DocumentCode :
980395
Title :
Model-Associated Forest Parameter Retrieval Using VHF SAR Data at the Individual Tree Level
Author :
Kononov, Anatoliy Alekseevich ; Ka, Min-Ho
Author_Institution :
Korea Polytech. Univ., Siheung
Volume :
46
Issue :
1
fYear :
2008
Firstpage :
69
Lastpage :
84
Abstract :
A simple statistical extension at the individual tree level for an earlier-developed very high frequency forest backscatter model is proposed. This extended model treats trunk volumes as random quantities. A concept of random forest reflection coefficient is also introduced to characterize radar returns from individual trees. Based on the extended model, a set of algorithms for estimating the mean trunk (stem) volume from synthetic aperture radar data at the individual tree level is developed assuming that the areal tree density is known. The algorithms are specified for different scenarios related to a priori information on parameters of statistical distributions for the trunk volume and fluctuations of the forest reflection coefficient. An approximate lower bound on the standard deviation in the unbiased estimation of the mean trunk (stem) volume is proposed. This bound can be readily obtained by means of computer simulation for any specified statistical distribution for the trunk volume and fluctuations of the forest reflection coefficient. Performance analysis for the proposed algorithms is numerically performed by means of Monte Carlo simulation for a variety of scenarios. This analysis has shown that the algorithms provide nearly unbiased and efficient estimates, and the proposed lower bound is a very accurate approximation. The results of the study have demonstrated that the approach and methods developed in this paper suggest promising solutions in accurate forest parameter retrieval.
Keywords :
forestry; remote sensing by radar; synthetic aperture radar; vegetation; vegetation mapping; Monte Carlo simulation; VHF SAR data; areal tree density; individual tree level; model-associated forest parameter retrieval; random forest reflection coefficient; random quantities; statistical extension; synthetic aperture radar data; trunk volumes; very high frequency forest backscatter model; Algorithm design and analysis; Backscatter; Computer simulation; Fluctuations; Frequency; Information retrieval; Performance analysis; Radar; Reflection; Statistical distributions; Forest backscatter model; forest reflection coefficient; laser scanner; maximum likelihood; mean stem volume; mean trunk volume; method of moments; synthetic aperture radar (SAR); very high frequency (VHF);
fLanguage :
English
Journal_Title :
Geoscience and Remote Sensing, IEEE Transactions on
Publisher :
ieee
ISSN :
0196-2892
Type :
jour
DOI :
10.1109/TGRS.2007.907107
Filename :
4384458
Link To Document :
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