Application of ensemble kalman filter to geophysical parameters retrieval in remote sensing: A case study of kernel-driven BRDF model inversion

被引:0
|
作者
Jun Qin
Guangjian Yan
Shaomin Liu
Shunlin Liang
Hao Zhang
Jindi Wang
Xiaowen Li
机构
[1] Beijing Normal University,State Key Laboratory of Remote Sensing Science, School of Geography and Remote Sensing, Research Center for RS&GIS
[2] University of Maryland,Department of Geography, 2181 Lefrak Hall
来源
Science in China Series D | 2006年 / 49卷
关键词
remote sensing inversion; knowledge; posterior distribution; ensemble kalman filter; BRDF; kernel-driven model; albedo;
D O I
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中图分类号
学科分类号
摘要
The use of a priori knowledge in remote sensing inversion has great implications for ensuring the stability of inversion process and reducing uncertainties in retrieved results, especially under the condition of insufficient observations. Common optimization algorithms have difficulties in providing posterior distribution and thus cannot directly acquire uncertainties in inversion results, which is of no benefit to remote sensing application. In this article, ensemble Kalman filter (EnKF) has been introduced to retrieve surface geophysical parameters from remote sensing observations, which has the capability of not merely obtaining inversion results but also giving its posterior distribution. To show the advantage of EnKF, it is compared to standard MODIS AMBRALS algorithm and highly efficient global optimization method SCE-UA. The inversion abilities of kernel-driven BRDF models with different kernel combinations at several main cover types are emphatically discussed when observations are deficient and a priori knowledge is introduced into inversion.
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页码:632 / 640
页数:8
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