CHEN Jin, CHEN Yun-hao, HE Chun-yang, et al. Sub-pixel Model for Vegetation Fraction Estimation based on Land Cover Classification[J]. National Remote Sensing Bulletin, 2001, (6): 416-422. DOI: 10.11834/jrs.20010603.
Sub-pixel Model for Vegetation Fraction Estimation based on Land Cover Classification
is a very important parameter in developing climate and ecology model. However
to measure the vegetation fraction by fieldwork a job of wasting manpower and financial resources with low
p
recision work
which requires estimation of vegetation fraction from remote sensing data. This study explores the potential of deriving vegetation fraction from normalized difference vegetation index (\%NDVI)\% using the TM data. Under the assumption that the pixel of TM image is a mosaic structure
sub
p
ixel models for vegetation fraction estimation are introduced firstly in this paper. Then the idea of using different sub
p
ixel model for vegetation fraction estimation based on land cover classification is proposed. The "dense vegetation model" is used to calculate the vegetation fraction in woodland
orchard and city zone
and the "nondense vegetation model" is used to calculate the vegetation fraction in cropland and meadow area.\;As a result of case study in Haidian district
Beijing
the accuracy rate of vegetation fraction estimation by using "dense vegetation model" and "nondense vegetation model" synchronously based on land cove classification is obtained about 75.4%
which is 5.8% higher than that of using "dense vegetation model" only. The accuracy rate of vegetation fraction estimation by using this model is high.\;Despite the difference between observed and estimated values for some conditions
the Sub
p
ixel model seems to be a good approach for estimating vegetation fraction at a regional scale. This approach may be an important tool for solving the problems in the monitoring of regional vegetation fraction over large area.
Institute of Remote Sensing and Digital Earth, Chinese Academy of Sciences
Institute of Remote Sensing and Digital Earth, Chinese Academy of Science
College of Computer Science and Technology,Zhejiang University of Technology
3,4),CAI Danlu~1, KONG Bing~5,JIA Yuerong~6,AN Xudong~1,MA Jianwei~5,ZHAO Tiexiong~6,KANG Lihua~1 1.Institute of Remote Sensing Application,Chinese Academy of Science
Academy of Disaster Reduction and Emergency Management,Beijing Normal University