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Principal Component Analysis and Its Application on Banana Fields Mapping Using ENVISAT ASAR Data in Zhangzhou, Fujian Province 被引量:1

基于主成分分析的ENVISAT ASAR数据在福建省漳州市香蕉园地提取中的应用(英文)
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摘要 Banana is one of the main economic agrotypes in Zhangzhou, Fujian Province. The multitemporal ENVlSAT ASAR data with different polarization are used to classify the banana fields in this paper. Principal component analysis (PCA) was applied for six pairs of ASAR dual-polarization data. For its large leaves, banana has high backscatter. So the value of banana fields is high and shows very bright in the 1st component, which makes it much easier for banana fields extraction. Dual-polarization data provide more information, and the W and VH backscatter of banana show different characters with other land covers. Based on the analysis of the radar signature of banana fields and other land covers and the 1st compo- nent, banana fields are classified using object-oriented classifier. Compared to the field survey data and ASTER data, the accuracy of banana fields in the study area is 83.5%. It shows that the principal component analysis provides the useful information in SAR images analysis and makes the extraction of banana fields easier. Banana is one of the main economic agrotypes in Zhangzhou, Fujian Province. The multitemporal ENVISAT ASAR data with different polarization are used to classify the banana fields in this paper. Principal component analysis (PCA) was applied for six pairs of ASAR dual-polarization data. For its large leaves, banana has high backscatter. So the value of banana fields is high and shows very bright in the 1st component, which makes it much easier for banana fields extraction. Dual-polarization data provide more information, and the VV and VH backscatter of banana show different characters with other land covers. Based on the analysis of the radar signature of banana fields and other land covers and the 1st component, banana fields are classified using object-oriented classifier. Compared to the field survey data and ASTER data, the accuracy of banana fields in the study area is 83.5%. It shows that the principal component analysis provides the useful information in SAR images analysis and makes the extraction of banana fields easier.
出处 《Geo-Spatial Information Science》 2009年第2期142-145,共4页 地球空间信息科学学报(英文)
基金 Supported by the Program for New Century Excellent Talents in University (NCET-05-0573) Fujian Science and Technology Project (No2006I0018) the Science Project of the Education Department of Fujian Province(No 2006F5022)
关键词 ENVISAT ASAR principle component analysis (PCA) dual-polarization data banana fields 主成分分析 福建漳州 香蕉 合成孔径雷达图像 ASTER数据 环境 制图 应用
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