首页> 外文期刊>International Archives of the Photogrammetry, Remote Sensing and Spatial Information Sciences >AGROFORESTRY TREE DENSITY ESTIMATION BASED ON HEMISPHERICAL PHOTOS & LANDSAT 8 OLI/TIRS IMAGE: A CASE STUDY AT CIDANAU WATERSHED, BANTEN-INDONESIA
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AGROFORESTRY TREE DENSITY ESTIMATION BASED ON HEMISPHERICAL PHOTOS & LANDSAT 8 OLI/TIRS IMAGE: A CASE STUDY AT CIDANAU WATERSHED, BANTEN-INDONESIA

机译:基于半球照片和LANDSAT 8 OLI / TIRS图像的农林树密度估计:以班坦-印度尼西亚的西格纳乌流域为例

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The Cidanau watershed is the only watershed in Indonesia that implements Payment for Environmental Services (PES) for farmers who can maintain tree/stand density of 500 trees/hectare on their land. Payments are made upon the verification on the field by the project supervisor. This method requires a lot of time and costly, so it is necessary to build more efficient indirect methods, including using satellite imagery or camera data. The aim of this study is to understand Landsat OLI 8 and hemispherical photo can estimate tree density in the farmer’s agroforestry stand. To obtain tree density, the number of trees with diameter more than 10 cm in 50 plots (50 m x 50 m) were counted. Some predictor variables were utilized, such as Leaf Area Index (LAI) based on hemispherical photos, Normalized Difference Vegetation Index (NDVI), Forest Cover Density (FCD), as well as NDVI and FCD which were enhanced with topographic correction. The imagery used was Landsat 8 OLI acquired on July 5, 2015, with Path/Row 123/64. The relationship between tree density and predictor variables was done using linear regression analysis. Prior to regression analysis, normality (Kolmogorov Smirnov/K-S), heteroscedasticity (Glejser test) and auto correlation (Durbin Watson) test were performed. The results of the analysis showed that tree density was estimated better with hemispherical photos-based LAI, with determination coefficient of 80.6%. Meanwhile, estimation using NDVI and FCD has lower determination coefficient. Even though, the use of topographic correction had been able to increase the determination coefficient of the regression relationship between tree density and FCD, from 4.64% to 35.18%.
机译:锡达瑙流域是印度尼西亚唯一为能够在其土地上维持500棵树/林木密度的农民实施环境服务付款(PES)的流域。由项目主管在现场核实后付款。这种方法需要大量时间和成本,因此有必要建立更有效的间接方法,包括使用卫星图像或照相机数据。这项研究的目的是了解Landsat OLI 8,半球照片可以估算农民农用林分中的树木密度。为了获得树木密度,计算了50个地块(50 m x 50 m)中直径大于10 cm的树木的数量。利用了一些预测变量,例如基于半球照片的叶面积指数(LAI),归一化植被指数(NDVI),森林覆盖密度(FCD)以及通过地形校正而增强的NDVI和FCD。使用的图像是2015年7月5日以Path / Row 123/64收购的Landsat 8 OLI。树密度和预测变量之间的关系使用线性回归分析完成。在进行回归分析之前,先进行正态性(Kolmogorov Smirnov / K-S),异方差性(Glejser检验)和自相关(Durbin Watson)检验。分析结果表明,半球形基于照片的LAI估计树木密度更好,测定系数为80.6%。同时,使用NDVI和FCD的估计具有较低的确定系数。即使使用地形校正,也可以将树密度与FCD之间的回归关系的确定系数从4.64%提高到35.18%。

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