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Hyperspectral Image Denoising Based on Spectral Dictionary Learning and Sparse Coding

机译:基于谱字典学习和稀疏编码的高光谱图像降噪

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Processing and applications of hyperspectral images (HSI) are limited by the noise component. This paper establishes an HSI denoising algorithm by applying dictionary learning and sparse coding theory, which is extended into the spectral domain. First, the HSI noise model under additive noise assumption was studied. Considering the spectral information of HSI data, a novel dictionary learning method based on an online method is proposed to train the spectral dictionary for denoising. With the spatial–contextual information in the noisy HSI exploited as a priori knowledge, the total variation regularizer is introduced to perform the sparse coding. Finally, sparse reconstruction is implemented to produce the denoised HSI. The performance of the proposed approach is better than the existing algorithms. The experiments illustrate that the denoising result obtained by the proposed algorithm is at least 1 dB better than that of the comparison algorithms. The intrinsic details of both spatial and spectral structures can be preserved after significant denoising.
机译:高光谱图像(HSI)的处理和应用受到噪声成分的限制。本文运用字典学习和稀疏编码理论建立了一种HSI去噪算法,并将其扩展到频谱域。首先,研究了加性噪声假设下的HSI噪声模型。考虑到HSI数据的频谱信息,提出了一种基于在线方法的字典学习方法来训练频谱字典去噪。利用嘈杂的HSI中的空间上下文信息作为先验知识,引入了总变化正则化器来执行稀疏编码。最后,执行稀疏重建以产生去噪的HSI。该方法的性能优于现有算法。实验表明,与比较算法相比,所提算法的去噪效果至少提高了1 dB。在进行大量降噪后,可以保留空间结构和光谱结构的固有细节。

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