首页> 外文期刊>Selected Topics in Applied Earth Observations and Remote Sensing, IEEE Journal of >Evaluation on Spaceborne Multispectral Images, Airborne Hyperspectral, and LiDAR Data for Extracting Spatial Distribution and Estimating Aboveground Biomass of Wetland Vegetation Suaeda salsa
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Evaluation on Spaceborne Multispectral Images, Airborne Hyperspectral, and LiDAR Data for Extracting Spatial Distribution and Estimating Aboveground Biomass of Wetland Vegetation Suaeda salsa

机译:评估星载多光谱图像,机载高光谱和LiDAR数据以提取湿地植被的空间分布并估算地上生物量 Suaeda salsa

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摘要

Suaeda salsa (S. salsa) has a significant protective effect on salt marshes in coastal wetlands. In this study, the abilities of airborne multispectral images, spaceborne hyperspectral images, and LiDAR data in spatial distribution extraction and aboveground biomass (AB) estimation of S. salsa were explored for mapping the spatial distribution of S. salsa AB. Results showed that the increasing spectral and structural features were conducive to improving the classification accuracy of wetland vegetation and the AB estimation accuracy of S. salsa. The fusion of hyperspectral and LiDAR data provided the highest accuracies for wetlands classification and AB estimation of S. salsa in the study. Multispectral images alone provided relatively high user's and producer's accuracies of S. salsa classification (87.04% and 88.28%, respectively). Compared to multispectral images, hyperspectral data with more spectral features slightly improved the Kappa coefficient and overall accuracy. The AB estimation reached a relatively reliable accuracy based only on hyperspectral data (R-2 of 0.812, root-mean-square error of 0.295, estimation error of 24.56%, residual predictive deviation of 2.033, and the sums of squares ratio of 1.049). The addition of LiDAR data produced a limited improvement in the process of extraction and AB estimation of S. salsa. The spatial distribution of mapped S. salsa AB was consistent with the field survey results. This study provided an important reference for the effective information extraction and AB estimation of wetland vegetation S. salsa.
机译:Suaeda salsa(S. salsa)对沿海湿地的盐沼具有重要的保护作用。在这项研究中,探索了机载多光谱图像,星载高光谱图像和LiDAR数据在S. salsa的空间分布提取和地上生物量(AB)估计中的能力,以绘制S. salsa AB的空间分布。结果表明,光谱和结构特征的增加有利于提高湿地植被的分类准确度和莎草的AB估测准确度。高光谱和LiDAR数据的融合为这项研究提供了最高的湿地分类精度和沙门氏菌AB估计值。仅多光谱图像就可以为使用者和生产者提供相对较高的沙门氏菌分类精度(分别为87.04%和88.28%)。与多光谱图像相比,具有更多光谱特征的高光谱数据会稍微改善Kappa系数和整体准确性。仅基于高光谱数据(AB的R-2为0.812,均方根误差为0.295,估计误差为24.56%,残差预测偏差为2.033,平方和比为1.049),AB估计达到了相对可靠的精度。 。 LiDAR数据的添加在S. salsa的提取和AB估计过程中产生了有限的改进。所测得的S. salsa AB的空间分布与实地调查结果一致。该研究为湿地植被S. salsa的有效信息提取和AB估计提供了重要参考。

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