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首页> 外文期刊>Remote Sensing >Retrieving Corn Canopy Leaf Area Index from Multitemporal Landsat Imagery and Terrestrial LiDAR Data
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Retrieving Corn Canopy Leaf Area Index from Multitemporal Landsat Imagery and Terrestrial LiDAR Data

机译:从多时相Landsat影像和陆地LiDAR数据中检索玉米冠层叶面积指数

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Leaf angle is a critical structural parameter for retrieving canopy leaf area index (LAI) using the PROSAIL model. However, the traditional method using default leaf angle distribution in the PROSAIL model does not capture the phenological dynamics of canopy growth. This study presents a LAI retrieval method for corn canopies using PROSAIL model with leaf angle distribution functions referred from terrestrial laser scanning points at four phenological stages during the growing season. Specifically, four inferred maximum-probability leaf angles were used in the Campbell ellipsoid leaf angle distribution function of PROSAIL. A Lookup table (LUT) is generated by running the PROSAIL model with inferred leaf angles, and the cost function is minimized to retrieve LAI. The results show that the leaf angle distribution functions are different for the corn plants at different phenological growing stages, and the incorporation of derived specific corn leaf angle distribution functions distribute the improvement of LAI retrieval using the PROSAIL model. This validation is done using in-situ LAI measurements and MODIS LAI in Baoding City, Hebei Province, China, and compared with the LAI retrieved using default leaf angle distribution function at the same time. The root-mean-square error (RMSE) between the retrieved LAI on 4 September 2014, using the modified PROSAIL model and the in-situ measured LAI was 0.31 m 2 /m 2 , with a strong and significant correlation (R 2 = 0.82, residual range = 0 to 0.6 m 2 /m 2 , p 0.001). Comparatively, the accuracy of LAI retrieved results using default leaf angle distribution is lower, the RMSE of which is 0.56 with R 2 = 0.76 and residual range = 0 to 1.0 m 2 /m 2 , p 0.001. This validation reveals that the introduction of inferred leaf angle distributions from TLS data points can improve the LAI retrieval accuracy using the PROSAIL model. Moreover, the comparations of LAI retrieval results on 10 July, 26 July, 19 August and 4 September with default and inferred corn leaf angle distribution functions are all compared with MODIS LAI products in the whole study area. This validation reveals that improvement exists in a wide spatial range and temporal range. All the comparisons demonstrate the potential of the modified PROSAIL model for retrieving corn canopy LAI from Landsat imagery by inferring leaf orientation from terrestrial laser scanning data.
机译:叶角是使用PROSAIL模型检索冠层叶面积指数(LAI)的关键结构参数。但是,在PROSAIL模型中使用默认叶角分布的传统方法无法捕获树冠生长的物候动态。这项研究提出了使用PROSAIL模型的玉米冠层的LAI检索方法,该模型具有在生长季节的四个物候阶段从地面激光扫描点引用的叶角分布函数。具体而言,在PROSAIL的坎贝尔椭球叶片角分布函数中使用了四个推断的最大概率叶片角。通过使用推断出的叶角运行PROSAIL模型来生成查找表(LUT),并将成本函数最小化以检索LAI。结果表明,在不同物候生长阶段,玉米植株的叶片角度分布函数是不同的,并且通过引入特定的玉米叶片角度分布函数可以使用PROSAIL模型分配LAI检索的改进。该验证是通过原位LAI测量和MODIS LAI在中国河北省保定市进行的,并与使用默认叶角分布函数同时检索到的LAI进行了比较。使用改良的PROSAIL模型于2014年9月4日检索到的LAI与现场测量的LAI之间的均方根误差(RMSE)为0.31 m 2 / m 2,具有很强且显着的相关性(R 2 = 0.82 ,残留范围= 0至0.6 m 2 / m 2,p <0.001)。相比之下,使用默认叶角分布的LAI检索结果的准确性较低,其RMSE为0.56,R 2 = 0.76,残留范围= 0至1.0 m 2 / m 2,p <0.001。该验证表明,从TLS数据点推断叶角度分布的引入可以使用PROSAIL模型提高LAI检索精度。此外,在整个研究区域内,将7月10日,7月26日,8月19日和9月4日的LAI检索结果与默认值和推断的玉米叶角度分布函数的比较结果与MODIS LAI产品进行了比较。该验证表明,改善存在于较大的空间范围和时间范围内。所有比较结果都表明,通过从陆地激光扫描数据推断叶片方向,修改后的PROSAIL模型具有从Landsat影像中检索玉米冠层LAI的潜力。

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