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首页> 外文期刊>Remote Sensing of Environment: An Interdisciplinary Journal >Mapping leaf chlorophyll and leaf area index using inverse and forward canopy reflectance modeling and SPOT reflectance data
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Mapping leaf chlorophyll and leaf area index using inverse and forward canopy reflectance modeling and SPOT reflectance data

机译:使用逆向和正向冠层反射率模型和SPOT反射率数据映射叶绿素和叶面积指数

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Reflectance data in the green, red and near-infrared wavelength region were acquired by the SPOT high resolution visible and geometric imaging instruments for an agricultural area in Denmark (56 degrees N, 9 degrees E) for the purpose of estimating leaf chlorophyll content (C-ab) and green leaf area index (LAI). SPOT reflectance observations were atmospherically corrected using aerosol data from MODIS and profiles of air temperature, humidity and ozone from the Atmospheric Infrared Sounder (AIRS), and used as input for the inversion of a canopy reflectance model. Computationally efficient inversion schemes were developed for the retrieval of soil and land cover-specific parameters which were used to build multiple species and site dependent formulations relating the two biophysical properties of interest to vegetation indices or single spectral band reflectances. Subsequently, the family of model generated relationships, each a function of soil background and canopy characteristics, was employed for a fast pixel-wise mapping of C-ab and LAI. The biophysical parameter retrieval scheme is completely automated and image-based and solves for the soil background reflectance signal, leaf mesophyll structure, specific dry matter content, Markov clumping characteristics, C-ab and LAI without utilizing calibration measurements. Despite the high vulnerability of near-infrared reflectances (rho(nir)) to variations in background properties, an efficient correction for background influences and a strong sensitivity of rho(nir) to LAI, caused LAI-rho(nir) relationships to be very useful and preferable over LAI-NDVI relationships for LAI prediction when LAI>2. Reflectances in the green waveband (rho(green)) were chosen for producing maps of C-ab. The application of LAI-NDVI, LAI-rho(nir) and C-ab-rho(green) relationships provided reliable quantitative estimates of C-ab and LAI for agricultural crops characterized by contrasting architectures and leaf biochemical constituents with overall root mean square deviations between estimates and in-situ measurements of 0.74 for LAI and 5.0 mu g cm(-2) for C-ab. The results of this study illustrate the non-uniqueness of spectral reflectance relationships and the potential of physically-based inverse and forward canopy reflectance modeling techniques for a reasonably fast and accurate retrieval of key biophysical parameters at regional scales. (C) 2007 Elsevier Inc. All rights reserved.
机译:通过SPOT高分辨率可见光和几何成像仪器获取了丹麦农业地区(北纬56度,东经9度)的绿色,红色和近红外波长区域的反射率数据,目的是估算叶片的叶绿素含量(C -ab)和绿叶面积指数(LAI)。使用来自MODIS的气溶胶数据以及来自大气红外测深仪(AIRS)的空气温度,湿度和臭氧的分布图,对SPOT反射率观测值进行了大气校正,并将其用作冠层反射率模型反演的输入。开发了计算上有效的反演方案,用于检索土壤和土地覆盖的特定参数,这些参数用于构建将与植被指数或单一光谱带反射率相关的两种重要生物物理特性相关的多种物种和特定地点的配方。随后,将模型生成的关系族(分别与土壤背景和冠层特征的函数联系在一起)用于C-ab和LAI的快速像素级映射。该生物物理参数检索方案是完全自动化和基于图像的,并且无需利用校准测量即可解决土壤背景反射信号,叶肉的叶肉结构,特定干物质含量,马尔可夫团簇特性,C-ab和LAI。尽管近红外反射率(rho(nir))易受背景特性变化的影响,但对背景影响的有效校正以及rho(nir)对LAI的强烈敏感性仍使LAI-rho(nir)关系非常明显当LAI> 2时,对于LAI预测而言,与LAI-NDVI关系有用且更可取。选择绿色波段(rho(green))中的反射率以生成C-ab图。 LAI-NDVI,LAI-rho(nir)和C-ab-rho(green)关系的应用提供了可靠的定量估算农作物C-ab和LAI的定量估计,其特征是结构和叶片生化成分形成对比,总体均方根偏差LAI的估计值和原位测量值之间的差值介于0.74之间,C-ab介于5.0μg cm(-2)之间。这项研究的结果说明了光谱反射率关系的非唯一性,以及基于物理的逆向和正向冠层反射率建模技术在区域范围内合理快速准确地检索关键生物物理参数的潜力。 (C)2007 Elsevier Inc.保留所有权利。

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