Multispectral KLT-wavelet data compression for Landsat thematic mapper images

B. R. Epstein, R. Hingorani, J. M. Shapiro, M. Czigler
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引用次数: 80

Abstract

The authors report a methodology that enhances the compression of Landsat thematic mapper (TM) multispectral imagery, while reducing the image information loss. The method first removes interband correlation of the image data by use of the Karhunen-Loeve transform (KLT) to produce the image principal components. Each principal component is spatially decorrelated using a discrete wavelet transform. The resulting coefficients are then quantized and losslessly encoded. Image compressions of typically 80:1 demonstrate that the method should be quite suitable for rapid browsing applications where small amounts of image loss are tolerable.<>
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多光谱klt -小波数据压缩的Landsat专题制图器图像
作者报告了一种方法,该方法增强了陆地卫星主题绘图器(TM)多光谱图像的压缩,同时减少了图像信息的损失。该方法首先利用Karhunen-Loeve变换(KLT)去除图像数据的带间相关性,生成图像主成分;每个主成分使用离散小波变换在空间上去相关。然后对得到的系数进行量化和无损编码。图像压缩通常为80:1,表明该方法应该非常适合快速浏览应用程序,在这些应用程序中可以容忍少量的图像丢失
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