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面向提高图像分辨率的遥感数据融合新算法
引用本文:陈豪,俞能海,刘政凯,张荣. 面向提高图像分辨率的遥感数据融合新算法[J]. 软件学报, 2001, 12(10): 1534-1539
作者姓名:陈豪  俞能海  刘政凯  张荣
作者单位:中国科学技术大学电子工程与信息科学系,
基金项目:国家“九五”重点科技攻关资助项目(96-B02-01-05)
摘    要:在遥感应用研究中,数据融合技术有着非常广泛的应用.主分量分析方法(principalcomponentanalysis,简称PCA)是一种经典的遥感数据融合技术,在主分量分析方法的基础上,将小波变换与其结合起来,提出了一种新的基于小波叠加的PCA融合算法(addingwaveletcoefficientsprincipalcomponentanalysis,简称AWPCA).实验证明,与原来的PCA和IHS方法相比,基于小波叠加的PCA融合算法进一步提高了融合信息的质量,并能应用于其他需要高分辨率图像的场合中.

关 键 词:数据融合  小波变换  主分量变换(principal component analysis)  AWPCA(addingwavelet coefficients principal component analysis)
收稿时间:2000-05-23
修稿时间:2000-05-23

A New Data Fusion Algorithm for Improving Remote Sensing Images Resolution
CHEN Hao,YU Neng hai,LIU Zheng kai and ZHANG Rong. A New Data Fusion Algorithm for Improving Remote Sensing Images Resolution[J]. Journal of Software, 2001, 12(10): 1534-1539
Authors:CHEN Hao  YU Neng hai  LIU Zheng kai  ZHANG Rong
Abstract:Data fusion has been widely applied in the remote sensing research field. Principal component analysis (PCA) is one of the standard methods for data fusion. In this paper, a new algorithm--adding wavelet coefficients principal component analysis (AWPCA) is presented, which is based on principal component analysis (PCA) and is gotten from combining PCA and wavelet transform. The experimental results demonstrate that the higher quality image is obtained by AWPCA than by IHS and PCA mergers. AWPCA can be also applied in other fields where the high-resolution image is required.
Keywords:data fusion  wavelet transform  PCA (principal component analysis)  AWPCA (adding wavelet coefficients principal component analysis)  
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