首页> 外文期刊>International Archives of the Photogrammetry, Remote Sensing and Spatial Information Sciences >FIRST INVESTIGATION OF MEDITERRANEAN OAK TREE VITALITY WITH HIGH-RESOLUTION WORLDVIEW-3 SATELLITE DATA: COMPARING TEN VEGETATION INDICES AND THREE MACHINE LEARNING CLASSIFIERS
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FIRST INVESTIGATION OF MEDITERRANEAN OAK TREE VITALITY WITH HIGH-RESOLUTION WORLDVIEW-3 SATELLITE DATA: COMPARING TEN VEGETATION INDICES AND THREE MACHINE LEARNING CLASSIFIERS

机译:首先调查地中海橡树树生机与高分辨率世界观-3卫星数据:比较十个植被指数和三台机器学习分类器

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Oak trees are the primary component in Mediterranean agro-silvopastoral systems. Since the second half of the 20th century, however, a severe oak decline has been observed. Climate change reinforces this problem, which is consistent with worldwide observable tree dieback. As the trees have significant ecological and socio-economic functions, their observation and assessment of vitality are increasingly researched. Satellite remote sensing is very well suitable for large-scale surveys of the extensive and sometimes hardly accessible areas. This study investigates the usability of high-resolution WorldView-3 data for the classification of tree vitality. The ground truth was collected on an Andalusian dehesa at the end of September 2019, timely corresponding with the satellite data acquisition. After customary post-processing of the WorldView-3 data, 10 vegetation indices (ARVI, CIgreen, CSI, DPI, EVI, GNDVI, NDVI, PSRI, RENDVI, and RGI) were calculated from the multispectral image. Three machine learning classifiers (Maximum Likelihood, Random Forest, and Support Vector Machine) were then used for a supervised image classification with three vitality classes (healthy, sick, and dead). Independent ground truth data were used for the validation. The best results were achieved with the red edge normalized difference vegetation index (RENDVI) and the Support Vector Machine classifier (F1 scores between 0.27 and 0.72). A maximal overall accuracy of around 0.6 is, however, improvable. Further studies should focus on other classification methods, more reliable ground truth, and combined analyses of spectral and structural data.
机译:橡树树是地中海农业硅晶体系统的主要成分。然而,自20世纪下半叶以来,已经观察到严重的橡木衰退。气候变化强化了这个问题,这与全球可观察的树陷阱一致。由于树木具有重要的生态和社会经济功能,因此他们的观察和对活力的评估越来越多地研究。卫星遥感非常适合大规模调查的广泛且有时难以访问的区域。本研究调查了高分辨率世界观-3数据的可用性,以便进行树木活力的分类。在2019年9月底,在安达卢西亚迪夫收集了地面真理,与卫星数据采集及时对应。在WorldView-3数据的习惯性后处理之后,从多光谱图像计算了10个植被指数(ARVI,CIGREEN,CSI,DPI,EVI,GNDVI,NDVI,PSRI,Rendvi和RGI)。然后使用三种机器学习分类器(最大可能性,随机森林和支持向量机),用于具有三个生命力课程的监督图像分类(健康,生病和死亡)。独立的地面真理数据用于验证。用红色归一化差异植被指数(Rendvi)和支撑载体机分类器(0.27和0.72之间的F1分数)实现了最佳结果。然而,最大的整体精度约为0.6是可易的。进一步的研究应专注于其他分类方法,更可靠的基础事实,以及谱和结构数据的组合分析。

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