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High density biomass estimation: Testing the utility of Vegetation Indices and the Random Forest Regression algorithm

机译:高密度生物量估算:测试植被指数和随机森林回归算法的实用性

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Accurate estimates of wetland above ground biomass (AGB) have increasingly been identified as a critical component for an efficient wetland monitoring and management system. Multispectral remote sensing based indices have proven inadequate in estimating biomass especially at high canopy density. In this study we investigated the use of vegetation indices derived from field hyperspectral data to estimate papyrus (Cyperus papyrus) biomass. Spectral and above ground biomass measurements were collected at three different areas in the Greater St Lucia Wetland Park, South Africa. We evaluated the potential of narrow-band normalized difference vegetation index (NDVI) calculated from all possible two band combinations between 700 nm to 1000 nm. Subsequently, we utilized random forest (RF) as a modeling tool for predicting papyrus biomass. The results showed that papyrus biomass can be estimated at full canopy level under swamp wetland conditions (R~2 = 0.73, RMSEP = 276 g/m~2; 8.6 % of the mean). From our results, random forest has proved to be a robust feature selection method in identifying the minimum number (n = 4) of narrow-band NDVIs that offered the best overall predictive accuracy. The results can be scaled to spaceborne or airborne sensors such as Hyperion or HYMAP for predicting vegetation biomass in wetland areas using remotely sensed data.
机译:对地上生物量(AGB)以上湿地的准确估算已日益被视为有效的湿地监测和管理系统的关键组成部分。事实证明,基于多光谱遥感的指标不足以估算生物量,尤其是在高树冠密度下。在这项研究中,我们调查了使用从田间高光谱数据得出的植被指数来估算纸莎草(莎草纸莎草)生物量的方法。在南非大圣露西亚湿地公园的三个不同区域收集了光谱和地上生物量的测量值。我们评估了根据700 nm至1000 nm之间所有可能的两个波段组合计算出的窄带归一化植被指数(NDVI)的潜力。随后,我们利用随机森林(RF)作为预测纸莎草生物量的建模工具。结果表明,在沼泽湿地条件下,可以估算全冠层纸莎草生物量(R〜2 = 0.73,RMSEP = 276 g / m〜2;平均值的8.6%)。从我们的结果来看,随机森林已被证明是识别最小数量(n = 4)的窄带NDVI的稳健的特征选择方法,该方法可提供最佳的总体预测精度。可以将结果缩放到星载或机载传感器(例如Hyperion或HYMAP),以使用遥感数据预测湿地地区的植被生物量。

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