基于小波的高光谱图像预压缩算法

Lei Chen, Chao Bei, Yujia Zhai, Jing-Xiang Wu
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引用次数: 5

摘要

针对基于小波变换的压缩方案难以有效、直接地利用高光谱图像的统计特性、光谱相关性和空间相关性等特性的问题,提出了一种新的基于小波变换的压缩框架,并在该框架中引入了预压缩过程。首先,根据高光谱相关性推导出波段间的一般关系;基于这种关系,设计了预压缩算法,将图像的波段分割成组,以极小的比特消耗去除每组内的光谱相关性和空间相关性。随后,采用基于三维分组DWT的算法进行进一步压缩。实验表明,与最知名的技术相比,基于dwt的框架所提出的方案可以显著提高性能,特别是在低比特率下。新框架具有良好的可扩展性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Efficient Wavelet-Based Compression for Hyperspectral Images Using Precompression Algorithm
Since it's difficult for DWT-based compression scheme to efficiently and directly utilize the various properties of hyperspectral images, such as their statistic characteristics, spectral correlation, and spatial correlation, a new framework of DWT-based compression is proposed and a so-called precompression process is built and introduced into it. Firstly, general relation between bands is deduced in accordance with the high spectral correlation. Based on the relation, precompression algorithm is designed to segment bands of the images into groups and remove spectral correlation and spatial correlation within each group by extremely few bits consumption. Afterwards, algorithm based on 3D packet DWT is adopted subsequently for further compression. Experiments show that the proposed schemes derived from the new DWT-based framework can significantly improve performance compared with the best known techniques, especially at low bitrates. And the new framework has excellent extensibility.
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