Deriving plant phenology from remote sensing

G. Roerink, M. Danes, O. G. Prieto, A. de Wit, A. V. van Vliet
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引用次数: 7

Abstract

Plant phenology is the study of the timing of periodic vegetation cycles and their connection to climate. Examples are the date of emergence of leaves and flowers or the date of leaf colouring and fall in deciduous trees. It is an independent measure on how ecosystems are responding to climate change and therefore experiencing renewed interest from the scientific research community. This paper describes a method to derive plant phenology indicators from time series of satellite images. The satellite images are Normalized Difference Vegetation Index (NDVI) images from the MODIS sensor, which encompass the European continent from 2000 onwards. The Harmonic Analysis of NDVI Time Series (HANTS) algorithm is used to process and analyse the time series of satellite images for each individual year. The resulting amplitude and phase values are translated into commonly understandable phenology indicators like start of growing season, which can be linked again to the biological definitions of plant phenology. The indicators are validated with field observations, recorded by a volunteer's network in the Netherlands and Germany. Conclusions are that the method produces consistant maps, which correlate well with the crop type. However, on average the remote sensing derived start of season is 14 days earlier than the observed values.
基于遥感的植物物候学研究
植物物候学是研究周期性植被循环的时间及其与气候的关系。例如,树叶和花朵出现的日期,或落叶树木叶子着色和落下的日期。这是一个关于生态系统如何对气候变化做出反应的独立测量,因此引起了科学研究界的重新关注。本文介绍了一种利用卫星影像时间序列推导植物物候指标的方法。卫星图像是MODIS传感器的归一化植被指数(NDVI)图像,涵盖了2000年以来的欧洲大陆。采用NDVI时间序列调和分析(HANTS)算法对各年份卫星影像时间序列进行处理和分析。由此产生的振幅和相位值被转化为常见的物候指标,如生长季节的开始,这可以再次与植物物候的生物学定义联系起来。在荷兰和德国的一个志愿人员网络记录的实地观察证实了这些指标。结论是,该方法产生一致的地图,这与作物类型有很好的相关性。但是,平均而言,遥感得出的季节开始比观测值早14天。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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