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REMOTE SENSING FOR LAND & RESOURCES    1991, Vol. 3 Issue (1) : 9-19     DOI: 10.6046/gtzyyg.1991.01.02
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GEOMETRIC-OPTICAL BIDIRECTIONAL REFLECTANCE MODELLING OF GROUND OBJECTS AND ITS PROGRESS IN MEASUREMENT
Li Xiaowen1, A. Strahler1, Zhu Qijiang2, Liu Guangcheng3, Zhang Renhua4, Liu Yi5, Yu Xianping6, Li Jiquan6
1. Center for Remote sensing, Boston University;
2. Beijing Normal University;
3. Sichuan Academy of Forestly;
4. Institute of Geography, Academia Sinica;
5. Institute of Remote Sensing,Academia Sinica;
6. China Academy of Forestry
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Abstract  

In this paper authors introduce the concept of bidirectional reflectance and its relation to 3-D spatial structure of ground objects. It is suggested to develop appropriate BRDF modes for various kinds of earth surface along with the process to set up a high spectral resolution data base for their signature. Otherwise, it is pointed:out, the costly data base can hardly deal with the great diversity of natural scene in composition and structure. Also the author gives a revise to Strahler-Jupp model and introduce the new progress of bidirectional reflectance measurement.

Keywords Remote sensing      Wall-rock alteration      Ratio method      Principle analysis      sieving and evaluation     
Issue Date: 02 August 2011
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DUAN Yuan-Bin
LIU Deng-Zhong
XU Tao
XU Zheng-Qiang
CUI Zhi-Qiang
ZHAO Pei-Song
HONG Jiang-He
FU Fa-Kai
DIAO Chun-He
CHEN An-Wen
LI Gong-Song
Cite this article:   
DUAN Yuan-Bin,LIU Deng-Zhong,XU Tao, et al. GEOMETRIC-OPTICAL BIDIRECTIONAL REFLECTANCE MODELLING OF GROUND OBJECTS AND ITS PROGRESS IN MEASUREMENT[J]. REMOTE SENSING FOR LAND & RESOURCES, 1991, 3(1): 9-19.
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https://www.gtzyyg.com/EN/10.6046/gtzyyg.1991.01.02     OR     https://www.gtzyyg.com/EN/Y1991/V3/I1/9


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[3] Li Xiaowen and Strahler, Modeling the gap probability of a discontinuous vegetation canopy,IEEE Trans. GARS. GE-26. No. 2. pp161-170. 1988

[4] Li Xiaowen and Strahler, Geomulti-Optical bidirectional reflectance modeling of a coniferous forest canopy, IEEE Trans.GARS, GE-24, No. 6, pp 906-919, 1986

[5] Gerstl and Simmcr, Radiation Physics and modeling for Off-Nodin satellite-sensing of Non-Lam-beration Surface, Remote Sensing of Environment 20: 1-29, 1986
6.

[6] Li Xiaowen and Strahler, Modeling BidirecCional Reflectance of Forests and Woodlands Using Boolean Model and Geometric bptics, Submitted to Remote Sensing of Environment, 1990

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