中国科学院机构知识库网格
Chinese Academy of Sciences Institutional Repositories Grid
A knowledge-based similarity classifier to stratify sample units to improve the estimation precision

文献类型:SCI/SSCI论文

作者Li L. F. ; Wang J. F. ; Leung H.
发表日期2009
关键词hyperspectral imagery land algorithm design model area
英文摘要This paper presents a comprehensive knowledge-based similarity classifier that uses remote sensing images and other auxiliary data to map spatial heterogeneity, for stratifying sample units distributed at the geographical landscape in order to improve the precision of the estimate of interest. Our method emphasises the decrease of bias so as to produce the high-quality stratifying frame. For this purpose, the method takes some necessary measures such as use of auxiliary variables including spectral bands, physical and socioeconomic data to help cluster analysis, correlation analysis between auxiliary variables and the goal variable to remove irrelevant data and consideration of spatial correlation in cluster analysis through the density-based unsupervised learning etc. Furthermore, considering the time-consuming characteristic of clustering huge spatiotemporal datasets, the method uses non-parametric supervised learning to induce rules for clustered classes. The rules could be efficiently used to group pixels into different classes of similarity. Then in the method, the pixel-level similarity image was vectorised into polygons with different group labels, thus producing the vector map of geospatial heterogeneity as an easy-to-use stratification frame. Last, to have an accurate estimation of the goal variable, our method re-divided sample units while the units covered by different strata and considered the effect of the sample size in the estimation algorithm. In the survey case of the cultivated land area, the proposed method achieves higher accuracy and a better coefficient of relative efficiency (RE) of stratification with its estimate closer to the observed value in comparison with other stratification strategies, e.g., k-means, SOM and those similar to eco-regions. Our method has potential practical merits as a good stratification strategy can increase the precision and considerably save the cost of sampling for many large regions, such as those in China, to be surveyed.
出处International Journal of Remote Sensing
30
5
1207-1234
收录类别SCI
语种英语
ISSN号0143-1161
源URL[http://ir.igsnrr.ac.cn/handle/311030/23641]  
专题地理科学与资源研究所_历年回溯文献
推荐引用方式
GB/T 7714
Li L. F.,Wang J. F.,Leung H.. A knowledge-based similarity classifier to stratify sample units to improve the estimation precision. 2009.

入库方式: OAI收割

来源:地理科学与资源研究所

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