基于三维稀疏编码的高光谱图像去噪

Di Wu, Ye Zhang, Yushi Chen
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引用次数: 3

摘要

高光谱图像经常受到噪声的污染,为了有效地去除图像噪声,获得良好的检测效果。提出了一种基于三维稀疏编码的去噪方法。首先,为了充分利用高光谱数据的光谱信息,我们从hsi中提取小块,每个小块包含不同波段的相同面积。其次,我们使用上述方法提取所有的patch并对这些patch进行训练,得到字典,进一步计算稀疏系数。最后,通过字典和稀疏系数对HISs进行还原。利用AVIRIS和ROSIS收集的HSIs进行实验。结果表明,与普通的二维稀疏编码方法相比,三维稀疏编码方法在主观视觉和客观评价标准上都能有效提高恢复性能。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
3D sparse coding based denoising of hyperspectral images
Hyperspectral images (HSIs) are often contaminated by noise, in order to remove the image noise efficiently and acquire excellent results. We propose a new denoising method based on 3D sparse coding. Firstly, to make full use of spectral information of hyperspectral data, we extract patches from HSIs and each patch contains the same area of different band. Secondly, we use aforementioned method to extract all patches and train these patches, the dictionary can be obtained, further calculate sparse coefficients. Finally, we can restore the HISs through the dictionary and the sparse coefficients. Experiments are implemented using the HSIs collected by AVIRIS and ROSIS. Results indicate that compared with common 2D sparse coding method, 3D sparse method can effectively improve the restoration performance for both subjective visual and objective evaluation criterion.
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