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Quantification of aboveground forest biomass using Quickbird imagery, topographic variables, and field data

机译:使用Quickbird影像,地形变量和野外数据定量地上森林生物量

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Optical remote sensing is the most widely used method for obtaining forest biomass information. This research investigated the potential of using topographical and high-resolution optical data from Quickbird for measurement of black locust plantation aboveground biomass (AGB) grown in the hill-gully region of the Loess Plateau. Three different processing techniques, including spectral vegetation indices (SVIs), texture, and topography were evaluated, both individually and combined. Simple linear regression and stepwise multiple-linear regression models were developed to describe the relationship between image parameters obtained using these approaches and field measurements. SVI and topography-based approaches did not yield reliable AGB estimates, accounting for at best 23 and 19% of the observed variation in AGB. Texturebased methods were better, explaining up to 70% of the observed variation. A combination of SVIs, texture, and topography yielded an even better R~2 value of 0.74 with the lowest root mean square error (17.21 t/ha) and bias (-1.85 t/ha). The results suggest that texture information from high-resolution optical data was more effective than SVIs and topography to estimate AGB. The performance of AGB estimation can be improved by adding SVIs and topography results to texture data;;the best results can be obtained using a combination of these three data types.
机译:光学遥感是获取森林生物量信息最广泛使用的方法。这项研究调查了利用Quickbird的地形和高分辨率光学数据测量黄土高原丘陵沟壑区生长的刺槐人工林地上生物量(AGB)的潜力。分别评估和组合了三种不同的处理技术,包括光谱植被指数(SVI),纹理和地形。开发了简单的线性回归和逐步多元线性回归模型来描述使用这些方法获得的图像参数与现场测量之间的关系。基于SVI和基于地形的方法无法得出可靠的AGB估算值,最多仅占所观察到的AGB变化的23%和19%。基于纹理的方法更好,可以解释多达70%的观察到的变化。 SVI,纹理和地形的组合产生的R〜2值更好,为0.74,均方根误差(17.21 t / ha)和偏差(-1.85 t / ha)最低。结果表明,来自高分辨率光学数据的纹理信息比SVI和地形更有效地估计AGB。通过将SVI和地形结果添加到纹理数据中可以提高AGB估计的性能;结合使用这三种数据类型可以获得最佳结果。

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