方面图层。结合使用ERS-1图像和高程,坡度和长宽比数据进行的分类要优于仅使用Landsat TM数据进行的分类。在所有分类迭代中,始终可以发现,结合使用Landsat TM,ERS-1和高程,坡度和长宽比数据可获得最高的分类精度。发现在所有情况下,最大似然分类精度均高于人工神经网络分类。

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