Panchromatic and multi-spectral image fusion method based on two-step sparse representation and wavelet transform

G. He, Siyuan Xing, Dandan Dong, Ximei Zhao
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引用次数: 1

Abstract

Based on the characteristics of two-step sparse coding and multi-scale analysis of wavelet transform, a novel fusion algorithm based on two-step sparse coding (Two Step Sparse Representation, TSSR) and wavelet transform is proposed. The two-step sparse strategy is used to construct the corresponding dictionary for the low-frequency component and the down- sampled low-frequency component respectively, which avoids the training process of the traditional sparse representation and improves the computing speed. At the same time, the sparse coefficient solution based on two-step sparse coding is closer to the original signal than the one-step sparse solution in traditional sparse representation, and the precision of the algorithm is higher. Experimental results and analysis show that the proposed method can not only keep the spectral characteristics, but also can effectively integrate the spatial detail information of panchromatic images. The computing time is much faster than the traditional sparse method, and it has more advantages than wavelet transform and traditional sparse representation with excellent fusion effect.
基于两步稀疏表示和小波变换的全色与多光谱图像融合方法
基于两步稀疏编码和小波变换多尺度分析的特点,提出了一种基于两步稀疏编码和小波变换的融合算法(Two Step sparse Representation, TSSR)。采用两步稀疏策略分别对低频分量和下采样的低频分量构建相应的字典,避免了传统稀疏表示的训练过程,提高了计算速度。同时,基于两步稀疏编码的稀疏系数解比传统稀疏表示的一步稀疏解更接近原始信号,算法精度更高。实验结果和分析表明,该方法既能保持全色图像的光谱特征,又能有效地整合全色图像的空间细节信息。与传统的稀疏表示相比,该方法的计算速度快得多,具有小波变换和传统稀疏表示所没有的优点,融合效果好。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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