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首页> 外文期刊>Remote Sensing of Environment: An Interdisciplinary Journal >Comparison and evaluation of Medium Resolution Imaging Spectrometer leaf area index products across a range of land use
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Comparison and evaluation of Medium Resolution Imaging Spectrometer leaf area index products across a range of land use

机译:各种土地利用类型中分辨率成像光谱仪叶面积指数产品的比较和评估

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摘要

Leaf area index (LAI) is a commonly required parameter when modelling land surface fluxes. Satellite based imagers, such as the 300 m full resolution (FR) Medium Spectral Resolution Imaging Spectrometer (MERIS), offer the potential for timely LAI mapping. The availability of multiple MERIS LAI algorithms prompts the need for an evaluation of their performance, especially over a range of land use conditions. Four current methods for deriving LAI from MERIS FR data were compared to estimates from in-situ measurements over a 3km×3 km region near Ottawa, Canada. The LAI of deciduous dominant forest stands and corn, soybean and pasture fields was measured in-situ using digital hemispherical photography and processed using the CANEYE software. MERIS LAI estimates were derived using the MERIS Top of Atmosphere (TOA) algorithm, MERIS Top of Canopy (TOC) algorithm, the Canada Centre for Remote Sensing (CCRS) Empirical algorithm and the University of Toronto (UofT) GLOBCARBON algorithm. Results show that TOA and TOC LAI estimates were nearly identical (R2N0.98) with underestimation of LAI when it is larger than 4 and overestimation when smaller than 2 over the study region. The UofT and CCRS LAI estimates had root mean square errors over 1.4 units with large (25%) relative residuals over forests and consistent underestimates over corn fields. Both algorithms were correlated (R2N0.8) possibly due to their use of the same spectral bands derived vegetation index for retrieving LAI. LAI time series from TOA, TOC and CCRS algorithms showed smooth growth trajectories however similar errors were found when the values were compared with the in-situ LAI. In summary, none of the MERIS LAI algorithms currently meet performance requirements from the Global Climate Observing System.
机译:在对地表通量建模时,叶面积指数(LAI)是通常需要的参数。基于卫星的成像仪,例如300 m全分辨率(FR)的中光谱分辨率成像光谱仪(MERIS),为及时进行LAI作图提供了潜力。多种MERIS LAI算法的可用性促使需要对其性能进行评估,尤其是在一系列土地使用条件下。比较了从MERIS FR数据得出LAI的四种当前方法,与加拿大渥太华附近3km×3 km地区实地测量的估计值进行了比较。使用数字半球摄影技术现场测量落叶优势林分和玉米,大豆和牧场的LAI,并使用CANEYE软件对其进行处理。 MERIS LAI估算值是使用MERIS大气层顶部(TOA)算法,MERIS冠层顶部(TOC)算法,加拿大遥感中心(CCRS)经验算法和多伦多大学(UofT)GLOBCARBON算法得出的。结果表明,在研究区域中,TOA和TOC L​​AI估计值几乎相同(R2N0.98),当LAI大于4时低估LAI,小于2时高估LAI。 UofT和CCRS LAI估计的均方根误差超过1.4个单位,森林上的相对残差较大(25%),而玉米田上的估计值始终被低估。两种算法都相关(R2N0.8),可能是由于它们使用相同的光谱带得出的植被指数来检索LAI。来自TOA,TOC和CCRS算法的LAI时间序列显示出平滑的增长轨迹,但是将这些值与原位LAI进行比较时发现了相似的误差。总而言之,MERIS LAI算法目前都没有满足全球气候观测系统的性能要求。

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