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Modelling species richness from HRSC and QuickBird data in the Turtmann valley, Switzerland

机译:瑞士Turtmann Valley的HRSC和Quickbird数据的型物种丰富性

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Species richness is a fundamental biodiversity parameter in Landscape Ecology. At a local scale, we analysed the relationship between species richness and topographic, spectral and texture parameters derived by remote sensing data in an alpine environment. Landform parameters were calculated from a 1m digital surface model (DSM). Spectral and texture information were derived by QuickBird 2 data. Vegetation was mapped during field campaigns 2005 and 2006. For predicting species richness the nonlinear multivariate regression method of the partial least squares (PLS) was used as a statistical technique. The best model with 74% explained variance of the species richness of the test plots was created using spectral and texture information. Reducing all remote sensing derived parameters to the most important ones, still 72% of the variance could be explained. We conclude that for modelling species richness reflectance and NDVI as well as elevation information and homogeneity measures are the most important parameters. Consequently, biodiversity could successfully be predicted with remote sensing derived parameters.
机译:物种丰富性是景观生态学的基本生物多样性参数。在本地规模,我们分析了通过在高山环境中遥感数据导出的物种丰富性和地形,光谱和纹理参数之间的关系。地形参数由1M数字表面模型(DSM)计算。通过Quickbird 2数据派生光谱和纹理信息。在现场运动期间映射植被2005年和2006年。对于预测物种丰富性,将部分最小二乘(PLS)的非线性多元回归方法用作统计技术。使用频谱和纹理信息创建了具有74%的最佳模型,具有74%的测试地块物种丰富性的方差。将所有遥感派生参数缩短到最重要的遥感参数,仍然可以解释差异的72%。我们得出结论,用于建模物种丰富的反射率和NDVI以及升高信息和同质措施是最重要的参数。因此,可以通过遥感派生参数成功预测生物多样性。

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