A hyperspectral image compression algorithm based on wavelet transformation and fractal composition (AWFC)

被引:0
作者
HU Xingtang
机构
关键词
wavelet transformation; fractal coding; image compression; hyperspectral image; HIPAS;
D O I
暂无
中图分类号
TP391.41 [];
学科分类号
080203 ;
摘要
Starting with a fractal-based image-compression algorithm based on wavelet transformation for hyperspectral images, the authors were able to obtain more spectral bands with the help of of hyperspectral remote sensing. Because large amounts of data and limited bandwidth complicate the storage and transmission of data measured by TB-level bits, it is important to compress image data acquired by hyperspectral sensors such as MODIS, PHI, and OMIS; otherwise, conventional lossless compression algorithms cannot reach adequate compression ratios. Other loss-compression methods can reach high compression ratios but lack good image fidelity, especially for hyperspectral image data. Among the third generation of image compression algorithms, fractal image compression based on wavelet transformation is superior to traditional compression methods, because it has high compression ratios and good image fidelity, and requires less computing time. To keep the spectral dimension invariable, the authors compared the results of two compression algorithms based on the storage-file structures of BSQ and of BIP, and improved the HV and Quadtree partitioning and domain-range matching algorithms in order to accelerate their encode/decode efficiency. The authors’ Hyperspectral Image Process and Analysis System (HIPAS) software used a VC++6.0 integrated development environment (IDE), with which good experimental results were obtained. Possible modifications of the algorithm and limitations of the method are also discussed.
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页码:48 / 56
页数:9
相关论文
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[1]  
Fractals and self similarity .2 Hutchinson J E. Indiana University Mathematics Journal . 1981