冻土带
归一化差异植被指数
植被(病理学)
环境科学
每年落叶的
遥感
交错带
卫星图像
泰加语
增强植被指数
常绿
卫星
基本事实
自然地理学
北方的
灌木
北极植被
北极的
地理
气候变化
地质学
林业
生态学
植被指数
考古
航空航天工程
病理
工程类
机器学习
海洋学
生物
医学
计算机科学
作者
R. Wong,Logan T. Berner,Patrick F. Sullivan,Christopher Potter,Roman Dial
标识
DOI:10.1101/2024.01.14.574721
摘要
ABSTRACT Satellite remote sensing of climate-driven changes in terrestrial ecosystems continues to improve, yet interpreting and rigorously validating these changes requires extensive ground-truthed data. Satellite measurements of vegetation indices, such as the Normalized Difference Vegetation Index (NDVI, or vegetation greenness), indicate widespread vegetation change in the Arctic that is associated with rapid warming. Plot-based studies have indicated greater vegetation greenness generally corresponds to greater plant biomass and deciduous shrub cover. However, the spatial scale of traditional plot-based sampling is much smaller than the resolution of most satellite imagery and thus does not fully describe how plant characteristics such as structure and taxonomic composition relate to satellite measurements of greenness. To improve interpretation of Landsat measurements of vegetation greenness in the Arctic, we developed and implemented a method that links satellite measurements with ground-based vegetation classifications. Here we describe data collected across the central Brooks Range of Alaska by field sampling hundreds of Landsat pixels per day, with a field campaign total of 23,213 pixels (30 m). Our example dataset shows that vegetation with the greatest Landsat greenness was taller than 1m, woody, and deciduous; vegetation with lower greenness tended to be shorter, evergreen, or non-woody. We also show that understory vegetation influences Landsat greenness. Our methods advance efforts to inform satellite data with ground-based vegetation observations using field samples at spatial scales more closely matched to the resolution of remotely sensed imagery.
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