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首页> 外文期刊>International journal of applied earth observation and geoinformation >High density biomass estimation for wetland vegetation using worldview-2 imagery and random forest regression algorithm
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High density biomass estimation for wetland vegetation using worldview-2 imagery and random forest regression algorithm

机译:使用Worldview-2影像和随机森林回归算法估算湿地植被的高密度生物量

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The saturation problem associated with the use of NDVI for biomass estimation in high canopy density vegetation is a well known phenomenon. Recent field spectroscopy experiments have shown that narrow band vegetation indices computed from the red edge and the NIR shoulder can improve the estimation of biomass in such situations. However, the wide scale unavailability of high spectral resolution satellite sensors with red edge bands has not seen the up-scaling of these techniques to spaceborne remote sensing of high density biomass. This paper explored the possibility of estimate biomass in a densely vegetated wetland area using normalized difference vegetation index (NDVI) computed from WorldView-2 imagery, which contains a red edge band centred at 725 nm. NDVI was calculated from all possible two band combinations of WorldView-2. Subsequently, we utilized the random forest regression algorithm as variable selection and a regression method for predicting wetland biomass. The performance of random forest regression in predicting biomass was then compared against the widely used stepwise multiple linear regression. Predicting biomass on an independent test data set using the random forest algorithm and 3 NDVIs computed from the red edge and NIR bands yielded a root mean square error of prediction (RMSEP) of 0.441 kg/m 2 (12.9% of observed mean biomass) as compared to the stepwise multiple linear regression that produced an RMSEP of 0.5465 kg/m 2 (15.9% of observed mean biomass). The results demonstrate the utility of WorldView-2 imagery and random forest regression in estimating and ultimately mapping vegetation biomass at high density-a previously challenging task with broad band satellite sensors.
机译:在高冠层密度植被中与使用NDVI进行生物量估计有关的饱和度问题是众所周知的现象。最近的现场光谱实验表明,从红色边缘和NIR肩部计算出的窄带植被指数可以改善这种情况下生物量的估算。然而,具有红色边缘带的高光谱分辨率卫星传感器的大规模不可得性还没有看到将这些技术扩展到高密度生物质的星载遥感。本文探讨了使用WorldView-2影像计算出的归一化植被指数(NDVI)估算茂密湿地地区生物量的可能性,该指数包含一个以725 nm为中心的红色边缘带。 NDVI是根据WorldView-2的所有可能的两个频段组合计算得出的。随后,我们利用随机森林回归算法作为变量选择和回归方法来预测湿地生物量。然后将随机森林回归在预测生物量方面的性能与广泛使用的逐步多元线性回归进行了比较。使用随机森林算法在独立的测试数据集上预测生物量,并根据红边和NIR波段计算出3个NDVI,得出的预测均方根误差(RMSEP)为0.441 kg / m 2(观察到的平均生物量的12.9%)为与逐步多元线性回归相比,后者的RMSEP为0.5465 kg / m 2(观察到的平均生物量的15.9%)。结果表明,WorldView-2影像和随机森林回归法可用于估算和最终绘制高密度的植被生物量,这是宽带卫星传感器以前的一项艰巨任务。

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