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首页> 外文期刊>Photogrammetric Engineering & Remote Sensing: Journal of the American Society of Photogrammetry >Pixel Level Fusion of Panchromatic and Multispectral Images Based on Correspondence Analysis
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Pixel Level Fusion of Panchromatic and Multispectral Images Based on Correspondence Analysis

机译:基于对应分析的全色和多光谱图像像素级融合

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摘要

A pixel level data fusion approach based on correspondence analysis (CA) is introduced for high spatial and spectral resolution satellite data. Principal component analysis (PCA) is a well-known multivariate data analysis and fusion technique in the remote sensing community. Related to PCA but a more recent multivariate technique, correspondence analysis, is applied to fuse panchromatic data with multi-spectral data in order to improve the quality of the final fused image. In the CA-based fusion approach, fusion takes place in the last component as opposed to the first component of the PCA-based approach. This new approach is then quantitatively compared to the PCA fusion approach using Landsat ETM+, QuickBird, and two Ikonos (with and without dynamic range adjustment) test imagery. The new approach provided an excellent spectral accuracy when synthesizing images from multispectral and high spatial resolution panchromatic imagery.
机译:针对高空间和光谱分辨率的卫星数据,引入了基于对应分析(CA)的像素级数据融合方法。主成分分析(PCA)是遥感界众所周知的多元数据分析和融合技术。与PCA相关,但较新的多元技术(对应分析)用于将全色数据与多光谱数据融合,以提高最终融合图像的质量。在基于CA的融合方法中,融合发生在与基于PCA的方法的第一个组件相对的最后一个组件中。然后,将该新方法与使用Landsat ETM +,QuickBird和两个Ikonos(带有和不带有动态范围调整)测试图像的PCA融合方法进行定量比较。当从多光谱和高空间分辨率全色图像合成图像时,新方法提供了出色的光谱精度。

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