基于参考去噪的多通道数据分量图像增强

S. Abramov, M. Uss, V. Lukin, B. Vozel, K. Chehdi, K. Egiazarian
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引用次数: 0

摘要

多通道(多光谱、高光谱)遥感数据可能包括质量比其他成分差得多的垃圾成分图像。这可能是由于此类垃圾信道(子带)中信息分量的强噪声或低动态范围。这样的组件图像有时被忽略(不用于进一步的处理或分析)。同时,可以对其进行预滤波(去噪)以增强其性能。为了有效地做到这一点,我们建议利用所谓的参考图像-具有相对高质量的成分图像,其特征是相对于预滤波的图像具有高相似性。在这个总体思路的框架内,我们研究了几个特定的问题:如何选择可以用作参考的分量图像,参考图像可以使用哪些变换,以及如何执行去噪。结果表明,既可以采用与垃圾图像相同分辨率的分量图像作为参考,也可以采用分辨率更高的分量图像作为参考。不仅可以利用一个引用,也可以利用两个引用。去相关后可以使用不同的滤波器。根据不同的质量标准提供了滤波图像的增强。给出了实际多通道图像去噪的实例,证明了该方法的有效性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Enhancement of Component Images of Multichannel Data by Denoising with Reference
Multichannel (multispectral, hyperspectral) remote sensing data may include junk component images which have quality considerably worse than other components. This can be due to intensive noise or low dynamic range of information component in such junk channels (sub-bands). Such component images are sometimes ignored (not used in further processing or analysis). Meanwhile, they can be subject to pre-filtering (denoising) in order to enhance them. To do this effectively, we propose to exploit the so-called reference images – component images that have relatively high quality and that are characterized by high similarity with respect to the image subject to pre-filtering. Within the framework of this general idea, we study several particular problems: how to choose component images that can be exploited as references, what transformations of reference images can be used, and how to perform the denoising. It is shown that one can employ as references component images of the same resolution as junk ones as well as component images of a better resolution. Not only one but also two references can be exploited. Different filters can be used after decorrelation. Enhancement of filtered images according to different quality criteria is provided. Examples of denoising for real-life multichannel images are given demonstrating high efficiency of the proposed approach.
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