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Land Cover and Forest Type Classification by Values of Vegetation Indices and Forest Structure of Tropical Lowland Forests in Central Vietnam

机译:越南中部地区植被指数和热带低地森林森林结构的陆地覆盖和森林类型分类

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This paper aims to (i) optimize the application of multiple bands of satellite images for land cover classification by using random forest algorithms and (ii) assess correlations and regression of vegetation indices of a better-performed land cover classification image with vertical and horizontal structures of tropical lowland forests in Central Vietnam. In this study, we used Sentinel-2 and Landsat-8 to classify seven land cover classes of which three forest types were substratified as undisturbed, low disturbed, and disturbed forests where forest inventory of 90 plots, as ground-truth, was randomly sampled to measure forest tree parameters. A total of 3226 training points were sampled on seven land cover types. The performance of Landsat-8 showed out-of-bag error of 31.6%, overall accuracy of 68%, kappa of 67.5%, while Sentinel-2 showed out-of-bag error of 14.3% and overall accuracy of 85.7% and kappa of 83%. Ten vegetation indices of the better-performed image were extracted to find out (i) the correlation and regression of horizontal and vertical structures of trees and (ii) assess the variation values between ground-truthing plots and training sample plots in three forest types. The result of the t test on vegetation indices showed that six out of ten vegetation indices were significant at p0.05. Seven vegetation indices had a correlation with the horizontal structure, but four vegetation indices, namely, Enhanced Vegetation Index, Perpendicular Vegetation Index, Difference Vegetation Index, and Transformed Normalized Difference Vegetation Index, had better correlations r?=?0.66, 0.65, 0.65, 0.63 and regression results were of R2?=?0.44, 0.43, 0.43, and 0.40, respectively. The correlations of tree height were r?=?0.46, 0.43, 0.43, and 0.49 and its regressions were of R2?=?0.21, 0.19, 0.18, and 0.24, respectively. The results show the possibility of using random forest algorithm with Sentinel-2 in forest type classification in line with vegetation indices application.
机译:本文旨在通过随机林算法和(ii)评估具有垂直和水平结构的更好的陆地覆盖分类图像的植被指数的相关性和回归垂直和水平结构,优化卫星分类多个卫星图像的应用越南中部的热带低地森林。在这项研究中,我们使用Sentinel-2和Landsat-8来分类,其中七种陆地覆盖类别,其中三种森林类型被分类为不受干扰,低扰,森林,其中90个地块的森林库存为地面真理,被随机取样。测量林树参数。在七种土地覆盖类型中共采样3226个培训点。 LANDSAT-8的性能显示出袋袋误差31.6%,总精度为68%,kappa为67.5%,而哨兵-2显示出袋袋误差为14.3%,总精度为85.7%和kappa 83%。提取十个更好的图像的植被指数,以发现(i)树水平和垂直结构的相关性和回归(ii)评估三种森林类型的地下绘制图和训练样品地块之间的变化值。植被指数的T检验结果表明,10个植被指数中的六个患者在P <0.05中显着显着。七个植被指数与水平结构相关,但四个植被指数,即增强的植被指数,垂直植被指数,差异植被指数和转化的归一化差异植被指数,具有更好的相关性R?= 0.66,0.65,0.65, 0.63和回归结果为R2?= 0.44,0.43,0.43和0.40。树高的相关性是r?= 0.46,0.43,0.43和0.49,其回归分别为R 2 = 0.21,0.19,0.18和0.24。结果表明,在林型分类中使用随机林算法与植被指数应用的森林类型分类。

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