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Estimates of Aboveground Biomass from Texture Analysis of Landsat Imagery

机译:从Landsat影像的纹理分析估算地上生物量

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Maps of forest biomass are important tools for managing natural resources and reporting terrestrial carbon stocks. Using the San Juan National Forest in Southwest Colorado as a case study, we evaluate regional biomass maps created using physical variables, spectral vegetation indices, and image textural analysis on Landsat TM imagery. We investigate eight gray level co-occurrence matrix based texture measures (mean, variance, homogeneity, contrast, dissimilarity, entropy, second moment and correlation) on four window sizes (3 × 3, 5 × 5, 7 × 7, 9 × 9) at four offsets ([1,0], [1,1], [0,1], [1,−1]) on four Landsat TM bands (2, 3, 4, and 5). The map with the highest prediction quality was created using three texture metrics calculated from Landsat Band 2 on a 3 × 3 window and an offset of [0,1]: entropy, mean and correlation; and one physical variable: slope. The correlation of predicted versus observed biomass values for our texture-based biomass map is r = 0.86, the Root Mean Square Error is 45.6 Mg·ha−1, and the Coefficient of Variation of the Root Mean Square Error is 0.31. We find that models including image texture variables are more strongly correlated with biomass than models using only physical and spectral variables. Additionally, we suggest that the use of texture appears to better capture the magnitude and direction of biomass change following disturbance compared to spectral approaches. The biomass mapping methods we present here are widely applicable throughout the US, as they are based on publically available datasets and utilize relatively simple analytical routines.
机译:森林生物量图是管理自然资源和报告陆地碳储量的重要工具。以科罗拉多州西南部的圣胡安国家森林为例,我们评估了利用物理变量,光谱植被指数以及Landsat TM影像的图像纹理分析创建的区域生物量图。我们研究了在四个窗口大小(3×3、5×5、7×7、9×9)上基于八个灰度共生矩阵的纹理量度(均值,方差,同质性,对比度,不相似性,熵,第二矩和相关性) )在四个Landsat TM波段(2、3、4和5)上的四个偏移量[[1,0],[1,1],[0,1],[1−-1])。使用从Landsat Band 2在3×3窗口上计算的三个纹理量度和[0,1]偏移量创建了具有最高预测质量的地图:熵,均值和相关性;还有一个物理变量:斜率我们基于纹理的生物量图的预测生物量值与观测生物量值的相关性为r = 0.86,均方根误差为45.6 Mg·ha -1 ,均方根变异系数误差为0.31。我们发现,与仅使用物理变量和光谱变量的模型相比,包括图像纹理变量的模型与生物量的相关性更高。此外,我们建议与纹理方法相比,使用纹理似乎可以更好地捕获扰动后生物量变化的幅度和方向。我们在此介绍的生物量制图方法基于可公开获得的数据集并利用相对简单的分析程序,因此在美国各地都可以广泛应用。

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