期刊文献+

线性变化消光S-RVoG模型的多基线PolInSAR森林高度反演 被引量:1

A Multi-baseline PolInSAR Forest Height Inversion Method Based on S-RVoG Model with Linearly Varying Extinction
原文传递
导出
摘要 随机地体散射(random volume over ground, RVoG)模型广泛应用于极化干涉合成孔径雷达(polarimetric synthetic aperture radar interferometry, PolInSAR)森林高度反演当中。该模型假设森林是随机均匀同质体,模型中消光系数为恒定值,未充分考虑森林的垂直异构性及地形起伏的影响。提出了一种基于线性变化消光Slope-RVoG(S-RVoG)模型的多基线PolInSAR森林高度反演方法。该方法假定消光系数随着高度呈线性变化,并根据地形坡度对垂直向有效波数进行校正,采用多基线PolInSAR数据解算线性变化消光S-RVoG模型参数,进而获取森林高度。通过选取欧空局AfriSAR 2016项目获取的P波段F-SAR机载PolInSAR数据进行实验验证。实验结果显示,提出的算法所获取的森林高度结果与激光雷达获取的森林高度相比,均方根误差(root mean square error,RMSE)为4.27 m,相对误差为9.9%。相较于传统S-RVoG模型多基线算法获取的森林高度RMSE为5.97 m,精度提高约28.4%。 Objectives: The random volume over ground(RVoG) model is widely used in forest height inversion with polarimetric interferometric synthetic aperture radar(PolInSAR). The model assumes that the forest is a random uniform homogeneous body and the extinction coefficient in the model is a constant without considering the effects of forest vertical heterogeneity and terrain slope. This paper proposes a promising multi-baseline(MB) algorithm for forest height inversion based on a slope-RVoG(S-RVoG)model with linearly varying extinction. Methods: The effects of terrain slope and forest vertical heterogeneity on forest height inversion with the RVoG model are considered in the proposed algorithm. Firstly,the terrain slope is introduced to rectify the effective vertical wavenumber, and the S-RVoG model is derived on the basis of the basic RVoG model. Secondly, the linearly varying extinction coefficient, which is assumed to vary linearly with the forest height, is introduced into the S-RVoG model, and it can be solved by the Gaussian error function. Finally, MB PolInSAR datasets are used to solve the parameters of the S-RVoG model with linearly varying extinction, and the forest height can be obtained by the MB three-stage algorithm with coherence separation product criterion. The P-band F-SAR airborne PolInSAR datasets obtained by the 2016 AfriSAR campaign of the European Space Agency are selected for experimental verification. Results: The results of four MB algorithms, namely MB RVoG, MB S-RVoG, MB RVoG with linearly varying extinction, and MB S-RVoG with linearly varying extinction, are compared.The root mean square error(RMSE) and the relative error are used to evaluate the accuracy of the obtained forest height.(1) The forest height calculated by the MB RVoG algorithm is a significant overestimation,with RMSE of 6.57 m and relative error of 16.8%.(2) The RMSE of the MB S-RVoG algorithm is5.97 m, and the relative error is 15.1%. The accuracy is improved by about 10% with the addition of terrain slope correction.(3) The MB RVoG algorithm with linearly varying extinction has RMSE of 4.71 m and relative error of 11.0%. Compared with the conventional MB RVoG algorithm, it improves the accuracy by about 28.3%.(4) The RMSE of the MB S-RVOG algorithm with linearly varying extinction is4.27 m, and the relative error is 9.9%. Compared with the results of the MB RVoG algorithm and the MB S-RVOG algorithm, the accuracy is improved by about 35% and 28.4%, respectively. Conclusions: The RVoG model is widely used in PolInSAR forest height inversion. The MB S-RVOG algorithm with linearly varying extinction considers the effects of terrain slope and forest vertical heterogeneity simultaneously and introduces linearly varying extinction and terrain slope to correct the model, which makes up for the deficiency of the traditional RVoG model. The results show that the S-RVOG model with linearly varying extinction performs better in tropical forests with high forest density and great forest height.
作者 吴传军 汪长城 沈鹏 朱建军 付海强 WU Chuanjun;WANG Changcheng;SHEN Peng;ZHU Jianjun;FU Haiqiang(School of Geosciences and Info-physics,Central South University,Changsha 410083,China;Hunan Key Laboratory of Nonferrous Resources and Geological Hazards Exploration,Changsha 410083,China;Key Laboratory of Metallogenic Prediction of Nonferrous Metals and Geological Environment Monitoring of Ministry of Education,Central South University,Changsha 410083,China)
出处 《武汉大学学报(信息科学版)》 EI CAS CSCD 北大核心 2022年第1期149-156,共8页 Geomatics and Information Science of Wuhan University
基金 国家自然科学基金(41820104005,41671356,41531068,41842059)。
关键词 随机地体散射模型 极化干涉合成孔径雷达 森林高度 消光系数 地形坡度 random volume over ground model(RVoG) polarimetric synthetic aperture radar interferometry(PolInSAR) forest height extinction coefficient terrain slope
  • 相关文献

参考文献2

二级参考文献14

共引文献15

同被引文献4

引证文献1

相关作者

内容加载中请稍等...

相关机构

内容加载中请稍等...

相关主题

内容加载中请稍等...

浏览历史

内容加载中请稍等...
;
使用帮助 返回顶部