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Integration of satellite imagery, topography and human disturbance factors based on canonical correspondence analysis ordination for mountain vegetation mapping: a case study in Yunnan, China

机译:基于典型对应分析排序的山地植被制图卫星图像,地形和人为干扰因素的整合:中国云南的案例研究

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摘要

The integration between vegetation data, human disturbance factors, and geo-spatial data (Digital Elevation Model (DEM) and image data) is a particular challenge for vegetation mapping in mountainous areas. The present study aimed to incorporate the relationships between species distribution (or vegetation spatial distribution pattern) and topography and human disturbance factors with remote sensing data, to improve the accuracy of mountain vegetation maps. Two different mountainous areas located in Lancang (Mekong) watershed served as study sites. An Artificial Neural Network (ANN) architecture classification was used as image classification protocol. In addition, canonical correspondence analysis (CCA) ordination was applied to address the relationships between topography and human disturbance factors with the spatial distribution of vegetation patterns. We used ordinary kriging at unobserved locations to predict the CCA scores. The CCA ordination results showed that the vegetation spatial distribution patterns are strongly affected by topography and human disturbance factors. The overall accuracy of vegetation classification was significantly improved by incorporating DEM or four CCA axes as additional channels in both the northern and southern study areas. However, there was no significant difference between using DEM or four CCA axes as extra channels in the northern steep mountainous areas because of a strong redundancy between CCA axes and DEM data. In the southern lower mountainous areas, the accuracy was significantly higher using four CCA axes as extra bands, compared to using DEM as an extra band. In the southern study area, the variance of vegetation data explained by human disturbance factors was larger than the variance explained by topographic attributes.
机译:植被数据,人为干扰因素和地理空间数据(数字高程模型(DEM)和图像数据)之间的集成对于山区的植被制图是一个特殊的挑战。本研究旨在将物种分布(或植被空间分布格局)与地形和人为干扰因素之间的关系与遥感数据相结合,以提高山区植被图的准确性。研究地点位于澜沧江(湄公河)分水岭的两个不同山区。人工神经网络(ANN)体系结构分类被用作图像分类协议。另外,采用规范对应分析法(CCA)来解决地形和人为干扰因素与植被格局的空间分布之间的关系。我们在无法观察的位置使用普通克里金法来预测CCA分数。 CCA排序结果表明,植被的空间分布格局受地形和人为干扰因素的强烈影响。通过将DEM或四个CCA轴作为北部和南部研究区域的附加通道,植被分类的总体准确性得到了显着提高。但是,在北部陡峭的山区,使用DEM或四个CCA轴作为额外通道之间没有显着差异,因为CCA轴和DEM数据之间有很强的冗余性。在南部较低的山区,与使用DEM作为额外频段相比,使用四个CCA轴作为额外频段的准确性要高得多。在南部研究区,由人为干扰因素解释的植被数据方差大于由地形属性解释的方差。

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