Title :
A sensitivity criterion for BRDF model inversion analysis
Author :
Mu, Xihan ; Yan, Guangjian ; Zeng, Lifa ; Li, Zhao-Liang ; Zhang, Xiaoyu
Author_Institution :
Res. Center for Remote Sensing & GIS, Beijing Normal Univ.
Abstract :
The inversion of physical models in remote sensing is difficult due to its ill-posed essence. Though scientists have been realizing that the inversion result is much concerned with sensitivities of parameters, how to define the sensitivity of a parameter in inversion is still under discussion. In this paper, an "S Index" is proposed to derive S Ratio, a ratio of one input parameter\´s S Index to the sum of all other S Indices, as a useful sensitivity criterion. Moreover, we analyzed S index and S Ratio based on the information transfer theory. It is shown that S Ratio is related with information distribution ratio in inversion. The value of S Ratio may vary with different ground covers, soil types, moisture, geometries and bands. We took SAIL model as an example to illustrate the use of S Ratio under several typical scenes. Multi-angular datasets were generated for these scenes and further been used to retrieve 7 parameters of the model. The results suggest that the inversion accuracy is strongly correlated to S Ratio. Another two sensitivity indices are also demonstrated as a comparison. As a result, we could use it to estimate the sensitivity of parameters in a certain inversion step and which type of datasets is better for inversion under various cases. Such a priori information could be important before data selection
Keywords :
Bayes methods; information retrieval; inverse problems; moisture; sensitivity; soil; vegetation mapping; BRDF model inversion analysis; S Index; S Ratio; SAIL model; bidirectional reflectance distribution function; data selection; ground cover; ill-posed essence; information distribution ratio; information retrieval; information transfer theory; multiangular dataset; parameter sensitivity; remote sensing; sensitivity criterion; soil band; soil geometry; soil moisture; soil type; Atmospheric modeling; Cities and towns; Geographic Information Systems; Geography; Information retrieval; Layout; Reflectivity; Remote sensing; Sensitivity analysis; Uncertainty;
Conference_Titel :
Geoscience and Remote Sensing Symposium, 2004. IGARSS '04. Proceedings. 2004 IEEE International
Conference_Location :
Anchorage, AK
Print_ISBN :
0-7803-8742-2
DOI :
10.1109/IGARSS.2004.1370149