首页> 外文期刊>ISPRS International Journal of Geo-Information >Combining Object-Based Image Analysis with Topographic Data for Landform Mapping: A Case Study in the Semi-Arid Chaco Ecosystem, Argentina
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Combining Object-Based Image Analysis with Topographic Data for Landform Mapping: A Case Study in the Semi-Arid Chaco Ecosystem, Argentina

机译:将基于对象的图像分析与地形数据相结合进行地形图绘制:以阿根廷半干旱Chaco生态系统为例

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This paper presents an object-based approach to mapping a set of landforms located in the fluvio-eolian plain of Rio Dulce and alluvial plain of Rio Salado (Dry Chaco, Argentina), with two Landsat 8 images collected in summer and winter combined with topographic data. The research was conducted in two stages. The first stage focused on basic-spectral landform classifications where both pixel- and object-based image analyses were tested with five classification algorithms: Mahalanobis Distance (MD), Spectral Angle Mapper (SAM), Maximum Likelihood (ML), Support Vector Machine (SVM) and Decision Tree (DT). The results obtained indicate that object-based analyses clearly outperform pixel-based classifications, with an increase in accuracy of up to 35%. The second stage focused on advanced object-based derived variables with topographic ancillary data classifications. The combinations of variables were tested in order to obtain the most accurate map of landforms based on the most successful classifiers identified in the previous stage (ML, SVM and DT). The results indicate that DT is the most accurate classifier, exhibiting the highest overall accuracies with values greater than 72% in both the winter and summer images. Future work could combine both, the most appropriate methodologies and combinations of variables obtained in this study, with physico-chemical variables sampled to improve the classification of landforms and even of types of soil.
机译:本文提出了一种基于对象的方法来绘制一组位于里约杜尔塞河风平原和里约萨拉多冲积平原(阿根廷干查科)的地形图,并结合了夏季和冬季收集的两幅Landsat 8图像和地形图数据。该研究分两个阶段进行。第一阶段着重于基本光谱地形分类,其中基于像素和基于对象的图像分析使用五种分类算法进行了测试:马氏距离(MD),光谱角映射器(SAM),最大似然(ML),支持向量机( SVM)和决策树(DT)。获得的结果表明,基于对象的分析明显优于基于像素的分类,其准确率最高可提高35%。第二阶段着重于高级的基于对象的派生变量以及地形辅助数据分类。为了在前一阶段(ML,SVM和DT)确定的最成功的分类器的基础上,对变量组合进行测试,以获得最准确的地形图。结果表明,DT是最准确的分类器,在冬季和夏季图像中均显示出最高的总体准确性,其值均大于72%。未来的工作可以结合本研究中获得的最合适的方法和变量的组合,并结合采样的物理化学变量来改善地貌甚至土壤类型的分类。

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