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Hyperspectral imagery super-resolution by sparse representation and spectral regularization

机译:稀疏表示和光谱正则化实现高光谱图像超分辨率

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摘要

For the instrument limitation and imperfect imaging optics, it is difficult to acquire high spatial resolution hyperspectral imagery. Low spatial resolution will result in a lot of mixed pixels and greatly degrade the detection and recognition performance, affect the related application in civil and military fields. As a powerful statistical image modeling technique, sparse representation can be utilized to analyze the hyperspectral image efficiently. Hyperspectral imagery is intrinsically sparse in spatial and spectral domains, and image super-resolution quality largely depends on whether the prior knowledge is utilized properly. In this article, we propose a novel hyperspectral imagery super-resolution method by utilizing the sparse representation and spectral mixing model. Based on the sparse representation model and hyperspectral image acquisition process model, small patches of hyperspectral observations from different wavelengths can be represented as weighted linear combinations of a small number of atoms in pre-trained dictionary. Then super-resolution is treated as a least squares problem with sparse constraints. To maintain the spectral consistency, we further introduce an adaptive regularization terms into the sparse representation framework by combining the linear spectrum mixing model. Extensive experiments validate that the proposed method achieves much better results.
机译:由于仪器的局限性和成像光学器件的不完善,很难获得高空间分辨率的高光谱图像。低空间分辨率会导致大量的像素混合,大大降低检测和识别性能,影响在民用和军事领域的相关应用。作为一种强大的统计图像建模技术,稀疏表示可用于有效分析高光谱图像。高光谱图像在空间和光谱域中本质上是稀疏的,并且图像超分辨率的质量在很大程度上取决于是否适当地利用了先验知识。在本文中,我们利用稀疏表示和光谱混合模型提出了一种新的高光谱图像超分辨率方法。基于稀疏表示模型和高光谱图像采集过程模型,可以将来自不同波长的高光谱观测的小块表示为预训练字典中少量原子的加权线性组合。然后将超分辨率视为具有稀疏约束的最小二乘问题。为了保持频谱一致性,我们通过结合线性频谱混合模型,将自适应正则项引入稀疏表示框架。大量的实验验证了所提出的方法取得了更好的结果。

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