首页> 外文期刊>Remote Sensing of Environment: An Interdisciplinary Journal >Combining vegetation indices, constrained ordination and fuzzy classification for mapping semi-natural vegetation units from hyperspectral imagery
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Combining vegetation indices, constrained ordination and fuzzy classification for mapping semi-natural vegetation units from hyperspectral imagery

机译:结合植被指数,约束排序和模糊分类对高光谱影像中的半天然植被单位进行制图

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摘要

Vegetation mapping of plant communities at fine spatial scales is increasingly supported by remote sensing technology. However, combining ecological ground truth information and remote sensing datasets for mapping approaches is complicated by the complexity of ecological datasets. In this study, we present a new approach that uses high spatial resolution hyperspectral datasets to map vegetation units of a semiarid rangeland in Central Namibia. Field vegetation surveys provide the input to the workflow presented in this study. The collected data were classified by hierarchical cluster analysis into seven vegetation units that reflect different ecological states occurring in the study area. Spectral indices covering vegetation and soil characteristics were calculated from hyperspectral remote sensing imagery and used as environmental variables in a constrained ordination by applying redundancy analysis (RDA). The resulting statistical relationships between vegetation data and spectral indices were transferred into images of ordination axes, which were subsequently used in a supervised fuzzy c-means classification approach relying on a k-NN distance metric. Membership images for each vegetation unit as well as a confusion image of the classification result allowed a sound ecological interpretation of the resulting hard classification map. Classification results were validated with two independent reference datasets. For an internal and external validation dataset, overall accuracy reached 98% and 64% with kappa values of 0.98 and 0.53, respectively. Critical steps during the mapping workflow were highlighted and compared with similar mapping approaches.
机译:遥感技术越来越支持在精细空间尺度上植物群落的植被制图。然而,由于生态数据集的复杂性,将生态地面真相信息与遥感数据集相结合进行制图方法变得很复杂。在这项研究中,我们提出了一种使用高分辨率的高光谱数据集来绘制纳米比亚中部半干旱牧场的植被单位的新方法。野外植被调查为本研究中介绍的工作流程提供了输入。通过层次聚类分析将收集的数据分为七个植被单元,这些单元反映了研究区域内发生的不同生态状态。通过高光谱遥感影像计算出涵盖植被和土壤特征的光谱指数,并通过应用冗余分析(RDA)将其用作约束排序中的环境变量。植被数据和光谱指数之间的统计关系被转移到整理轴的图像中,随后用于基于k-NN距离度量的监督模糊c均值分类方法。每个植被单元的成员资格图像以及分类结果的混淆图像,可以对生成的硬分类图进行合理的生态解释。分类结果通过两个独立的参考数据集进行了验证。对于内部和外部验证数据集,kappa值分别为0.98和0.53时,总体准确度达到98%和64%。突出显示了映射工作流程中的关键步骤,并将其与类似的映射方法进行了比较。

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