空间化
遥感
比例(比率)
叶面积指数
生物量(生态学)
采样(信号处理)
图像分辨率
时间分辨率
环境科学
校准
数据集
空间变异性
精准农业
计算机科学
数学
统计
地理
地图学
农业
生态学
探测器
人工智能
物理
生物
社会学
电信
考古
量子力学
人类学
作者
Martin Claverie,Valérie Demarez,Benoı̂t Duchemin,Olivier Hagolle,P. Keravec,B. Marciel,Éric Ceschia,Jean-François Dejoux,Gérard Dedieu
标识
DOI:10.1109/igarss.2009.5418296
摘要
The recent availability of high spatial resolution sensors offers new perspectives for terrestrial applications (agriculture, risks). The aim of this work is to develop a methodology for deriving biophysical variables (Green Leaf Area Index - GLAI, phytomass) from multi-temporal observations at high spatial resolution in order to run a crop model at a regional scale. Accurate predictive crop models require a large set of input parameters, which are not easily available over large area. Spatial upscaling of such models is thus difficult. The use of simple model avoids spatial upscaling issues. This study is focused on SAFY model (Simple Algorithm For Yield estimates) developed. Key SAFY parameters were calibrated using temporal GLAI profiles, empirically estimated from FORMOSAT-2 time series of images. Most of the SAFY parameters are crop related and have been fixed according to literature. However some parameters are more specific and have been calibrated based on GLAI derived from FORMOSAT-2 observations at a field scale. Two calibration strategies are evaluated as a function of sampling (frequency and temporal distribution) of remote sensing data. Spatial upscaling simulations are assessed based on biomass in-situ measurements taken over maize. Good agreement between modelled and measured phytomass have been found on maize (RMSE =20 g.m -2 ).
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