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首页> 外文期刊>Remote sensing letters >Algorithms for estimating green leaf area index in C3 and C4 crops for MODIS, Landsat TM/ETM+, MERIS, Sentinel MSI/OLCI, and Ven mu s sensors
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Algorithms for estimating green leaf area index in C3 and C4 crops for MODIS, Landsat TM/ETM+, MERIS, Sentinel MSI/OLCI, and Ven mu s sensors

机译:用于估算MODIS,Landsat TM / ETM +,MERIS,Sentinel MSI / OLCI和Ven mu s传感器的C3和C4作物的绿叶面积指数的算法

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This study developed a set of algorithms for satellite mapping of green leaf area index (LAI) in C3 and C4 crops. In situ hyperspectral reflectance and green LAI data, collected across eight years (2001-2008) at three AmeriFlux sites in Nebraska USA over irrigated and rain-fed maize and soybean, were used for algorithm development. The hyperspectral reflectance was resampled to simulate the spectral bands of sensors aboard operational satellites (Aqua and Terra: MODIS, Landsat: TM/ETM+), a legacy satellite (Envisat: MERIS), and future satellites (Sentinel-2, Sentinel-3, and Ven mu s). Among 15 vegetation indices (VIs) examined, five VIs - wide dynamic range vegetation index (WDRVI), green WDRVI, red edge WDRVI, and green and red edge chlorophyll indices - had a minimal noise equivalent for estimating maize and soybean green LAI ranging from 0 to 6.5m(2)m(-2). The algorithms were validated using MODIS, TM/ETM+, and MERIS satellite data. The root mean square error of green LAI prediction in both crops from all sensors examined in this study ranged from 0.73 to 0.95m(2)m(-2) and coefficient of variation ranged between 17.0 and 29.3%. The algorithms using the red edge bands of MERIS and future space systems Sentinel-2, Sentinel-3, and Ven mu s allowed accurate green LAI estimation over areas containing maize and soybean with no re-parameterization.
机译:这项研究开发了一套用于C3和C4作物绿叶面积指数(LAI)卫星制图的算法。算法开发使用了八年来(2001-2008年)在美国内布拉斯加州的三个AmeriFlux站点上灌溉和雨养的玉米和大豆上收集的原位高光谱反射率和绿色LAI数据。重新采样了高光谱反射率,以模拟运行中的卫星(Aqua和Terra:MODIS,Landsat:TM / ETM +),遗留卫星(Envisat:MERIS)和未来的卫星(Sentinel-2,Sentinel-3,和Ven mu s)。在检查的15种植被指数(VI)中,五个VI-宽动态范围植被指数(WDRVI),绿色WDRVI,红色边缘WDRVI以及绿色和红色边缘叶绿素指数-在估算玉米和大豆绿色LAI时具有最小的噪声当量,范围为0至6.5m(2)m(-2)。使用MODIS,TM / ETM +和MERIS卫星数据对算法进行了验证。在这项研究中,所有传感器检测到的两种作物中绿色LAI预测的均方根误差在0.73至0.95m(2)m(-2)之间,变异系数在17.0至29.3%之间。使用MERIS的红色边缘带和未来空间系统Sentinel-2,Sentinel-3和Ven mu的算法可以在没有重新参数化的情况下对包含玉米和大豆的区域进行准确的绿色LAI估算。

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  • 来源
    《Remote sensing letters》 |2015年第6期|360-369|共10页
  • 作者单位

    Univ Nebraska, Ctr Adv Land Management Informat Technol, Sch Nat Resources, Lincoln, NE 68588 USA;

    Univ Nebraska, Ctr Adv Land Management Informat Technol, Sch Nat Resources, Lincoln, NE 68588 USA|Technion Israel Inst Technol, Fac Civil & Environm Engn, Haifa, Israel;

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