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A Variational Approach for Denoising Hyperspectral Images Corrupted by Poisson Distributed Noise

机译:泊松分布式噪声损坏的超分析方法

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Poisson distributed noise, such as photon noise is an important noise source in multi- and hyperspectral images. We propose a variational based denoising approach, that accounts the vectorial structure of a spectral image cube, as well as the poisson distributed noise. For this aim, we extend an approach for monochromatic images, by a regularisation term, that is spectrally and spatially adaptive and preserves edges. In order to take the high computational complexity into account, we derive a Split Bregman optimisation for the proposed model. The results show the advantages of the proposed approach compared to a marginal approach on synthetic and real data.
机译:Poisson分布式噪声,例如光子噪声是多和超光谱图像中的重要噪声源。我们提出了一种基于变化的去噪方法,该方法是光谱图像立方体的矢量结构,以及泊松分布式噪声。为此目的,我们通过正则化术语向单色图像的方法扩展到单色图像,即光谱和空间上自适应和保留边缘。为了考虑到高计算复杂性,我们得到了拟议模型的拆分Bregman优化。结果表明,与合成和实际数据的边际方法相比,该方法的优点。

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