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纸质出版日期: 2009 ,
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[1].Corn area estimation by combining SPOT 5 image with sampling theory[J].遥感学报,2009,13(04):696-700.
WANG Shuang, ZHU Xiu-fang, PAN Yao-zhong, et al. Corn area estimation by combining SPOT 5 image with sampling theory[J]. Journal of Remote Sensing, 2009,13(4):696-700.
More and more attention has been paid to the best use of medium and high resolution images and statistical data
combined with low resolution images on crop area estimation. However
information abstraction with high and medium resolution images also has many uncertainties due to factors such as spectral difference within classes
spectral similarity between classes
and the mixed pixels. This paper presents a method for crop area estimation with high and medium resolution images based on statistical sampling and amount controlling. Firstly
sample units are obtained by stratified sampling. Then sampling units are interpreted
and the estimator of crop planting acreage is extrapolated. Finally the spatial distribution mapping is classified and refined under the restriction derived from sampling estimator. Moreover
we validate the method presented above by using a SPOT-5 subset image (with resolution of 10m
August 21
2006) of Sanhe
Hebei province. The results indicate that the overall accuracy of the new method is 93.8%
with kappa 0.88
based on cluster samples
which is higher than that of MLC method. The new method has promising practicality and popularity in large-cover measurement of crop planting acreage.
More and more attention has been paid to the best use of medium and high resolution images and statistical data
combined with low resolution images on crop area estimation. However
information abstraction with high and medium resolution images also has many uncertainties due to factors such as spectral difference within classes
spectral similarity between classes
and the mixed pixels. This paper presents a method for crop area estimation with high and medium resolution images based on statistical sampling and amount controlling. Firstly
sample units are obtained by stratified sampling. Then sampling units are interpreted
and the estimator of crop planting acreage is extrapolated. Finally the spatial distribution mapping is classified and refined under the restriction derived from sampling estimator. Moreover
we validate the method presented above by using a SPOT-5 subset image (with resolution of 10m
August 21
2006) of Sanhe
Hebei province. The results indicate that the overall accuracy of the new method is 93.8%
with kappa 0.88
based on cluster samples
which is higher than that of MLC method. The new method has promising practicality and popularity in large-cover measurement of crop planting acreage.
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