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Mapping Spartina alterniflora Biomass Using LiDAR and Hyperspectral Data

机译:使用LiDAR和高光谱数据绘制互花米草生物量

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Large-scale coastal reclamation has caused significant changes in Spartina alterniflora ( S. alterniflora ) distribution in coastal regions of China. However, few studies have focused on estimation of the wetland vegetation biomass, especially of S. alterniflora , in coastal regions using LiDAR and hyperspectral data. In this study, the applicability of LiDAR and hypersectral data for estimating S. alterniflora biomass and mapping its distribution in coastal regions of China was explored to attempt problems of wetland vegetation biomass estimation caused by different vegetation types and different canopy height. Results showed that the highest correlation coefficient with S. alterniflora biomass was vegetation canopy height (0.817), followed by Normalized Difference Vegetation Index (NDVI) (0.635), Atmospherically Resistant Vegetation Index (ARVI) (0.631), Visible Atmospherically Resistant Index (VARI) (0.599), and Ratio Vegetation Index (RVI) (0.520). A multivariate linear estimation model of S. alterniflora biomass using a variable backward elimination method was developed with R squared coefficient of 0.902 and the residual predictive deviation (RPD) of 2.62. The model accuracy of S. alterniflora biomass was higher than that of wetland vegetation for mixed vegetation types because it improved the estimation accuracy caused by differences in spectral features and canopy heights of different kinds of wetland vegetation. The result indicated that estimated S. alterniflora biomass was in agreement with the field survey result. Owing to its basis in the fusion of LiDAR data and hyperspectral data, the proposed method provides an advantage for S. alterniflora mapping. The integration of high spatial resolution hyperspectral imagery and LiDAR data derived canopy height had significantly improved the accuracy of mapping S. alterniflora biomass.
机译:大规模的沿海开垦已引起中国沿海地区互花米草(S. alterniflora)分布的重大变化。然而,很少有研究集中在利用LiDAR和高光谱数据估算沿海地区的湿地植被生物量,尤其是互花米草。在这项研究中,探讨了LiDAR和高secsec数据在估算中国沿海地区互花米草生物量并绘制其分布图方面的适用性,以解决由不同植被类型和不同冠层高度引起的湿地植被生物量估算问题。结果表明,与互花米草生物量最大的相关系数是植被冠层高度(0.817),其次是归一化植被指数(NDVI)(0.635),耐大气植被指数(ARVI)(0.631),可见耐大气指数(VARI) )(0.599)和比率植被指数(RVI)(0.520)。利用可变后向消除方法建立了互花米草生物量的多元线性估计模型,R平方系数为0.902,残留预测偏差(RPD)为2.62。对于混合植被类型,互花米草生物量的模型准确性高于湿地植被,因为它提高了由不同种类湿地植被的光谱特征和冠层高度差异引起的估计准确性。结果表明,估计的互花米链菌生物量与现场调查结果吻合。由于其在LiDAR数据和高光谱数据融合中的基础,该方法为互花米草映射提供了优势。高空间分辨率高光谱图像与LiDAR数据导出的冠层高度的集成显着提高了互花米草生物量测绘的准确性。

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