首页> 外文期刊>Remote Sensing of Environment: An Interdisciplinary Journal >Combining vegetation index and model inversion methods for the extraction of key vegetation biophysical parameters using Terra and Aqua MODIS reflectance data
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Combining vegetation index and model inversion methods for the extraction of key vegetation biophysical parameters using Terra and Aqua MODIS reflectance data

机译:结合植被指数和模型反演方法利用Terra和Aqua MODIS反射率数据提取关键植被生物物理参数

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Accurate estimates of vegetation biophysical variables are valuable as input to models describing the exchange of carbon dioxide and energy between the land surface and the atmosphere and important for a wide range of applications related to vegetation monitoring, weather prediction, and climate change. The present study explores the benefits of combining vegetation index and physically based approaches for the spatial and temporal mapping of green leaf area index (LAI), total chlorophyll content (TCab), and total vegetation water content (VWC). A numerical optimization method was employed for the inversion of a canopy reflectance model using Terra and Aqua MODIS multi-spectral, multi-temporal, and multi-angle reflectance observations to aid the determination of vegetation-specific physiological and structural canopy parameters. Land cover and site-specific inversion modeling was applied to a restricted number of pixels to build multiple species- and environmentally dependent formulations relating the three biophysical properties of interest to a number of selected simpler spectral vegetation indices (VI). While inversions generally are computationally slow, the coupling with the simple and computationally efficient VI approach makes the combined retrieval scheme for LAI, TCab, and VWC suitable for large-scale mapping operations. In order to facilitate application of the canopy reflectance model to heterogeneous forested areas, a simple correction scheme was elaborated, which was found to improve forest LAI predictions significantly and also provided more realistic values of leaf chlorophyll contents. The inversion scheme was designed to enable biophysical parameter retrievals for land cover classes characterized by contrasting canopy architectures, leaf inclination angles, and leaf biochemical constituents without utilizing calibration measurements. Preliminary LAI validation results for the Island of Zealand, Denmark (57 degrees N, 12 degrees E) provided confidence in the approach with root mean square (RMS) deviations between estimates and in-situ measurements of 0.62, 0.46, and 0.63 for barley, wheat, and deciduous forest sites, respectively. Despite the independence on site-specific in-situ measurements, the RMS deviations of the automated approach are in the same range as those established in other studies employing field-based empirical calibration. Being completely automated and image-based and independent on extensive and impractical surface measurements, the retrieval scheme has potential for operational use and can quite easily be implemented for other regions. More validation studies are needed to evaluate the usefulness and limitations of the approach for other environments and species compositions. (c) 2006 Elsevier Inc. All rights reserved.
机译:植被生物物理变量的准确估计值对于描述土地表面与大气之间二氧化碳和能量交换的模型的输入非常有价值,对于与植被监测,天气预报和气候变化有关的广泛应用非常重要。本研究探讨了结合植被指数和基于物理的方法对绿叶面积指数(LAI),总叶绿素含量(TCab)和总植被含水量(VWC)进行时空映射的好处。利用Terra和Aqua MODIS多光谱,多时间和多角度反射率观测值,采用数值优化方法对冠层反射率模型进行反演,以帮助确定特定于植被的生理和结构冠层参数。将土地覆盖和针对特定地点的反演模型应用于有限数量的像素,以构建多种依赖于物种和环境的配方,将感兴趣的三种生物物理特性与许多选定的较简单光谱植被指数(VI)相关联。虽然反演通常在计算上较慢,但与简单且计算效率高的VI方法结合使用时,适用于LAI,TCab和VWC的组合检索方案适用于大规模映射操作。为了便于将冠层反射率模型应用于异类林区,提出了一种简单的校正方案,该方案可以显着改善森林的LAI预测,还可以提供更实际的叶片叶绿素含量值。该反演方案的设计目的是在不利用定标测量的情况下,对以对比冠层结构,叶片倾斜角度和叶片生化成分为特征的土地覆盖类别进行生物物理参数检索。丹麦西兰岛(北纬57度,东经12度)的初步LAI验证结果为该方法提供了信心,大麦的估计值与实地测量值之间的均方根(RMS)偏差为0.62、0.46和0.63,小麦和落叶林。尽管特定于现场的现场测量是独立的,但自动化方法的RMS偏差与其他采用基于现场的经验校准的研究确定的偏差相同。由于完全自动化且基于图像,并且不依赖于广泛且不切实际的表面测量,因此检索方案具有可操作使用的潜力,并且可以很容易地在其他区域实施。需要更多的验证研究来评估该方法对其他环境和物种组成的有用性和局限性。 (c)2006 Elsevier Inc.保留所有权利。

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