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Retrieving LAI in the Heihe and the Hanjiang River Basins Using Landsat Images for Accuracy Evaluation on MODIS LAI Product

机译:在黑河和汉江流域中检索赖莱斯图山脉,以便在Modis Lai产品上进行准确评估

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As an important ecological parameter in land surface processes, Leaf Area Index (LAI) and its inversion with remotely sensed data are hot topics in quantitative remote sensing field either domestically or internationally. Current approaches for estimating LAI from optical remotely sensed data are classified into several categories: 1) the empirical relationship of LAI and vegetation indices (VI); 2) inversion of a radiative transfer (RT) model; 3) lookup table (LUT) method; and 4) neural network (NN) algorithms. Approach in category 1) is empirical therefore location specific. Retrieving LAI with approach category 2) is physically based, but hampered by the fact that the inverse problem is ill-posed, which leads to unstable and often inaccurate results. In this study, we examined three LAI retrieval schemes as 1), 2) and 4) to retrieve LAI from Landsat ETM+ imagery in two typical experimental sites, one located in the arid, semi-arid high altitude Heihe River Basin, northwestern China, and another a humid temperate mountainous hilly region of the Hanjiang River Basin, middle western China, where comprehensive and extensive field campaigns for measuring LAI with LAI-2000 and TRAC have been successively conducted in summer seasons from 2002 to 2006. With the data obtained in field seasons of these successive years, a scale transferring scheme was developed to convert the Landsat TM LAI map to compare with MODIS LAI product available to public on internet by NASA, it was found that the MODIS LAI were underestimated about 56-71% in the arid, semi-arid Heihe region, while it was underestimated about 10-21% in general in the humid and temperate Hanjiang region.
机译:作为陆地过程中的重要生态参数,叶面积指数(LAI)及其与远程感测数据的反转是在国内或国际上的定量遥感领域的热门话题。目前用于从光学远程感测数据估算LAI的方法分为若干类别:1)LAI和植被指数的经验关系(VI); 2)辐射转移(RT)模型的反转; 3)查找表(LUT)方法; 4)神经网络(NN)算法。第1类的方法)是特定于位置的经验所在的位置。检索Lai与方法第2类)是基于物理上的,但由于逆问题均为不稳定,这导致不稳定且通常不准确的结果。在这项研究中,我们检查了三个赖检索方案为1),2)和4)从Landsat ETM +图像中检索赖Landsat ETM +图像,位于中国西北部的干旱,半干旱高原黑河流域,另一个潮湿的温水山丘陵地区,中西部汉江流域,在2002年至2006年的夏季举办了莱 - 2000和TRAC的全面和广泛​​的赖斯竞争,从2002年至2006年举行。这些赛季赛季这些连续年度,制定了一个规模的转移方案,以转换Landsat TM LAI地图,与美国宇航局互联网上市的Modis Lai产品相比,发现Modis Lai被低估了大约56-71%干旱,半干旱黑河地区,潮湿与温暖汉江地区一般低估了约10-21%。

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