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Mapping dominant vegetation communities at Meili Snow Mountain,Yunnan Province,China using satellite imagery and plant community data
Authors:Z Zhang  E De Clercq  X K Ou  R De Wulf  L Verbeke
Institution:1. Institute of Ecology and Geobotany, Yunnan University , 52 Cuihu Road, 650091, Kunming, China Zhiming_zhang76@hotmail.com;3. Laboratory of Forest Management and Spatial Information Techniques, Ghent University , Coupure Links 653, 9000, Ghent, Belgium;4. Institute of Ecology and Geobotany, Yunnan University , 52 Cuihu Road, 650091, Kunming, China
Abstract:Mapping dominant vegetation communities is important work for vegetation scientists. It is very difficult to map dominant vegetation communities using multispectral remote sensing data only, especially in mountain areas. However plant community data contain useful information about the relationships between plant communities and their environment. In this paper, plant community data are linked with remote sensing to map vegetation communities. The Bayesian soft classifier was used to produce posterior probability images for each class. These images were used to calculate the prior probabilities. One hundred and eighty plant plots at Meili Snow Mountain, Yunnan Province, China were used to characterize the vegetation distribution for each class along altitude gradients. Then, the frequencies were used to modify the prior probabilities of each class. After stratification in a vegetation part and a non-vegetation part, a maximum-likelihood classification with equal prior probabilities was conducted, yielding an overall accuracy of 82.1% and a kappa accuracy of 0.797. Maximum-likelihood classification with modified prior probabilities in the vegetation part, conducted with a conventional maximum-likelihood classification for the non-vegetation part, yielded an overall accuracy of 87.7%, and a kappa accuracy of 0.861.
Keywords:Maximum likelihood classifier  Prior probabilities  Plant community mapping  Ancillary data  Mountain regions
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