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Mapping alpine vegetation based on image analysis, topographic variables and Canonical Correspondence Analysis

机译:基于图像分析,地形变量和典范对应分析的高山植被图

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The objective of the present study was to map dominant plant communities of an alpine area in the northeastern Alps (Austria), based on computer modelling. We employed gradient analysis by means of Canonical Correspondence Analysis (CCA) as a prediction tool and image segmentation as a filter for reducing the number of incorrect predictions. Topographical variables reflecting relief properties at different scales were used as surrogates for environmental conditions in combination with spectral band values from infrared orthophotographs. Coupling topographic correlation using CCA and image analysis proved practicable to map the distribution of alpine plant communities. Although plant communities often showed similar spectral response, they were mapped according to their specific topographical niches. Generally, topographic variables, indicative of environmental gradients controlling plant distribution, provided this information in most cases. The importance of spectral vs topographic variables varied among plant communities. Whereas the correlation between topography and plant species distribution was particularly significant for mapping alpine grasslands, spectral texture measures proved to be of major importance in discriminating between pioneer communities. Post-processing by image segmentation improved overall accuracy by 12%. A total of 17 plant communities and their mosaics were mapped, with an overall accuracy of 69.4% and a x value of 0.64. Inaccuracy resulted from insufficient resolution of the available digital elevation model and confounding effects of additional controls like land use history, which could not be accounted for by topographic descriptors.
机译:本研究的目的是基于计算机建模,绘制东北阿尔卑斯山(奥地利)高寒地区的优势植物群落图。我们通过规范对应分析(CCA)将梯度分析用作预测工具,并将图像分割作为用于减少错误预测次数的过滤器。反映不同尺度起伏特性的地形变量被用作环境条件的替代,并结合了红外正射照片的光谱带值。使用CCA和图像分析将地形相关性耦合起来,证明可用于绘制高山植物群落的分布图。尽管植物群落通常表现出相似的光谱响应,但它们是根据其特定的地形生态位进行绘制的。通常,指示环境梯度控制植物分布的地形变量在大多数情况下提供了此信息。光谱与地形变量的重要性在植物群落之间有所不同。尽管地形和植物物种分布之间的相关性对于测绘高寒草原尤为重要,但光谱纹理测度被证明在区分先驱者社区方面具有重要意义。通过图像分割进行的后处理将整体精度提高了12%。总共绘制了17个植物群落及其镶嵌图,总精度为69.4%,x值为0.64。不准确是由于可用数字高程模型的分辨率不足,以及其他控制措施(如土地使用历史)造成的混杂影响,而地形描述符无法解释这种影响。

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